SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION
Severe Weather in a Changing Climate 2nd Edition
Cindy Bruyère1, Bruce Buckley2, Andreas Prein1, Greg
Holland1, Mark Leplastrier2, David Henderson2,3, Peter Chan2,
James Done1, Andrew Dyer2
1 Capacity Center for Climate and Weather Extremes,
National Center for Atmospheric Research, USA
2 Insurance Australia Group
3 Cyclone Testing Station at James Cook University
September 2020
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION
FOREWORD
When initially released in November 2019, this report proposed that climate change is already well
underway and is considered by many to be the greatest risk currently facing humanity. Despite the
economic and social upheavals wrought by the current Coronavirus-19 pandemic, this remains the
case. Every year we are confronted globally with extreme weather events that become natural
disasters. Our communities in Australia are exposed to just about every possible hazard, from
earthquakes, severe thunderstorms and tropical cyclones, to bushfires and devastating floods.
We cannot prevent these events from happening, but we can do more to prepare communities and
make them more resilient. Reducing global greenhouse gas emissions will slow future changes in
weather extremes and reduce the rate at which sea levels rise.
Protecting communities also requires greater investment in resilience, adaptation, and mitigation
planning – from governments, businesses, community organisations and individuals – to reduce the
physical, economic and social recovery costs that follow a disaster.
This report provides an overview of the science behind severe weather phenomena as they affect
Australia.
In the ten months since we published the original report, there have been numerous examples of
catastrophic extreme weather events including Australia’s most destructive bushfires, major
hailstorms affecting Melbourne, Canberra and Sydney, and widespread extreme rainfall and flooding
down Australia’s eastern seaboard.
This edition of the report is an update of the original report released in November 2019. It reflects
extensive feedback from academic and government institutions across Australia, supplemented by
research that has emerged since the first report was prepared. Most of the changes relate to
Section 5, which deals with changes to various extremes under different warming scenarios. The
report also introduces a new section on Connected Extremes.
The main findings from the original report still hold, and the Executive Summary highlights the key
points to consider.
The report now provides a summary of the latest climate science as of July 2020, explaining how
climate change is impacting the severity and frequency of extreme weather events like tropical
cyclones, hailstorms and rainfall in Australia, and what is likely to happen in the future.
Climate change requires broad-scale collaboration and coordination across all sectors of the
community and the implementation of global initiatives without delay. Climate change is too big for
one organisation and even one nation to solve, and it is our hope this updated report will continue to
provide a foundation to drive even more conversation and collaboration so that the necessary
changes can happen.
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 1
CONTENTS
1. Executive Summary ....................................................................................................................... 2
2. Acknowledgements ........................................................................................................................ 7
3. Introduction .................................................................................................................................... 8
4. State of the Climate ....................................................................................................................... 9
4.1 Natural Climate Variability and Forced Climate Change ........................................................... 9
4.2 State of Climate Assessment .................................................................................................... 9
4.3 Extreme Events Under Climate Change ................................................................................. 13
5. Changes to Extremes for Different Warming Scenarios ............................................................... 15
5.1 Tropical Cyclones .................................................................................................................. 15
5.2 Extreme Precipitation and Flooding ........................................................................................ 37
5.3 Damaging Hail ........................................................................................................................ 49
5.4 East Coast Lows .................................................................................................................... 60
5.5 Bushfire .................................................................................................................................. 71
5.6 Oceans: Sea Level Rise, Temperature Anomalies and Extreme Sea Levels .......................... 85
5.7 Connected Extremes: Compound and Clustered Events ........................................................ 94
6. Conclusions ............................................................................................................................... 102
Glossary ........................................................................................................................................ 104
Bibliography ................................................................................................................................... 111
Contacts ........................................................................................................................................ 129
This report should be cited as: Bruyère, C., Buckley, B., Prein, A., Holland, G., Leplastrier, M.,
Henderson, D., Chan, P., Done, J., Dyer, A. (2020). Severe weather in a changing climate, 2nd Ed. (IAG).
DOI:10.5065/b64x-e729
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 2
1. EXECUTIVE SUMMARY
This report by the National Center for Atmospheric Research (NCAR) and IAG examines current and
future climate change impacts on the Australian climate and the weather extremes that produce
significant property, personal and economic damage and hardship. It is an updated edition of the
November 2019 report of the same name. The updates reflect extensive feedback from academic and
government institutions across Australia, supplemented by research that has emerged since the first
report was prepared. This report reflects the understanding of climate science as of July 2020.
The level of scientific knowledge and tools available now enable confident assessments on the
impacts of climate change at global and national scales and over longer time frames, with an
objective assessment of associated levels of confidence.
But many government, business and personal decisions require information on climate and weather
extremes at more local scales, such as for states, cities and towns.
To meet this need, this report incorporates a review of the extensive related literature, summarised in
Table ES1, together with expert judgement on potential local impacts. In some instances, the report
includes tentative trends in severe weather impacts derived from insurance industry claims. The
expert assessments on local impacts are indicative rather than absolute. They are intended to provide
a basis for current planning, targeted research to fill knowledge gaps, and further discussion, leading
to more refined and accurate future assessments.
Key assessments are:
1. Since the pre-industrial period (1850-1900), the average global mean temperature has already
risen by more than 1°C due to increasing greenhouse gas emissions and deforestation. No
agreement has been reached as to when global warming might reach the 1.5/2°C Paris
agreement targets. There is consensus that it is extremely unlikely to remain below these
targets. Estimates indicate that global warming could reach 1.5°C during the 2020 decade and
2°C by 2035. This small change in the mean will substantially increase the frequency and
intensity of weather and climate extremes. The impacts will range from more warm and hot
days, fewer cool and cold nights; to more droughts and extreme weather events leading to
flooding.
2. The frequency of tropical cyclones (TCs) in the Australian region has declined slightly in
recent decades, and this slow trend is projected to continue globally and for the Australian
region. However, over the past 30 years, the proportion of the most intense TCs has
increased at the expense of weaker systems, and this change is expected to continue. Over
the last two decades, the number of intense TCs making landfall on the Queensland east
coast has increased substantially. The frequency of TCs making landfall throughout the
western South Pacific region has also increased.
There is global evidence of a poleward shift in the latitudes where TCs reach their peak
intensities. New research confirmed that this shift is also evident for TCs in the Australian
region. This trend is expected to continue, although in an uneven manner. Warming oceans
off south-east Queensland and New South Wales will enable these cyclones to retain higher
intensities further south and to penetrate further inland. TC risk is therefore predicted to
increase most rapidly in the south-east Queensland / north-east New South Wales regions.
There is also a potential for increased risks in the coastal districts south of Shark Bay in
Western Australia.
1. EXECUTIVE SUMMARY
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 3
Planning for inland penetration of TCs needs to allow for substantial increases in rainfall rate,
storm total rainfall and total area affected, increasing the risk of coincident major floods in
multiple river systems. Wind speeds are also likely to decay more slowly inland, so increased
wind-driven rainfall ingress is to be expected. More intense storms, combined with rising sea
levels, point to increasing storm surge and coastal erosion impacts.
3. Intense short duration rainfall is expected to increase almost everywhere in Australia, even in
regions with ongoing drying trends, resulting in more frequent and severe flash flooding in
urban areas and small, fast response river catchments. Emerging science is confirming
intense rainfall rates are rising at faster rates than the Clausius-Clapeyron rainfall-temperature
relationship would imply. Rainfall intensities across southern Australia have increased up to
14% per degree of increased temperature, and 21% for the tropical regions. Storm rainfall
totals from both east coast lows and tropical systems are expected to increase significantly,
leading to increased flood risk in the larger river catchments, particularly along the east coast.
More work is required to understand and confidently assess these changes.
4. New research has supported earlier assessments that there have been increases in the
frequency of large to giant hail events across south-eastern Queensland and north-eastern
and eastern New South Wales in the most recent decade. Areas at greatest risk of large (2.0-
4.9cm in diameter) and giant (>=5.0cm in diameter) hail should progressively shift southwards.
The most substantial increases in risk are likely to be in the region inland from the Hunter
River, south through the central and southern New South Wales highlands and central to
eastern Victoria. Slower increases are assessed to affect the south-west of Western Australia.
At the same time, in a warmer world severe hail risk is expected to decrease in northern and
central Queensland, extending to south-eastern regions later.
5. Multi-day impacts of east coast lows (ECLs) on the south-eastern seaboard of Australia are
expected to increase because of wind-driven rainfall ingress, and flash and riverine flooding.
This effect will be compounded by rising impacts from storm surge, waves, and coastal
erosion. Tentative evidence points to an increase in impacts from the warm cored and hybrid
types of ECLs, while there will be a decrease in the less damaging types of lows, notably
those occurring in winter and spring. There is limited understanding of the detailed structures
and frequencies of rare extreme ECLs that drive most of the widespread damaging impacts
over large parts of eastern and south-eastern Australia.
6. The simplified meteorological component of bushfire risk can be measured by the McArthur
Forest Fire Danger Index (FFDI). The 99th percentile or higher FFDI produce the greatest loss
of life and damage to property. The upward trend in this 99th percentile FFDI is likely to
increase in almost all locations nationally, leading to longer fire seasons and more frequent
extreme events, many of which could be uncontrollable at the time of peak intensity. The rate
of increase varies by location and will depend on weather system changes and site-specific
factors, including fuel types and loads. New research investigating the recent Black Summer
2019-2020 fire season has shown that the current generation of climate models under-predicts
events of this severity. Opportunities for fuel management activities are also likely to be
reduced due to the earlier onset of the bushfire season. Fire-prone regions throughout the
world have historically shared resources. Longer fire seasons will result in coincidences of
bushfires between hemispheres, increasing the strain on limited global resources.
1. EXECUTIVE SUMMARY
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 4
7. Sea level rise is expected to accelerate around the Australian coastline but at varying rates.
Notably, past assessments of sea level rise are lower than current observations indicate. Sea
level rise will contribute substantially to escalating impacts from storm surge, coastal erosion
and the effects on coastal natural systems, buildings and infrastructure. The greenhouse
gases that are already present in the atmosphere will cause sea level rises to continue for the
next couple of centuries, even if there are significant global emission reductions through the
coming decades. Ice sheet research is highlighting many unmodelled physical processes that
have the potential for much greater sea level rises in the future that should be considered in
understanding possible impacts on coastal communities.
8. Connected extremes – extreme weather events that are connected in time and space –
exacerbate the impacts that would have occurred from the separate events. Connected
extremes can, therefore, lead to multiple extreme impacts upon Australian communities.
These impacts can either occur in close succession or over extended periods of time, making
response and recovery activities more challenging. Emerging research is showing the damage
from connected extreme weather events is exacerbated by climate change.
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 5
Table ES1 Summary of the past and future impacts of climate change on metrics of key extreme events in Australia under three future global temperature scenarios
(changes from pre-industrial period 1850-1900). Present climate represents the observed state for the last two decades. This is an expert assessment and includes an
estimate of the confidence in the changes from the benchmark values.
Metric Benchmark Climate Change Impact (confidence level)
Present Climate +1.5°C +2°C 3°C+
Tro
pic
al C
yclo
ne
s
Peak wind speeds
Va
ria
ble
be
twe
en
19
73
-20
07
~5% increase
(High)
<10% increase
(Med-High)
10%-20% increase
(Med-High)
5-10% higher for each
1°C
(Med-High)
Latitude of lifetime
maximum intensity
19
89 Poleward shift 1-6km/year
(High)
Further poleward shift
(Medium)
Further poleward shift
(Medium)
Possible further poleward
shift
(Low)
Tropical cyclone rapid
intensification
19
88
-19
90 Slight increase
(Medium/High)
Moderate increase
(Medium)
Moderate/high increase
(Medium)
High increase
(Medium/Low)
Proportion of Australian
CAT 4 and 5
19
75
~100%
between 1975-2010
(High)
Small increase
from 2010-2015
(Medium)
Further small increase
from 2010-2015
(Low)
Minimal further increase
(Low)
Intense precipitation (>
600mm) within 500km of
TC centre 19
60s ~+60%
(Medium)
~10% further increase
(Medium)
Further increase
(Medium)
~20% further increase
(Medium)
Frequency
19
60s Small decrease
(Medium)
~15% decrease
(Medium)
Further decrease
(Medium)
~30% decrease for +3°C
(Medium)
Area of gale force winds
19
73
-20
07
No info ~50%
(Low)
~100%
(Low)
Further increase
(Low)
Storm surge
frequency
Sin
ce 1
900
Increase
(High)
Further increase
(High)
Further increase
(Very High)
Potential substantial
increase
(Very High)
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 6
Metric Benchmark Climate Change Impact (confidence level)
Present Climate +1.5°C +2°C 3°C+
Se
a
Lev
el
Ris
e
Sea level rise
18
50
-19
00
~22cm - close to global
average
(Very High)
~30cm*
(High)
~40cm*
(High)
~80cm but ongoing rises*
(Medium)
Ea
st
Co
as
t
Lo
ws
Frequency of damaging
ECLs
Sin
ce 1
860
Increased damaging ECL,
decrease in other ECL
includes large natural
variability (Medium)
Increased damaging ECL,
decrease in other ECL
includes large natural
variability (Medium)
Increasing frequency of
intense ECL impacts
(Low)
Increasing frequency of
intense ECL impacts
(Low)
Ex
tre
me R
ain
fall
Annual maximum
1-hour rainfall intensity
19
86
-20
05
>14% increase; north of
23oS >21% increase.
Regionally variable. Further
10% or more increase
(Med-High)
Regionally variable. Further
15% or more increase
(Medium)
Regionally variable. Further
40% or more increase
for +4°C
(Medium)
Annual maximum
1-day rainfall intensity
19
86
-20
05
Regionally variable
generally slightly upward
Regionally variable ~10%
(Med-High)
Regionally variable
13-15%
(Med-High)
Potentially 40% increase
for +4°C
(Medium)
20-year return level of 1-
day rainfall
19
86
-20
05
Variable, generally slightly
upward
(Med-High)
Variable, generally slightly
upward
(Med-High)
Between 15-20% dependent
on the region
(Med-High)
Between 10-60% dependent
on the region
(Medium)
Larg
e
Ha
il
Frequency of hail >=2 cm
diameter
~2
00
0 Marked increasing trend in
east & south-east Australia
(Med-High)
Increasing trend in south-
east Australia, decrease
central, north Queensland
(Med)
Increasing trend in south-
east Australia, decrease
Queensland
(Med)
Potential increase in New
South Wales & southern
regions, decreases
elsewhere (Low)
Bu
sh
fire
McArthur Forest Fire
Danger Index
(FFDI)
19
73
-20
10 Increasing in almost all
Australian regions
especially in the south-east
(High)
15-65% increase in number
of extreme fire danger days
(FFDI>50) for +1°C
(Medium)
Further increases typically
>10% (Medium)
Increases >30% in southern
and eastern Australia (High)
Further increases in other
regions (Medium)
100-300% increase in
number of extreme fire
danger days (FFDI>50) for
+3°C (Medium)
* Estimates reflect Intergovernmental Panel on Climate Change Fifth Assessment Report findings which could quite possibly be low-end estimates and therefore underestimate the impact.
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 7
2. ACKNOWLEDGEMENTS
The revision of this report has benefitted greatly from feedback from many scientists across Australia
and in the USA. Special thanks go to Hamish Clarke (University of Wollongong); Andrew Dowdy,
Joshua Soderholm, Andrew Brown and Alain Protat (Bureau of Meteorology); Ian Macadam on behalf
of many scientists within UNSW and CLEX1; Hamish Ramsay (CSIRO); Robert E Kopp (Rutgers
University); and Janice Coen (NCAR) who provided extensive feedback and references and peer
reviewed sections of this report, important for ensuring the completeness of this update.
Feedback on various parts of the report has also been gratefully received from Acacia Pepler and
Scott Power (Bureau of Meteorology); Kathleen McInnes, Michael Grose, Kevin Hennessy, Geoff
Gooley and David Karoly (CSIRO); Owen Price (University of Wollongong); Todd Lane, Andrew King
and Kevin Walsh (University of Melbourne); Andy Pitman, Jason Evans, Lisa Alexander, Nina Ridder
and others at UNSW and CLEX; Robert Warren, Christian Jakob and Michael Reeder (Monash
University); and Merv Lynch and Diandong Ren (Curtin University).
In addition to direct feedback on various aspects of the report, numerous recent scientific papers were
provided. This allowed this version of the report to reflect the latest thinking on the current and future
changes in severe weather phenomena as they affect Australia.
Thanks also go to Glenn Stone (IAG) who prepared some figures used in this report and Naomi
Graham and Shane Grimes (IAG) who proofread the report and made useful suggestions on its
structure and content.
This report is also intended to complement the Climate Measurements Standards Initiative (CMSI)
report Scientific guidance for climate-related physical risk to buildings and infrastructure (2020).
The material covered is also based upon work partially supported by the National Center for
Atmospheric Research, which is a major facility sponsored by the National Science Foundation under
Cooperative Agreement No. 1852977.
1 The Centre of Excellence for Climate Extremes (CLEX) is an international research consortium of five Australian universities and a network of outstanding
national and international partner organizations supported by the Australian Research Council
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 8
3. INTRODUCTION
Climate change is occurring, so it is critical that we achieve a common understanding of the
increasing risk of the impacts of severe weather on the expanding, built environment across Australia.
While global changes are noted, it is the regional and local interpretations that are necessary for
informed discussions on the scale, frequency and potential severity of rare weather and climate
events so that response, mitigation and adaptation strategies can be focused on reducing these
impacts.
This report summarises the current state of knowledge on climate change impacts, severe weather
and climate extremes that are relevant to Australian property risk. It is based on current knowledge
documented in peer-reviewed literature and highlights the significant advances that have been made
since the Fifth Assessment Report (AR5) of the United Nations Intergovernmental Panel on Climate
Change (IPCC 2013).
This report includes evidence from:
• observed changes to the historical climate (typically from pre-industrial or the mid-19th-century
levels, although for damaging natural perils the reference period tends to be late 20th century
due to the lack of reliable earlier data);
• tentative trends from Australian insurance industry claims for a range of severe weather
events spanning the most recent few decades;
• modelling experiments of past, present and future climate change; and
• expert assessments based on the fundamental understanding of the physics associated with
the phenomena.
Where possible, changes that are broadly in line with the 1.5°C and 2°C warming targets from the Paris Agreement are addressed explicitly – acknowledging that the current level of global action makes it extremely unlikely that the 1.5°C target, or the 2°C target, will be achieved. Potential changes for scenarios that exceed these goals (>+2°C) are also discussed.
Section 4 of this report (State of the Climate) provides a brief introduction to the current state of the
climate system. It includes general definitions and concepts that are important for understanding the
report.
Section 5 (Changes to Extremes for Different Scenarios) contains the primary information concerning
changes for property-risk-relevant extreme events in Australia and is the section of the report with the
most updates. Because changes to specific weather extremes (e.g. TCs) are likely to be distributed
unevenly across Australia, regional interpretations are included to help improve understanding of
potential community impacts.
As the regional interpretation is an input for specific scenarios for insurance loss modelling, the >+2°C
climate change scenario is nominally chosen to represent +3°C. Expert judgement has been used in
cases where there are conflicting research findings or a lack of data for Australia, particularly
concerning regional level interpretations.
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 9
4. STATE OF THE CLIMATE
4.1 Natural Climate Variability and Forced Climate Change
Natural climate variability is an intrinsic characteristic of the climate system and is related to internal
and external natural processes across the full range of spatial and temporal time scales.
The internal processes are caused by heat exchanges between the ocean and the atmosphere (e.g.
El Niño Southern Oscillation, Indian Ocean Dipole, Interdecadal Pacific Oscillation) or by chaotic
behaviours that are inherent in the climate system.
Natural external processes that produce variabilities include changes in the earth’s orbit around the
sun, changes in solar activity, or volcanic activity.
Anthropogenically forced climate change is caused by human effects on the climate system, including
greenhouse gas emissions, emissions of aerosols and land use changes. These changes would not
have occurred without human activities and are superimposed on top of natural climate variability.
The warming that has been recorded since the 1950s cannot be explained by natural processes
alone, and human activities are extremely likely2 to have been the dominant cause of the warming
observed since the mid-20th century (IPCC 2013).
4.2 State of Climate Assessment
Since the pre-industrial period (1850-1900), the average global mean temperature (applying Lowess
smoothing over 5-year periods to the end of 2019) has risen by 1.19°C (Figure SC1, bottom) due to
increasing greenhouse gas emissions and deforestation (NOAA 2017). The largest part of the
warming has occurred since 1970. The effect of internal climate variability (see Section 4.1) is also
evident in Figure SC1, especially in years with strong El Niño events (e.g. 1998 and 2016) which are
associated with above-average warm temperatures.
Global warming reached a peak in 2016 with temperatures ~1.23°C warmer than the average
temperatures in the pre-industrial area, although 2019 was only marginally below that record value
(0.04°C lower). The last five years (2015-2019) have been the warmest on record (NOAA 2019).
Mean maximum temperatures in almost all land areas, including Australia, are expected to increase
at higher rates than the global average (IPCC 2013, Seneviratne et al. 2016, Donat et al. 2017). High-
latitude regions will experience much greater temperature increases. Australian land temperatures
have increased by over 1.0°C since 1910, at a slightly higher rate than the global average (Bureau of
Meteorology and CSIRO 2018), and 2019 was the warmest on record at 1.52°C above the average
for the period 1961-1990 (NOAA 2019).
2 IPCC definition indicating a 95-100% probability
4. STATE OF THE CLIMATE
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 10
There is no agreement as to when global warming might reach the Paris Agreement targets of 1.5/2°C
above pre-industrial levels. However, there is consensus that it is extremely unlikely3 to remain below
these targets. Raftery et al. (2017) stated that there is a 90% likelihood that temperatures will rise
between 2°C and 4.9°C by 2100. They estimated that there is a 5% chance that global temperatures
will remain below a 2°C increase, and only a 1% chance that it will remain below a 1.5°C increase.
King and Henley (2018) estimated that under current emissions, global warming would reach 1.5°C
3 IPCC definition indicating a 0-5% probability
Figure SC1 Global observed air temperatures showing trends in the seasonal
cycle from 1880 to May 2020 relative to a 1980-2015 baseline (top). Trends in
monthly mean global air temperature relative to 1850-1900 with the two most
recent extreme El Niño years (1998 and 2016) highlighted (bottom). Source:
NOAA GISS/GISTEMPv4.
4. STATE OF THE CLIMATE
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 11
around 2024 and 2°C around 2035. In a special report4, IPCC stated that there is a very high risk that
the global average temperature will exceed the lowest threshold agreed in the Paris Agreement, and
that it will overshoot the 2.0°C target by the 2040s (IPCC 2018).
Limiting global temperature increases to the Paris Agreement target of 1.5°C (above pre-industrial
levels) can only be achieved under ideal conditions with all the following actions achieved as a matter
of priority:
• rapid and large-scale global political commitments to decarbonisation;
• strongly accelerated growth in low carbon technologies; and
• the development of efficient and widespread carbon capture and storage technology by mid-century (Sanderson et al. 2017).
Figure SC2 shows the rapid decrease in carbon emissions that must occur in the very near future to limit
4 In a note released in January 2018, the IPCC restates that draft texts of the report can change substantially and do not necessarily represent the IPCC’s final
assessment of the state of knowledge.
In the Paris Agreement of December 2015, signatory nations in the international community
agreed on:
“Holding the increase in the global average temperature to well below 2℃ above pre-
industrial levels and to pursue efforts to limit the temperature increase to 1.5℃ above
pre-industrial levels, recognizing that this would significantly reduce the risks and
impacts of climate change.”
Figure SC2 Observed and projected changes in global average temperature (right) depend on observed and
projected emissions of carbon dioxide from fossil fuel combustion (left) and emissions of carbon dioxide and other
heat-trapping gases from other human activities, including land use and land-use change under pathways RCP
8.5, 4.5 and 2.6. Observed emissions and temperatures are indicated in black. Source: Hayhoe et al. (2018).
4. STATE OF THE CLIMATE
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 12
global warming to 1.5°C or 2°C. There is little evidence that major emitters are willing to adopt measures that will achieve this level of decrease. It is becoming apparent to the authors that the observed global emissions trajectories to date mean low emissions scenarios should move away from the RCP2.6 scenario (refer to Glossary) to something more plausible.
A 2°C global warming target is
therefore unlikely to be achieved
and will significantly increase the
risk for catastrophic events, even
compared to 1.5°C warming. For
example, King et al. (2017)
investigated the difference
between a 1.5°C and 2°C global
warming on Australian extremes.
Their study showed that events
such as the record warm
summer of 2012-2013 and associated bleaching of the Great Barrier Reef in 2016 would be 87% more
likely in a 2°C warmer world compared to 60% more likely for 1.5°C of warming (Figure SC3). Impacts
on rainfall extremes were less clear in their study. The study should be consulted to put the changes
in likelihood in context with their uncertainties. Note, King et al. (2017) is a single example pointing to
the likely impact on recent events under different warming scenarios. Other studies have reported
different absolute values in the expected changes due to a warming environment, but all point to a
substantial increase in the likelihood that past extreme events will become more likely under these
conditions.
Warming above 2°C rapidly increases the risk for global-scale disruptive weather events and
unforeseeable threshold changes in the climate system. These so-called tipping-point events are
associated with positive feedbacks that cause accelerated and perhaps irreversible changes,
regardless of human activities.
One example is the collapse of the Greenland ice sheet. In recent years, this ice sheet has
experienced rapid increases in summer melt, reaching an all-time record in June 2019. If the melting
continues to a full melt of the ice sheet, the resulting global average sea level rise would be ~7.4m.
Paleoclimatic records show that Greenland was deglaciated for extended periods during the
Pleistocene epoch (2.6 million years ago to 11,700 years ago; Schaefer et al. 2016). Unfortunately,
our understanding of important processes that contribute to the melting does not (so far) allow an
estimate of threshold temperatures that would result in a collapse of the ice sheet (van den Broeke et
al. 2017). Sea level rise and the uncertainty in some of these processes are discussed further in
Section 5.6.
Figure SC3 Changes in the likelihood of Australian extreme events in
the current, 1.5°C and 2°C warmer world compared to a natural (pre-
industrial) world. Modified from King et al. (2017).
4. STATE OF THE CLIMATE
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 13
4.3 Extreme Events Under Climate Change
The frequency and intensity of extreme weather and climate events will change at a much higher
amplitude than more common weather events. This is because small changes in the mean or spread
of current climatic observations typically lead to dramatic changes in the extremes.
An example of this is shown in Figure SC4 for Northern Hemisphere maximum summer temperature
anomalies within a baseline period (1951-1980) and a recent climate period (2004-2014).
Extreme heat events, defined as a temperature anomaly of three standard deviations above the
mean, occurred 0.4% of the time in the baseline period (which already included a global warming
component). In the recent period, the occurrence increased by a factor of 20 to 8.1%. Many climate
extremes undergo similar changes (see Section 5).
Not all climate extremes are equally well recorded through historical observations, and not all are well
simulated in state-of-the-art climate models. Considering the current peer-reviewed literature and our
expert judgement, Figure SC5 shows an assessment of our current ability to detect and understand
the impact of climate change on extreme weather events (adapted from Vose et al. 2014).
As a general rule, the larger the extent or time period of the extreme, the better it is recorded. For
example, especially small-scale and short-period extremes related to severe convection (e.g.
tornadoes and hail) are not well-observed. Similarly, our understanding of the effects of climate
change on small-scale extremes is often more limited than it is for larger-scale extremes.
Figure SC4 Climate change has shifted the likelihood of extreme heat for the Northern Hemisphere as
shown by the maximum summer temperature anomalies to climate normal average (1951-1980).
Modified from WXshift: http://wxshift.com/climate-change/climate-indicators/extreme-heat. (March 2018).
4. STATE OF THE CLIMATE
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 14
Figure SC5 Our expert assessment of the state of knowledge regarding our ability to
detect and understand the impact of climate change on extreme weather events. The
horizontal axis shows how skilful we are in detecting the impact of climate change, while
the vertical axis refers to our understanding of the physical processes that drive changes.
Adapted from Vose et al. (2014).
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 15
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
5.1 Tropical Cyclones
5.1.1 Background
Section 5.1 focuses on the impact of climate change on the damage potential of TCs and of hybrid
cyclones with non-classical structures (Quinting et al. 2019, Cavicchia et al. 2020).
The world has entered a new era of global TC impacts in which economic and insured losses are
doubling every 15 years (Kunreuther and Michel-Kerjan 2009, Smith and Katz 2013, Pielke Jr et al.
2008). Bhatia et al. (2019) modelled economic losses of Atlantic Ocean hurricane landfalls and looked
at the potential for a US trillion-dollar season in a warming climate. He found that if the CMIP5 model
predictions are realised, the 100-year event damage cost increases by US$160 billion beyond that for
a static climate regime.
Changes to exposure and vulnerability dominate the trend (Weinkle et al. 2012, Höppe and Pielke
2006, Stewart et al. 2003) but changes to the TCs themselves (Walsh et al. 2016a, Knutson et al.
2020), together with sea level rise (Solomon et al. 2007) have compounding effects. Indeed, Estrada
et al. (2015) quantified the climate change contribution to rising USA hurricane costs at US$136
Section Summary
Tropical cyclones (TCs) are characterised by large interannual variability. However, some trends
- supported by observations, theory and modelling simulation – are emerging:
• TC frequency has declined slightly, but the proportion of intense TCs has increased
markedly. For example, taking a Southern Hemisphere perspective, the seven most
intense TCs in the satellite era (1979 onwards) have occurred since 2004, and the five
most intense have occurred since 2015.
• The latitude at which cyclones reach their maximum lifetime intensity has shifted
poleward, with potentially serious consequences for south-eastern Queensland and north-
eastern New South Wales.
• TC rainfall is already increasing, especially in terms of inland penetration. For example,
cyclone sensitivity studies have shown a near-doubling in the area experiencing >600mm
during a cyclone passage over south-eastern Queensland and north-eastern New South
Wales has occurred in the last decade. Further increases are expected in a warmer world.
• TC translational speed appears to be slowing at higher latitudes. These slower speeds,
combined with increasing intensity and rainfall, lead to a potential for substantial
increases in cyclone impacts from wind, rain and water ingress into buildings.
• Sea levels are rising at an accelerating pace. Combined with increasing river runoff and
more intense cyclones, this points towards substantial increases in storm surge impacts
and coastal erosion.
Socio-economic factors are placing more people and property at risk. The effect of climate
change on the impact of TCs will, therefore, act as a risk multiplier.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 16
million per year.
The following sections summarise our understanding of global historical and future TC changes and
evaluate local changes and predictions as they apply to Australia.
5.1.2 Global Changes
Given that environmental factors influence all stages of the TC life cycle, the entire life cycle is
expected to be affected by climate change. Starting with TC formation, there is no theory linking TC
genesis to the mean state of the climate (Sharmila and Walsh 2017). A large empirical modelling
effort has led to numerous genesis potential indices, but these have substantial issues. For example,
Bruyère et al. (2012) highlighted the extreme sensitivity of these indices to the region selected. Such
indices also rarely account for non-stationarity in the TC-climate relationship, such as the increasing
threshold onset temperature for formation with warming (Johnson and Xie 2010), thereby limiting their
application to climate change studies.
Changes in Intensity
In a very recently completed analysis, Kossin et al. (2020) found there was an 18% per decade
change in the major TC intensity (Saffir Simpson Categories 3-5) exceedance probability for the South
Indian Ocean basin and 8% per decade for the South-West Pacific Ocean basin. They based their
findings on observed changes in intensities of TCs using the Advanced Dvorak Technique to analyse
a homogeneous 39-year long global satellite record from 1979 to 2017. This is the first time such an
analysis has been undertaken with statistically significant changes observed at the 95% level or better
for most ocean basins.
An idealised modelling study by Lavender et al. (2018) suggested caution in extrapolating empirical
associations with temperature from past climate. They showed that relationships between sea surface
temperature (SST) and TC intensity, size, rainfall and surge might be far from linear.
The theoretical basis for TC intensity is far more established. TC potential intensity is directly related
to SST (Emanuel 1991, Holland 1997). Theoretical, observational and modelling studies (Strazzo et
al. 2015) have all shown a 5% increase in TC maximum wind speed per degree Celsius rise in SST.
Other conditions such as vertical wind shear and oceanic mixing by the cyclone act as modifiers to
these theoretical findings for specific TCs. But the 5% increase per degree Celsius rule still applies on
average.
Geographical and Structural Changes
In addition to these advances in theoretical understanding and empirical modelling, numerical models
apply physics to our understanding of TCs and climate. Global climate models have demonstrated
some success in capturing the geographic distribution of TCs, their frequencies, and inter-basin
differences (e.g., Strachan et al. 2013). Still, there are substantial variations between models
(Shaevitz et al. 2014, Camargo et al. 2020). Therefore, when looking at potential future climate
changes, it is important to use climate models that validate well against the available observational
record.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 17
Recent research highlights the need for climate models to have sufficient resolution and model
physics to resolve pre-cyclone tropical disturbances, also referred to as TC seeds (Sugi et al. 2020,
Bhatia et al. 2019). Camargo et al. (2020) found that climate model physics, dynamical core, and
resolution all affect the TC climates produced by climate models. They (Camargo et al. 2020)
completed a detailed investigation of thirty climate models used for a variety of climate change
studies, including TCs and their ability to replicate the observed global TC climatologies. They
evaluated 14 CMIP5 models with relatively low resolution: six models developed by the US CLIVAR
Hurricane Working Group with resolutions between 0.25o and 1.25o, and ten models from the NOAA
Model Diagnostics Task Force. The studies revealed substantial quantitative variations between
models. It was apparent that many of the models struggle to replicate the observed climatology, and
other environmental and TC specific parameters. Hence, any future investigation of TC climate must
take care to ensure the models validate well in the regions of interest if their predictions of TC trends
are to be believed. This sentiment is also apparent in the multi-model CMIP5 assessments of TCs in
the Southern Hemisphere by Ramsay et al. (2018).
Model resolution is important when trying to resolve the details of TC behaviour in a changing climate.
An illustrative high-resolution study by Bacmeister et al. (2016) used a suite of 28km resolution model
runs using bias-corrected SSTs for RCP scenarios 4.5 and 8.5. For both scenarios, they found an
overall reduction in the frequency of global TC activity, with less reduction for RCP4.5 compared to
RCP8.5. In contrast to this, they found a dramatic increase in the frequency of very intense TCs.
Extreme storm-related rainfall was also found to increase in all ocean basins.
Recent global models use 10-25km grid spacing, at which many key damaging TC parameters start
to become resolved (e.g., Shaevitz et al. 2014, Bacmeister et al. 2016, Knutson et al. 2020), including
TC clustering (sequential TC impacts in a given season) and TC rainfall (Villarini et al. 2014).
The current generation of climate models still lacks the resolution necessary to capture future trends
in very small, aka midget (Arakawa 1952, Walsh et al. 2007) TCs (e.g., TC Tracy, TC Larry) that
frequent the Australian region. Gentry and Lackmann (2010) found a grid size in the order of 1km is
needed to capture the peak wind speeds of the most intense TCs.
Separating the climate influence on TCs into thermodynamic and dynamic contributions offers a
useful framework for understanding future changes. Global climate model projections agree on a
future climate that is warmer and more humid but disagree on changes to environmental winds and
other important atmospheric parameters (Camargo et al. 2020). This disagreement worsens for
changes on regional scales. Many climate models have significant biases in the Equatorial Pacific
Ocean and poorly replicate the South Pacific Convergence Zone (SPCZ), a zone that extends south-
east from Papua New Guinea and plays a key role in the TC climate across the South-West Pacific
Ocean, including the Coral Sea region.
Confidence in thermodynamically-driven changes to TCs, such as potential intensity and rainfall, is
therefore far higher than for circulation-driven changes such as wind shear and steering flow. Newer
generation CMIP6 models are showing improved skill in replicating the SST structure of the SPCZ
(Grose et al. 2020). There is hope that downscaling the best performing of these models will lead to
greater confidence in the future TC climate of this region.
There is consensus on a thermodynamically-driven future increase in global and regional maximum
wind speeds and on the incidence of high-intensity TCs (Knutson et al. 2020), with a 5% median
projected increase in the lifetime maximum surface wind speeds by 2100. There is medium to high
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 18
confidence of an increase in the global proportion of major TCs (Saffir Simpson Category 4-5).
Knutson et al. (2020) estimate this increase to be in the order of +13% for a 2°C warming (relative to
1986-2005). Initial analysis of CMIP6 models indicates that a warming of 2°C may be reached as
early as 2035 (Grose et al. 2020).
Holland and Bruyère (2014) found a relationship between anthropogenic warming and an
increasing/decreasing proportion of the strongest/weakest TCs at global and ocean basin scales. Lee
et al. (2016) provided evidence that changes in the incidence of rapid intensification could be driving
these proportional shifts. Bathia (2019) found a detectable increase of Atlantic intensification rates
with a positive contribution from anthropogenic forcing. A lack of reliable validation data hampers
trends in other ocean basins – notably, the south-west of the South Indian Ocean where
geostationary satellite coverage spans a short period.
Intensification Rates, Translational Speed and Rainfall Rates
In addition to these changes to frequency and intensity, other important changes to TC activity are
anticipated. Emanuel (2017) suggested a future increase in the incidence of rapidly intensifying TCs
just offshore that would present a challenge for future forecast and emergency preparation. Current
climate models are only starting to be able to be run at the resolution necessary to capture this effect.
There are emerging studies showing an increase in intensification rates in future climates. Bhatia et
al. (2018) demonstrated this using GFDL’s HiFLOR model. Lee et al. (2020) found increasing rapid
intensification events under future climate scenarios, using the synthetic tracks produced by their
model. There is also tentative evidence of a slowdown of the median translational speed, as
illustrated by Category 5 Hurricane Dorian in the North Atlantic Ocean (2019) and Severe TC
Veronica in the Pilbara region of Western Australia in March 2019.
There is consensus on a 5-20% thermodynamically-driven increase in large scale TC rain rates within
100km of cyclone centres by the end of this century (Christensen et al. 2013, Walsh et al. 2016a,
Villarini et al. 2014, Knutson et al. 2020). As moisture content increases with warming, so does
moisture convergence for a given mass convergence into the cyclone. The expected increase in wind
speeds may lead to further increases in moisture convergence beyond the Clausius-Clapeyron
scaling (Knutson et al. 2010).
Lifetime Maximum Intensity
The global expansion of the tropics is associated with lifetime maximum wind speeds now occurring
at higher latitudes than in the past (Kossin et al. 2014, IAG internal research 2020 refer Table TC1).
They found that the increasing latitude of lifetime maximum intensity (LLMI) over the past 30 years
applies to both the South Indian and South Pacific basins, primarily associated with a southward shift
of the subtropical jet and associated reduction in wind shear. If this continues, these higher latitude
locations will experience increased TC impacts. Rising sea levels will bring more damage from storm
surge events with a declining recurrence interval of the more extreme events, all other factors being
equal. Finally, there is a lack of climate theory for TC size, but high-resolution simulations by Sun et
al. (2017) indicate a future expansion of the mean area subjected to gale force winds.
TCs may be living longer, with an associated increased likelihood of reaching their maximum potential
intensities, as predicted by the thermodynamic theory.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 19
Future Climate Projections
A recent consensus review of TCs in a changing climate arrived at similar findings to the above.
Specifically, Knutson et al. (2020) looked at a wide range of modelling studies. This study included
assessments from 11 researchers who are active in this area. Their conclusions provide a fair
indication of the current state of the science and are well summarised by the abstract of their paper,
the highlights of which are listed below.
“Observations, theory, and models, with increasing robustness, indicate rising global TC risk for some
metrics that are projected to impact multiple regions. A 2°C anthropogenic global warming is
projected to impact TC activity as follows.
1) The most confident TC-related projection is that sea level rise accompanying the warming will
lead to higher storm inundation levels, assuming all other factors are unchanged.
2) For TC precipitation rates, there is at least medium-to-high confidence in an increase globally,
with a median projected increase of 14%, or close to the rate of tropical water vapor increase
with warming (~7% per °C), at constant relative humidity.
3) For TC intensity, 10 of 11 authors had at least medium-to-high confidence that the global
average will increase. The median projected increase in lifetime maximum surface wind speeds
is about 5% (range: 1%–10%) in available higher-resolution studies.
4) For the global proportion (as opposed to frequency) of TCs that reach very intense (category 4–
5) levels, there is at least medium-to-high confidence in an increase, with a median projected
change of +13%.
Author opinion was more mixed and confidence levels lower for the following projections:
5) a further poleward expansion of the latitude of maximum TC intensity in the western North
Pacific;
6) a decrease of global TC frequency, as projected in most studies;
7) an increase in global very intense TC frequency (category 4–5), seen most prominently in
higher-resolution models; and
8) a slowdown in TC translation speed.”
Figure TC1 (from Knutson et al. 2020) shows the impact for a 2°C warming, relative to a 1986-2005
baseline. This consensus suggests that there will be higher TC intensities and TC rain rates but fewer
TCs globally.
There are significant variations between ocean basins and potentially even higher differences in
subregions within individual basins, the basins around Australia being prime examples. For example,
the studies of Camargo et al. (2020) and Ramsay et al. (2018) showed the South-West Pacific basin
is one where the CMIP5 models have difficulty replicating the observed climatology; hence future
climate projections must be treated with caution.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 20
5.1.3 Changes in Australia
We now consider observed and predicted changes in Australian TCs. Here, published studies, as well
as unpublished analyses from our own IAG/NCAR work, are incorporated. Readers should also refer
to the information panel Changes in Australian TC observing practices that outlines issues with the
observational record.
Inhomogeneity of the Observational Record
When considering the observed changes in TCs in the Australian region (Figure TC2), it must be
recognised that the official Bureau of Meteorology TC database is based on observing practices that
are not homogeneous over time. A recent reanalysis of TCs in the Australian region (BoM 2018),
using all available satellite imagery, recommended using only data since 1989 for intensity analyses
because the quality and coverage of satellite imagery declines for the earlier years (see the
informational panel on Changes in Australian TC observing practices). There is also insufficient data
on the coastal crossing and inland characteristics of landfalling TCs – the region where most damage
occurs.
Figure TC1 Consensus future projection of tropical cyclone characteristics under a 2°C global warming
scenario, relative to the 1986-2005 baseline. Shown for each basin and the globe are median and percentile
ranges for projected percentage changes in TC frequency, Saffir Simpson category 4–5 TC frequency, TC
intensity, and TC near-storm rain rate. For TC frequency, the 5th–95th-percentile range across published
estimates is shown. For category 4–5, TC frequency, TC intensity, and TC near-storm rain rates, the 10th–
90th-percentile range is shown. Note the different vertical-axis scales for the combined TC frequency and
category 4–5 frequency plot vs the combined TC intensity and TC rain rate plot. Source: Knutson et al. (2020).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 21
Changes in Australian TC observing practices
The first geostationary satellite with coverage over Australia was launched in 1977 (GMS-1), and this
satellite only provided analogue imagery, unsuited to modern TC analysis techniques which require digital
data. There were few polar-orbiting satellites through this period, and none with high-resolution microwave
channels or scatterometer instrumentation.
The Australian historical TC record is based on rare direct intensity measurements. Australia does not have
an aircraft-based cyclone reconnaissance program such as the one operated by the USA for the North
Atlantic Ocean, and sometimes North-East Pacific Ocean. The practice in Australia is to rely heavily on
satellite intensity analysis techniques best suited to the higher resolution multi-spectral satellites that have
progressively been launched since 1989.
The current requirement for the existence of gale force winds or stronger over more than half of the
cyclone’s circulation was introduced in the late 1980s with the advent of more detailed satellite observations.
This altered analysis procedure introduced a heterogeneity in the Australian cyclone record not found in
other ocean basins where gale force winds only need to occur in less than half of the cyclone circulation.
The different definitions of TCs around the world are available at: https://public.wmo.int/en/our-
mandate/focus-areas/natural-hazards-and-disaster-risk-reduction/tropical-cyclones.
Low-intensity tropical lows, from non-classical tropical weather systems like the Townsville monsoon low that
later formed TC Uesi 2019 or Ex-TC Oswald 2013, are more likely to be classified as monsoon lows or other
hybrid lows. This is due to the observed asymmetries and non-classical structures evident in these formative
cyclones, that have only become evident with the use of current day analysis techniques and improved
quality and quantity of satellite data. As an illustration of this, there were three asymmetrical gale producing
tropical lows in the Australian region in the 2019-20 season alone that were not classified as TCs that may
have been in earlier eras.
Adopting an arbitrary “Australian region” definition can also produce potentially unrepresentative trends as
the longitudes used to define the bounds of the Australian cyclone regions are not ideal when assessing
regional TC trends. The 2015-16 season, for example, has a total of three cyclones, although a fourth (TC
Raquel) did move into the Australian region in July 2015 but is not included in the total. Cyclone clustering
approaches may also offer better insights into regional cyclone trends (Ramsay et al. 2018).
The statistics also depend upon a degree of interpretation by the best track analysts as, although satellite-
based guidance has improved dramatically in recent decades, there is still a requirement for interpretation of
the guidance, with the final intensities likely to have confidence limits of around +/- 10hPa for the higher
intensity cyclones. As an illustration of this, TC Stan (2016), using the automated Dvorak technique, did
achieve Category 3 intensity briefly but is not reflected in the best track data as other guidance indicated a
lower intensity. TC Uriah (2016) was Category 2 within the Australian region and subsequently deepened to
Category 4 when just west of the western boundary of the Australian region of responsibility.
Looking at earlier seasons, the 1970-71 season had 19 TCs in total, three of them severe TCs. Of the 19
TCs, four have lowest central pressures between 1004hPa and 990hPa, which raises the question: would
they be included if current analysis practices were used? Of the severe TCs, two, rather than three, would be
severe using lowest central pressures below 970hPa as the classifier. In the 1983-84 season, five of the TCs
have lowest central pressures of 990hPa or higher. Five rather than eight of the cyclones have lowest central
pressures under 970hPa. In the 1984-85 season there were 17 TCs included but two of them (Nigel, 996hPa
at 160oE and Rebecca, 994hPa), may not have been included using today’s analysis techniques. The BoM
2018 reanalysis also shows nine severe TCs, fewer than the 11 that appear in the graph.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 22
Any historical trends in TC numbers and intensities therefore need to be treated with caution, as
changing observation systems and analysis techniques may produce changes that are larger than
climate change alone. This applies particularly before 1989 but also to a lesser degree post-1989
(see the informational panel on Changes in Australian TC observing practices on page 21). In
addition, trend analysis is further complicated by the high level of natural decadal variability in the TC
record. Nevertheless, this record forms the basis of much of the industry risk assessment for TC
damage potential and, as a result, these assessments include these same false trends.
Hartmann et al. (2013) found that, due to the magnitude of the interdecadal variability, the
significance of the trend in TC frequency is sensitive to the specific period analysed. This analysis
highlights periods of very active and damaging TCs along the east coast, followed by multi-decadal
quiet periods. This is partially linked to the Southern Oscillation Index (Figure TC3). Although a
declining trend line is often added to the data in Figure TC3, this trend may change if a longer record
was used due to the few and incomplete multi-decadal cycles. A more reliable message here is that
the east coast can have periods of a decade or more with few cyclone impacts, followed by more
active periods. Building codes and land planning must consider the frequency and intensity of events
over a longer-term and not be based on too short a view.
Figure TC2 Seasonal total numbers of severe and non-severe TCs from 1970-2017 which have occurred in
the Australian region as included in the Australian Bureau of Meteorology TC database based upon
inhomogeneous analysis techniques.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 23
Landfalling Tropical Cyclones
The longest analysis of severe landfalling TCs along the east coast of Australia dating back to the
1870s was that produced by Power and Callaghan (2020) using newspaper, shipwreck and other
original reports for the older cyclones and the Bureau of Meteorology’s database for the more recent
period. They found a large interdecadal variability and a peak of activity in the final part of the 19th
century. They identify a decline in the total numbers of landfalling cyclones, unevenly distributed in
space and time with prolonged quiet intervals rapidly transitioning to active periods then declining
again. The nature of this data does not allow precise quantification of intensity, but this dataset
confirms the variability of extreme cyclone impacts along the east coast over the last 150 years.
The observed landfalling TCs for the east coast of Queensland, since 1970, indicates that there has
been a marked increase in Category 3 and 4 impacts (Figure TC4 top, adapted from Holmes 2020).
This finding has important implications for the adequacy of wind loading standards for the eastern
seaboard of Australia. As the map of these TC tracks shows (Figure TC4 bottom), there is
considerable interdecadal variability in the latitudes affected by these damaging cyclones. Many of
them also reached peak intensity very close to the coast. This highlights the need to develop a much
better understanding of the risks posed by landfalling TCs, and their hybrid-versions, around the
Australian coastline.
Figure TC3 Observed decadal variability in severe landfalling TCs along Australia’s east
coast and corresponding variability of the Southern Oscillation Index . Source: Power and
Callaghan (2020).
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Future Climate Projections
In addition to the available literature, an approach to addressing the issue of limited historical data on
high impact weather systems such as TCs is to use ensemble simulations. NCAR, in conjunction with
IAG, is conducting a study on the variability and trends in TCs across the north-eastern Australian
region. This research uses the vast quantities of data provided by the Decadal Prediction Large
Ensemble (DPLE) (see insert on page 25 for more details on this dataset) suite of model runs. This
study essentially attempts to quantify the changes in TC risks up to the current decade in an
environment of a rapidly changing climate.
Figure TC4 Landfalling Australian TCs Category 3 and above (top) and their
tracks and location of maximum intensity (red dots) (bottom) along the
Queensland coast for the period 1970-2019. In the top figure categories 3.5/4.5
indicate TCs that just fell short of reaching intensities of categories 4/5. The
shading around the regression line indicates the 95% confidence intervals. The
colour coding in the bottom figure is by decade. Adapted from Holmes (2020).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 25
The study region is south of the equator
between 135oE and 180oE. Additionally, the
study focused on the densely populated
south-east Queensland to north-east New
South Wales region (25oS to 30oS, 150oE to
160oE – denoted subregion QLD-NSW).
This is an area of immediate interest as the
building code standards here has a lower
wind loading requirement, compared to the
more northern coastal areas of
Queensland. Details of the analyses and
techniques used can be found in Bruyère et
al. (2019a, 2020).
Frequency and Intensity Changes
South-West Pacific TC frequency appears
to be more sensitive to circulation changes
than in other basins (Sharmila and Walsh
2017). As stated earlier, circulation changes
are not well understood, and many climate
models have difficulty representing the
observed environmental characteristics of
key TC regions, such as vertical wind
shear, SSTs (particularly in the Equatorial
Pacific near the dateline), and the
structure of the South Pacific Convergence
Zone.
As stated in the global perspective section
and illustrated in Figure TC1, Knutson et
al. (2020) reached a consensus of higher
TC intensities but fewer TCs globally.
More importantly, there are significant
variations between ocean basins and even
higher differences in subregions within
individual basins.
Figure TC5 (adapted from Knutson et al.
2020) depicts the projected changes in TC
frequency (a), frequency of the most
intense TCs (categories 4-5) (b), and
changes in TC maximum intensities (c), for
Decadal Prediction Large Ensemble (DPLE)
The DPLE dataset is a set of simulations carried out
to support research into near-term earth system
predictions (Yeager et al. 2018). The DPLE consists
of 64 distinct ensembles, one for each of the 64
initialisation times (1 November 1954, 1955, …,
2016, 2017). For each start date, a 40-member
ensemble was generated by randomly perturbing the
atmospheric initial conditions at the round-off level.
The simulations were integrated forward for 122
months (10 years with a 2-month spin-up period)
after initialisation. This results in over 25,000 years’
worth of model data spanning past, current and near-
future climates. Thirty of these ensemble members’
temporal resolution were high enough (six-hourly) to
allow TC tracking, reducing the analysed years to
19,200. The atmospheric component of the DPLE is
the Community Atmosphere Model, Version 5, with a
horizontal resolution of 1o (~100km) and 30 vertical
levels. The DPLE is initialised for each set of runs
with observed ocean and atmosphere structures, so
has built-in climate change influences. As such, it
does not suffer the limitations of AMIP simulations
with fixed or prescribed SSTs and only atmospheric
and CO2 changes.
Figure TC5 Projected changes in TC frequency (%) (a);
projected changes in (%) frequency of the most intense
TCs (categories 4-5) (b), and; projected changes in TC
maximum intensities (%) (c), for the South Indian and
South-West Pacific basins. Shaded boxes, whiskers, and
circles denote the interquartile range, the percentiles, and
maxima and minima. Horizontal lines in the shaded boxes
denote the median. The percentiles used are 5th–95th (a)
10th–90th (b and c). Adapted from Knutson et al. (2020).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 26
the South Indian and South-West Pacific
basins. This figure clearly shows that
although the median changes predicted for
these basins are small, the variability is
substantial.
In a recent study of South Indian Ocean TC
trends – focused upon the Africa-Reunion
region and the western half of the West
Australian region – Cattiaux and Bousquet
(2020) investigated potential changes in TC
activity between a reference period (1965-
2014) and a future climate period (2045-
2094), for the RCP8.5 climate change
scenario. They used a rotated-stretched
50km grid version of the CNRM-CM6-1
climate model and CMIP5 multi-model
climate projections. In agreement with other
studies, they found a 20% decrease in total
TC frequency but an increase in the lifetime
maximum intensity. They divided the current
day TC intensity distribution into bins,
focusing on 0-50%, 60-80%, and above
90%. Their findings indicated that future
climate TC numbers declined by 10% in the
0-50% bin. This is offset by a 10% increase
in the 60-80% bin, and a 6-7% increase in
the >90% bin.
They further noted a shift in the TC season
with the earliest cyclone of the season
shifting from the historical mid-November
period to mid-December, and a redistribution
of TCs more into the second half of the
season.
Lavender and Walsh (2011) found that the
average TC lifetime increases by 12-24
hours for each 2-3°C warming. Parker et al.
(2018) concluded there could be a 5-10%
increase in landfall wind speed for eastern
Australia under an end-of-century RCP8.5
scenario, exacerbating the impacts of TCs
on more southern parts of Australia.
The DPLE dataset replicates significant
inter-annual variability (Figure TC6a), and it
does identify the gradual decline in total
numbers of TCs across the domain over
Figure TC6 DPLE average number of TCs per year
(a), DPLE (solid) and observed (dotted) decadal
average annual number of TCs (b), and DPLE decadal
average annual number of TCs that enter the
subregion QLD-NSW (c), for the period 1960 to 2026.
The dotted grey line in figure (a) indicates the number
of simulations available for each modelled year.
Source: NCAR (May 2020).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 27
time (Figure TC6b). Note that the DPLE’s horizontal resolution limits the development of physically
small (midget) or weak TCs and as such the simulated TC numbers are lower than observed. Figure
TC6c shows the decadal trend for the QLD-NSW subregion. For this small subregion, the DPLE does
not indicate a notable decrease in TC numbers. This zero trend is significant in conjunction with the
declining trend in basin-wide TC numbers.
The number of all DPLE TCs in the South-West Pacific basin that reach Category 3 or higher
increases by 20% by the 2020s (not shown). Looking specifically at the intensities for TCs that enter
the QLD-NSW subregion (Figure TC7), the change in intensities for TCs with wind speeds above 40
m/s increases rapidly after the decade centred on 2000 and particularly for the current 2020 decade.
This highlights the growing risk of the more destructive TCs passing through this region and hence
the rising risk of more destructive cyclone impacts across south-east Queensland and north-east New
South Wales.
A slight increase in the lifetime maximum wind speed appears robust across studies (Walsh et al.
2016b). Uncertainty remains, particularly on the role of tropical tropopause temperatures (Ramsay
2013). Holland and Bruyère (2014) suggested a continuation of proportional increases in the
strongest TCs in the future, but also suggested an upper limit to the proportion that they referred to as
‘saturation’, imposed by basin geography.
Latitude of Lifetime Maximum Intensity
Gaining an understanding of trends in the LLMI of TCs in the Australian region is instructive when
considering the changing risks of TC impacts across the southern-most parts of the Australian TC
regions. The available observational record is too short to develop statistically significant trends.
None-the-less, the reanalysed Bureau of Meteorology best track dataset from 1989 to 2020,
supplemented by IBTrACS and technical bulletins for the 2019-20 season where best track data is not
yet available, were analysed for LLMI. The analysis was divided into meteorologically similar
subregions (A-D, see Figure TC8) of the broader Australian region. The months from December to
Figure TC7 DPLE trends in the intensity of TCs per decade that enter the subregion QLD-NSW. The right
panel shows the percentage change in area under the curve with a threshold of 40m/s shown as a dashed
line and 50m/s (Category 3) as a solid line. Source: NCAR (May 2020).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 28
April were analysed as this time period excludes near-equatorial very late or early season TCs that do
not affect the Australian mainland. All TCs that reached Category 1 intensity within the Australian
region were included, even if their LMI occurred outside the subregion.
Table TC1 provides a summary of the observed LLMI trends, while Figure TC9 shows a graph of
LLMIs for the Coral Sea region
from 1989 to 2020. There are too
few TCs between 130oE and
135oE for any meaningful analysis.
The LLMI trends based on this
limited dataset provide consistently
similar results to those from other
studies. Cattiaux and Bousquet
(2020) found a slight poleward
extension of the TC tracks in the
South Indian basin. This shift
represented approximated a 1oS
poleward movement over 80
years. The more robust global and
ocean basin results of Kossin et al.
(2014) also found results
comparable with what would be
expected for these subregions. It is
worth noting that despite the
limited data and caution needed
when applying this data to future
cyclone behaviour, none of the
subregions exhibits an equatorial
shift in the LLMI.
Figure TC8 Map showing longitudes used to delineate the subregions (A-D) used for
trends in LLMI in Table TC1.
Figure TC9 Observed trends in LLMI of TCs (blue dots) for the Coral
Sea region (142oE to 160oE) for the months December to April from 1989
to 2020. The shading around the regression line indicates the 95%
confidence intervals. Source: IAG internal analysis (April 2020).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 29
Table TC1 Observed trends in the LLMI of TCs in subregions of the Australian region for the months December
to April from 1989 to 2020. (IAG internal analysis April 2020).
The Coral Sea subregion (subregion A) spans the area from the Cape York Peninsula (142oE) to
160oE. LLMI analysis for this subregion was based on the 94 TCs that appear in the database from
1989 to 2020. The observed LLMI trend in this region was a 1.8o poleward shift, which equates to a
mean poleward shift of 6.4km/year.
Subregion B lies between the Cape York Peninsula and 135oE and encompasses the Gulf of
Carpentaria. Here, the relative proximity of the Australian landmass to the south acts to limit the
poleward shift of the LLMI. The detected poleward shift of around 3km/year is less than half that of
the Coral Sea region and illustrates the importance of considering how landmasses may affect trend
analyses.
Subregion C, between 115oE and 130oE, includes the North-West Shelf, Timor, and Arafura Seas.
Here, the entire region between the Indonesian Archipelago and the Australian coastline is subjected
to warm waters. However, the West Australian landmass and its associated heat lows act as
modifiers to the wind regimes in this region, with the LLMI still shifting poleward but at a slower rate
than for the Coral Sea.
In subregion D, between 90oE and 115oE, the dominant feature is the cool north then north-westward
flowing West Australian Current, with the warm onshore Leeuwin Current a smaller influence. This
colder water region typically pushes as far north as 15oS at 90oE and acts as an inhibitor to the
poleward expansion of the tropical warm water regions. As a result, this region exhibits the smallest
poleward shift in the LLMI.
Figure TC10 shows the DPLE average annual LLMI for all TCs west of 160oE (i.e., the ones impacting
land). On average current-day and projected future TCs reach their Lifetime Maximum Intensity (LMI)
0.5o further poleward than in the early years.
Subregion Extent Number
of TCs
Mean
LLMI
1989
Mean
LLMI
2020
Change Rate of change
A 142oE-160oE
(Coral Sea)
94 16.4oS 18.2oS 1.8o poleward 6.4 km/year poleward
B 135oE-142oE 44 14.2oS 15.0oS 0.8o poleward 2.9 km/year poleward
C 115oE-130oE 86 16.5oS 17.6oS 1.1o poleward 3.9 km/year poleward
D 90oE-115oE 126 15.6oS 15.9oS 0.3o poleward 1.1 km/year poleward
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 30
This observed, and predicted,
poleward shift in the latitudes at
which TCs reach their LMI,
highlights that although the risk
of TC impacts in this region is
low relative to regions further
north, there is an increasing
proportion of TCs extending
further poleward over time. This
is a significant finding
considering the population
density and lower wind loading
standards in this area.
Should the lifetime maximum
intensities continue to migrate
poleward, as suggested by
Kossin et al. (2014) and
Lavender and Walsh (2011) and
supported by the limited internal
analyses of IAG discussed
earlier, cities along subtropical
eastern and western Australian
coasts will experience greater
TCs impacts than in the past.
Tropical Cyclones and Sea Surface Temperatures
TCs gain their energy and moisture from the oceans, with the maximum potential intensity (MPI) of
TCs highly correlated with SST. Figure TC11 shows the decadal trends in the average SST under all
TCs in the domain (left) and for the QLD-NSW subregion (right). Domain-wide and in the QLD-NSW
subregion there is a marked shift towards higher SSTs in the later decades, and particularly for the
current decade centred on 2020. Domain-wide the time that TCs spent over water > 30°C increases
by 500% for the 2020s, compared to the 1960s. This is even more evident in the QLD-NSW
subregion, where the average SST under TCs increases by nearly 1°C and the time that TCs spend
over water warmer than 27°C increases by over 1000%. This is consistent with observations and
modelling results, which found that TCs are becoming more intense, especially further south, and
contain more precipitable water, primarily imported from the warming tropical regions.
Figure TC10 The DLPE average annual LLMI of all TCs (dots)
west of 160oE. The shading around the regression line indicates
the 95% confidence intervals. Source: NCAR (May 2020).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 31
Tropical Cyclones Rainfall and Surge
There is not a good understanding of historical changes in other key TC characteristics such as size
and storm total rainfall for the Australia region, primarily due to a lack of data. Lavender and Abbs
(2013) explored historical TC rainfall trends and found a signal of significant drying associated with
TCs over the east coast of Australia. However, recent work by Bruyère et al. (2019a) found that
flooding associated with TC Debbie-like cyclones was significantly enhanced as a result of oceanic
warming.
The likelihood of a future increase in TC rainfall rate appears robust across many studies, driven by
the strong thermodynamic change processes. Parker et al. (2018) found increases of up to 27% in
landfall hourly TC rain rates over eastern Australia by the end of this century. The DPLE studies find
Figure TC11 DPLE distribution of SST under TCs. The left panel shows the decade change for all TCs in the
domain west of 160oE. The right shows the TCs within the QLD-NSW subregion. The dotted lines in the
right-hand panel indicate the mean SST for 1960 and 2020. Source: Bruyère (2020).
Figure TC12 DPLE trends in the area receiving over 600mm of rainfall for the entire cyclone path and the
portion over land (left) and for the QLD-NSW subregion (right). Source: Bruyère (2020).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 32
this increased rainfall trend is already occurring, and it is predicted to continue in the warmer climate
of the future.
Rainfall associated with TCs is a major contributor to the total damage they produce. Although the
DPLE model resolution does not adequately resolve topographic and convective processes, there
remains a substantial trend in the total rainfall within 500km of the cyclone centre. The data indicate
large changes in the area exposed to rainfall accumulations over 600mm per storm (Figure TC12).
Over the continent (Figure TC12, left) the area exposed to high rain volume has increased by around
60%. Focusing in on the QLD-NSW subregion, this increase is between 175 and 200% for the current
decade (Figure TC12, right). The total inland area exposed to high winds is also increasing (not
shown). This points to rapidly increasing risks of water ingress through wind-driven rain or flash
flooding, as well as a heightened risk of major river flooding. These impacts are compounded by
increasing storm surge, wave and coastal erosion impacts.
Given that Australia is recognised as holding the world record storm surge of 13m, associated with
Cyclone Mahina in 1899 (Nott et al. 2014), an important question is how likely such events will be in
the future. New simulation technologies are being developed to assess rare surge events for any
coastal location (Bruyère et al. 2019a; Lin and Emanuel 2016). Lin and Emanuel (2016) generated
2,400 synthetic TC surge events for Cairns using wind fields from the TC model of Emanuel et al.
(2006) to drive a surge model. They found that under current climate conditions the 0.01% (1 in
10,000 year) surge would be 5.7m, generated by a TC that was only slightly more intense than
Cyclone Yasi but with a slightly different track. Storm surge risk associated with TCs will increase
(i.e., return periods will contract by an order of magnitude) due to rising sea levels and TC intensity
associated with global warming (e.g. Lin and Emanuel 2016, Woodruff et al. 2013).
An interpretation of projected regional changes applicable to Australia
This section considers potential regional changes to TCs within the Australian region. It uses expert
opinion to interpret the published observational and modelling studies and known limitations, as well
as unpublished IAG analyses, and initial IAG/NCAR work described earlier. These changes,
summarised in Figure TC13, can be used as adjustment factors to the regional TC frequencies to
reflect climatologies more representative of current and future climates. These climatologies are a key
input to Natural Catastrophe models used by the (re)insurance industry and provide a means to
simulate past, present and future climate risk scenarios. The near coast and overland impacts are of
most interest to risk assessments. Therefore, while catastrophe models use the tracks and intensities
across a broader ocean basin, it focuses on deriving the landfalling intensity distributions along
different sections of the coast.
Importantly, the coastal sections can have significantly different intensity distributions from each other
and from the broader ocean basin total. For reasons explained earlier and following, the application of
climate change to these coastal areas will also be uneven and different from the expected mean
ocean basin changes, such as those summarised in Figure TC1.
The following sections: 1) Discuss the key overall factors influencing the expected Australian TC
changes under climate change; and 2) Detail specific regional factors that are considered when
deriving the regional changes.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 33
Property damage increases non-linearly with increasing TC intensity. Therefore, the expected
changes in Figure TC13 are stratified by low and high TC intensity bands to enable more refined
adjustments to the base climatologies.
Overall Factors
The greater proportion of intense TCs (Categories 4 and 5) in the most recent decades compared to
the 1970s (Holland and Bruyère 2014) is likely to also apply across the Australian region. This has
been supported by evidence from the DPLE analyses for the north-east of Australia as well as global
modelling studies, a subset of which have been discussed here. The DPLE analysis found a 10%
increase in the proportion of intense TCs between the decades centred on 1960 and 2010, and a
further 10% increase predicted for the 2020 decade. Importantly, from a property risk perspective, the
less frequent but intense TCs drive most of the damage.
It is estimated that approximately 10% of all pre-industrial TCs have been Category 4 or 5. Currently,
nearly 25% of all TCs reach this peak intensity. This rising trend would likely continue before the
upper limit or ‘saturation point’ is reached.
There has been a poleward shift of the latitudes where TCs reach their maximum lifetime intensity in
the South Indian Ocean and South-West Pacific Ocean basins (Kossin et al. 2014). Tentative trends
have been identified across the Australian region, pointing to different rates of poleward shift of the
LLMI for different subregions. The varying trends are driven by subregional scale factors that have not
yet been investigated. For the east coast of Australia, these observed and DPLE modelled trends
imply a poleward expansion of the area that will be subjected to future intense TCs and damages.
For the west coast, south of Shark Bay, the poleward shift was found to be smaller than off the east
coast. This is due to the presence of cooler waters in the West Australian Current, which, although
warming, are projected to remain relatively cool to the end of the present century. Potentially
offsetting this would be variations in the warmth and structure of the Leeuwin Current. However, the
oceanic component of the climate models has yet to produce conclusive results for this area.
It is likely that some of the most significant impacts for the Central West and Lower West Coasts of
Western Australia will be associated with the interactions of tropical lows and mid-latitude weather
systems. These interactions produce complex weather systems with both tropical and mid-latitude
characteristics, such as those in May 2020 and June 2012. TCs traversing this region are also likely
to be undergoing extratropical transition. To date, there have been no studies of trends in
extratropical transitioning systems in the Australian and New Zealand regions.
TCs in the Australian and New Zealand regions are likely to last longer due to the higher heat content
of the oceans over which they travel (Figure TC11), particularly in the western and Coral Sea
subregions away from the constraining effects of the Australian mainland. They are also likely to
spend a longer proportion of their life cycle as higher category TCs (Bruyère et al. 2019b). This is
particularly true for the South-West Pacific Ocean, where a general southward shift of the subtropical
jet stream could lead to a reduction in the vertical wind shear. This increases the chance of significant
TC impacts on Australia, New Zealand and other South-West Pacific islands. This trend of longer-
lasting and stronger TCs should continue as the world gets warmer.
Under +2°C and >+2°C scenarios, TC seasons are expected to gradually favour TC development in
the second half of the season. Recent late-season TCs point to this having already occurred for the
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 34
Coral Sea. For example, TC Zane (2013) was a weak Australian Category 3 cyclone that formed in
late April and weakened in early May as it crossed the north Queensland coast; TC Ann reached
Australian Category 2 intensity in the Coral Sea in mid-May 2019; and TC Mangga reached Australian
Category 1 intensity to the north-west of Cocos Islands in May 2020.
With warmer environments, TCs are expected to produce significantly higher rainfall and runoff
quantities. Warmer air has a higher moisture capacity – as indicated by the Clausius-Clapeyron
relationship (Trenberth et al. 2003, Prein et al. 2017a). Therefore, at a minimum, rainfall should
increase by around 7% for each degree Celsius of warming. Rainfall volumes (Bruyère et al. 2019a,
2019b) and storm runoff extremes (Yin et al., 2018) have been shown to increase at rates significantly
higher than the 7% suggested by Clausius-Clapeyron scaling alone. This is due to increased
intensity, longer life, expansion of the heavy rainfall area and increased inland penetration of future
TCs.
The potentially changing nature of the important sub-type of TCs referred to as midgets, which
includes TC Tracy that devastated Darwin in 1974, remains an area of considerable uncertainty due
to their small size and the inability of the current generation of climate models to resolve them
adequately.
For New Zealand, the poleward extension of the latitudinal band favourable for TC development and
intensification is expected to lead to an increased number of TC-related impacts across the nation.
Preliminary results from the DPLE dataset are confirming increased TC frequencies and intensities
over waters north to north-west of the North Island of New Zealand. Most impacts are expected to be
from tropical systems that are undergoing extratropical transition. The 2017-2018 season may be an
early indication that this trend is already underway with a record three extratropical cyclones (ETCs)
affecting the island nation.
However, insufficient research means that there remains a high degree of uncertainty in ETC trends.
The work of Ramsay et al. (2018) and Knutson et al. (2019, 2020) serves as a good launching pad for
future, more tailored, studies on TCs and ETCs in the Australian and New Zealand region.
Specific Regional Factors
Figure TC13 and the following commentary summarises the expected regional changes to both the
frequency of all TCs and the frequency of low intensity (Australian Categories 1 and 2) and high
intensity (Australian Categories 3, 4 and 5) TCs between the 1950s and the +3°C climate change
scenario. It is important to note:
• some of the changes shown have already occurred due to the warming experienced up until
2020;
• the changes described below only relate to the wind component of TCs and do not include
other important risk drivers – such as water ingress, flooding caused by more intense short
duration or storm-total rainfall, storm surge, wave impacts and coastal erosion – that are all
very likely to worsen.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 35
Figure TC13 The potential regional changes to the frequency of all TCs, low intensity TCs (Australian
Categories 1 and 2) and intense TCs (Australian Categories 3, 4 and 5) in a +3°C warming world based on all
available sources of information.
Central and South-East Queensland and North-East New South Wales
Figure TC14 shows the ten most significant TCs to have affected the south-east Queensland region
since 1954, serving as a rough baseline for applying future changes caused by the warming climate.
By applying the observed and modelled poleward shift in the LLMI and noting the warmer SSTs that
will exist southwards beyond the latitude of Brisbane to the historical TC tracks, Figure TC13 serves
as an illustration of what future climate TC impacts could look like across this region.
In the +3°C scenario and beyond, the tentatively observed poleward shift of the LLMI, coupled with
the expected thermodynamically driven support for more intense cyclones over warmer waters,
broadens the highest risk area from the north coast of Queensland into the central coastal region.
Due to the poleward expansion of the TC affected region, the south-east Queensland and north-east
New South Wales region will experience the largest relative (not absolute) change. Although still likely
to be uncommon events, the very rare high category TCs are expected to have a slower decay rate
(i.e., have a higher intensity) in a warmer climate. This is due to the increased SSTs off the central
and south-east coasts of Queensland, which can sustain stronger cyclones.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 36
Figure TC14 The Tracks of the ten most significant TCs to have affected the south-east Queensland and north-
east New South Wales region since 1954. The horizontal dashed lines show the mean latitude of maximum
intensity for this set of TCs (21.5oS) and the latitude of Brisbane (27.0oS).
Far North Queensland, the Northern Territory and Northern Western Australia
The poleward shift of the LLMI would tend to marginally reduce TC frequency in these regions.
However, there will remain a relatively high risk of impacts from intense TCs as these regions are
susceptible to impacts from some of the most intense TCs in the world. This reduced frequency will
not reduce the impact from the most severe and destructive TCs. When rapidly increasing storm-total
rainfall and storm surge-related factors are considered, it is quite likely that the total TC-related risk
may increase rather than decline.
Central West and South-West Western Australia
The waters off the west coast, from Shark Bay southwards, are cooler than those off the east coast.
The warming effects of climate change on TCs should be slower to manifest themselves in this
region. Nonetheless, there will likely be ongoing warming of the waters off the west coast of Australia
and particularly in the Leeuwin Current. This warming could lead to a commensurate increase in the
risk of higher intensity TCs, although the rate of increase in risk should be slower than for the east
coast.
21.5oS
27.0oS Queensland
New South Wales
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 37
5.2 Extreme Precipitation and Flooding
5.2.1 Background
The IPCC states in its AR5 report (IPCC 2013) that, based on historical observations, there are likely
more land regions where the number of heavy precipitation events has increased than decreased.
The recent detection of increasing trends in extreme precipitation (Jakob et al. 2011, Westra and
Sisson 2011, Chen et al. 2013, Guerreiro et al. 2018, Dowdy 2020) and discharge in some
catchments implies a greater risk of flooding at regional scales. This trend of increasing frequency
Section Summary
Extreme precipitation can intensify significantly with climate change, even in regions that
experience drying on average. The more extreme an event is (i.e., the more intense and less
frequent), the more its rainfall rate is likely to change in the future.
A study of trends in Australian hourly and daily rainfall from the period 1966-1989 to 1990-2013
showed daily rainfall increased at around 7% per degree of warming. Emerging science also
confirms that intense rainfall rates are increasing. These rates across southern Australia have
increased nearly 14% per degree of warming, and 21% for the tropical regions.
Records show observed flood severity for smaller, fast response catchments has increased. The
faster the response of the catchment, the greater the increase in flood severity. As well as
increased flood frequency for fast response rivers, the flood volumes and peak flow rates should
also increase, leading to non-linear increases in the damage produced by changes to extreme
short-duration rainfall.
Housing and infrastructure currently being designed and built can be expected to still be in use
around the year 2100. Traditional floodplain management decisions are based upon analyses
of rainfall regimes from the historical climate and do not adequately account for current and
future conditions.
Wind-driven rainfall damage is expected to increase due to a combination of more intense
convection, more intense TCs and possibly warm-season ECLs.
Dyer et al. (2019) highlighted that catchments with historically strong land planning controls are
more sensitive to increases in flood intensity or frequency due to the accumulation of properties
just above the 1% AEP.
Recent advances in computational resources and atmospheric model development enable
regional climate model simulations in convection-permitting resolutions (≤4km horizontal grid-
spacing), which explicitly resolve issues related to deep convective storms. These provide more
reliable simulations of sub-daily precipitation extremes and surface-atmosphere interactions (e.g.
coastlines, orography) than those where convection is not explicitly simulated.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 38
and intensity of extreme precipitation events will very likely continue and intensify with rising
temperatures.
From a risk to life and property perspective, consideration of extremes in rainfall should focus on the
rainfall events which lead to damaging flood events and which form the basis of land use planning
and building standards, with annual exceedance probabilities (AEP) in the order of 2% to 0.001%.
Such extreme rainfall events are sparse in the historical data and therefore poorly represented in the
scientific literature, with the majority of published research focusing on daily or multi-day totals around
the 99th to 99.9th percentile (equivalent to AEP of ~30% to ~3%). Events close to the 99th percentile
typically do not exceed design criteria and therefore produce only limited levels of damage to the built
environment.
The rate at which extreme precipitation will intensify is theoretically related to the water-holding
capacity of the atmosphere (i.e. the Clausius-Clapeyron relationship). Air can hold approximately 7%
more water vapour for each degree Celsius of warming, which translates to a theoretical increase in
short-term (hourly to daily accumulations) extreme precipitation by approximately the same rate
(Trenberth et al. 2003, Prein et al. 2017a, BoM and CSIRO 2018). These rates can, however, be
strongly modified by changes in storm characteristics, such as size, translation speed or non-linear
storm dynamics (Westra et al. 2014, Prein et al. 2017b, Prein and Heymsfield 2020). Extreme
precipitation increases of higher than 7% per degree Celsius of warming can occur for cold season
extremes due to a transition from stratiform to convective rainfall for temperatures above ~10°C (Berg
et al. 2013). Other changes in storm dynamics, such as an increase in latent heat release or changes
in rainfall efficiency (e.g., Prein and Heymsfield 2020), might also result in larger than 7% per degree
Celsius increases in extreme precipitation. However, further research is needed to understand their
contribution better (Fowler et al. 2020).
Furthermore, the atmospheric circulation patterns that trigger heavy precipitation events are also
likely to change, thereby either enhancing or partially offsetting thermodynamic effects. The changes
in atmospheric circulation patterns are a major source of uncertainty, while thermodynamic changes
(e.g., rising temperatures and increasing atmospheric moisture) are more certain (Shepherd 2014).
It is important to realise that changes in extreme precipitation rates are decoupled from changes in
mean precipitation. This means that extreme precipitation can intensify significantly with climate
change in regions that experience drying on average (Giorgi et al. 2011, Ban et al. 2015, Prein et al.
2017a). This results in global extreme precipitation increases being more homogeneous than
changes in mean precipitation (e.g., Fischer et al. 2014).
Frequency changes in extreme precipitation are expected to change at even higher rates than
intensity changes, meaning higher return level events will experience a bigger increase (see Section
4.2). Figure EP1 shows the return periods for the 20th century 100-year flood at the end of the 21st
century under a >+2°C scenario. In the Murray Basin, for example, the 100-year current climate flood
is projected to occur every 5-25 years by the end of the century, which is a 400-2000% increase in
frequency. Similar large projected increases have been reported for other regions of the world (e.g.,
Te Linde et al. 2011).
There is an increasing body of literature that indicates that the increase in frequency and intensity of
future extreme precipitation will be larger for rare events (Figure EP2: e.g., Pendergrass 2018, Li et
al. 2019, Lopez‐Cantu et al. 2020). This means that the rarest and most costly extreme precipitation
events might increase the fastest under climate change.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 39
Figure EP2 Simulated global mean daily extreme precipitation change as a function of the rarity of an event.
The more extreme an event is (i.e., the more intense and less frequent), the more its rainfall rate changes in the
future. Source: Pendergrass (2018).
Figure EP1 Projected return period of the 20th century 100-year flood at the end of the 21st century under
the RCP8.5 scenario at the outlets of 29 selected river basins. The colour of each basin indicates the multi-
model median return period at basin outlets. Source: Hirabayashi et al. (2013).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 40
5.2.2 Changes in Australia Observed changes
Assessing the impact of climate change on extreme precipitation in Australia and its regions is more
uncertain than the discussed global estimates. This is due to the large natural variability in Australian
rainfall on annual to decadal timescales.
Observed changes in heavy precipitation in Australia are consistent with global studies. Still, the
existing climatology of severe convective storms across Australia is poor and complicates the
detection and attribution of historical changes in extreme rainfall.
The fraction of Australia (Figure EP3) that receives a high proportion of its annual rainfall (greater
than 90% of daily precipitation) from extreme events (greater than 90th percentile) has increased since
the 1970s (Gallant et al. 2013). The exception is the east coast which has generally experienced a
significant decrease in extreme daily rainfall events since 1950 (Gallant et al. 2014).
Figure EP3 Trend in maximum one-day precipitation from 1920 to 2019. Source: Australian Bureau of
Meteorology http://www.bom.gov.au/cgi-bin/climate/change/extremes/trendmaps.cgi?map=RX1d&period=1920.
Using the Australian observational record, Wasko et al. (2016) showed that total precipitation and the
maximum precipitation intensity increases with temperature across Australia, while the storm’s spatial
extent decreases. Guerreiro et al. (2018) studied trends in hourly and daily rainfall across Australia
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 41
from the period 1966-1989 to 1990-2013. Daily rainfall was found to follow Clausius-Clapeyron
scaling. In contrast, hourly rainfall exceeded this scaling by at least a factor of two and, for tropical
regions, by a factor of three. This indicates that over the observational record, flood severity
increased for smaller, fast response catchments since extreme precipitation has become more
intense and spatially concentrated (Fowler et al. 2020). The shorter and faster the response time of
the catchment, the greater the increase in flood severity.
For large catchments such as the Murray-Darling Basin, the joint probabilities of El Niño–Southern
Oscillation (ENSO) and the Indian Ocean Dipole and other large-scale teleconnections need to be
factored in. This increased complexity of the widespread very heavy rainfall producing mechanisms
means the changes in the return periods for the rare extreme floods are far less certain. Additionally,
changes in antecedent conditions (e.g., soil moisture) are increasing in importance with increasing
catchment size and can mitigate or amplify future flooding (Sharma et al. 2018).
Observed changes in precipitation are consistent with changes in annual maximum streamflow (Ishak
et al. 2013). Ishak et al. (2013) attributed most of the decreasing flood magnitudes to natural climate
variability, indicating that forced climate change impacts on extreme precipitation are small compared
to internal variability in the observational records. This is in line with other studies showing that
extreme rainfall time series are strongly affected by climate variability, with ENSO being the dominant
driver (King et al. 2013, King et al. 2014). Changes in ENSO due to climate change are uncertain and
generally within the range of natural variability (Chen et al. 2017).
Prein and Heymsfield (2020) combined analyses of radiosonde data and two reanalyses (ERA-
Interim: Dee and Uppala 2009, Simmons et al. 2007 and ERA-20C: Stickler et al. 2014) to evaluate
precipitation differences between 1979 and 2010. They found that there were significant trends in the
height of the melting level (Figure EP4) and the warm cloud layer (WCL) depth (Figure EP5) across
Australia. A change in melting level will affect the distribution of snow, damaging hail and heavy
rainfall. In general, a higher melting level will lead to decreases in large hail and less snowfall.
Increases in melting level across Australia for the warm season (December to May) were typically 30-
60m/decade, while the increases in the deep tropical areas exceeded 140m/decade.
Another consequence of the increasing height of the melting level is the increase in the WCL depth.
The WCL depth influences the liquid water content in the cloud and surface precipitation rates. This is
because large, fast-falling drops form very efficiently in clouds with deep WCLs. These findings are
supported by observational studies, which show that precipitation intensity responds non-linearly with
a deepening of clouds and precipitation efficiency increases with mid-tropospheric humidity. As Figure
EP5 shows, large parts of New South Wales have experienced increasing rates of WCL of over
60m/decade. Sizeable increases have also been observed across large parts of Western Australia.
The rate of extreme rainfall increases four-fold in environments with WCLs deeper than ~3.5km,
corresponding to double the Clausius-Clapeyron rate. Where WCLs more frequently exceed 3.3km
(a threshold used by forecasters as an indication of flash flood potential), the potential for flash flood
events escalates.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 42
Figure EP4 Linear trend estimates of changes in the melting level height above the surface. Shown is the warm
season (December to May) average trend based on ERA-Interim and ERA-20C within the period 1979-2010.
Hatching from top left to bottom right/bottom left to top right shows significant trends (alpha is 0.1) in ERA-
20C/ERA-Interim and dotted areas show regions with potential breaking points in their record. Source: Prein
and Heymsfield. (2020).
Figure EP5 Linear trend estimates of changes in the WCL depth (cloud base to melting level depth). Shown is
the warm season (December to May) average trend based on ERA-Interim and ERA-20C within the period
1979-2010. Hatching from top left to bottom right/bottom left to top right shows significant trends (alpha is 0.1) in
ERA-20C/ERA-Interim and white areas show regions with non-homogeneous records. Source: Prein and
Heymsfield (2020).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 43
The most robust change signal is an intensification of eastward-propagating warm sea surface
anomalies that are a characteristic of very strong El Niño events (Cai et al. 2015).A new study by
Freund et al. (2020) – using simulations from both CMIP5 and CMIP6 models – found no overall
model agreement on the projected sign or intensity changes of East Pacific and Central Pacific El
Niño events. However, the small number of available CMIP6 models did show increasing proportions
of Central Pacific El Niños. These results have considerable uncertainties and studies that only
include the best performing climate models are needed to gain a better understanding of future trends
in ENSO events.
A typical assumption in engineering is that floods occur randomly over time. This assumption is very
likely invalid as has been shown by McMahon and Kiem (2018) for flood events in south-east
Queensland. They showed that ~80% of historic large floods in this region occurred within sets of 5-
year periods followed by 35-year periods of lower flood occurrence. This cyclic behaviour is at least in
part related to the Interdecadal Pacific Oscillation (IPO: Power et al. 1999), which highlights the
importance of including natural variability in flood risk assessments.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 44
Projected changes
CMIP5 global climate models
(GCM) simulate a consistent
increase in various extreme
precipitation indices over Australia
with varying confidence (see
Figure EP6: CSIRO and Bureau
of Meteorology 2015). These
results are consistent with global
estimates (see Section 5.2) and
show that:
1. Changes in extreme
precipitation are increasing in
all regions independent of
changes in mean
precipitation, even in regions
with strong drying trends
(e.g., south-west Western
Australia);
2. Changes increase in
magnitude for more intense
extreme events and for higher
emission scenarios and are
less evident under RCP2.6;
and
3. Tendencies for these
increases are already
detectable. The confidence
for increases in daily extreme
rainfall should only be
reduced to ‘medium
confidence’ in south-west
Western Australia, where the
strong drying trend could
offset some of the increases
in extremes.
Regional and sub-daily estimates
in extreme precipitation changes
from GCMs should be treated with
care due to the coarse grid
spacing, which does not resolve
the spatial scales that cause
Figure EP6 Changes to extreme rainfall in East Australia (EA), North
Australia (NA), Rangelands (R), and South Australia (SA). Each panel
shows projected change in 2080–99 for annual mean precipitation,
annual maximum 1-day rainfall, and 20-year return level of annual
maximum 1-day rainfall relative to the 1986-2005 average. The
horizontal tick denotes the median and the bar denotes the 10th to 90th
percentiles of the CMIP5 results. Scenarios are shown in grey (natural
variability), blue (RCP4.5) and red (RCP8.5). Source CSIRO and
Bureau of Meteorology (2015).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 45
extreme rainfall events in the real world. Damaging flooding often occurs from severe local storms
that are not resolved by the relatively coarse climate models used in the above studies.
Higher-resolution regional models can help to close this gap. Within the NARCliM project (Evans et al.
2014), several GCMs were dynamically downscaled with regional climate models. Evans et al. (2014)
used a two-way nested approach with a 50km grid-spacing outer domain over Australia and Oceania,
and a 10km grid-spacing nest over south-east Australia. The 10km NARCliM simulations use a
relatively small domain. Therefore, for some parts of this domain, the effects of weather systems
moving in from the outer domain may not be fully captured at the local scale. Bao et al. (2017) used
the 50km NARCliM ensemble to study the scaling between temperature increases and daily
precipitation increases in Australia. Consistent with Evans et al. (2014), they showed a systematic
increase in extreme rainfall over Australia. The scaling rates generally increase for higher extreme
percentiles. The 99th percentile of daily precipitation increases close to ~7% per degree Celsius of
warming while the 99.9th percentile shows higher rates (Figure EP7).
Recent advances in computational resources and atmospheric model development enable regional
climate models simulations in convection-permitting resolutions (≤4km horizontal grid-spacing), which
explicitly resolve issues related to deep convective storms (Prein et al. 2015). These models have
been shown to provide more reliable simulations of sub-daily precipitation extremes and surface-
atmosphere interactions (e.g. coastlines, orography) than those where convection is not explicitly
simulated. Since no convection-permitting climate simulations have been published for Australia (so
far), a summary of relevant convective extreme studies from other areas is presented.
Sub-daily precipitation extremes are likely to intensify at faster rates than daily and multi-day
extremes due to dynamical and thermodynamical changes in convective storms, as recent
observational studies have shown (Kendon et al. 2014, Ban et al. 2015, Prein et al. 2017b, Prein and
Heymsfield 2020). Dowdy (2020) has provided the first look at changes in the distribution of severe
thunderstorms across Australia in a warming climate that serves as a pointer to the changing risk of
flash flooding (see Section 5.5: Bushfire).
Figure EP7 Projected future climate scaling rates for the ensemble mean daily precipitation 99th (a), 99.5th
(b), and 99.9th (c) percentile climate scaling rates (%/°C) from NARCliM between 2060–2079 and 1990–
2009 under the A2 scenario. Source Bao et al. (2017).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 46
Prein et al. (2017b) analysed these kinds of changes for mesoscale convective systems (e.g., squall-
lines, TCs), which are the leading cause of warm-season flooding in North America. They showed an
increase in peak hourly precipitation that is approximately 7% per degree Celsius of warming and an
increase in heavy precipitating storm frequency (more than 90 mm h-1) of at least 400%. The largest
changes occur in storm-total precipitation volume, which can increase by up to 20% per degree
Celsius of warming. This results in an almost doubling of storm-total rainfall volume at the end of the
century under an RCP8.5 scenario.
Wind-driven rain – that is rain that is given a horizontal velocity component by the wind – can be
particularly damaging to buildings due to its entrainment into building facades (Blocken and Carmeliet
2004, Cyclone Testing Station 2018, Henderson et al. 2018, Boughton et al. 2017). While there is a
growing understanding of increases in rainfall extremes currently being experienced, and expected to
continue into coming decades, changes in wind hazards are less certain. Very little research has
been done regarding climate change effects on wind-driven rain. In general, confidence in future
changes in wind hazards depends on the storm type. Much of the wind-driven rain damage in
Australia comes from either TCs, ECLs, frontal systems or severe convective storms.
Wind-driven rain events might therefore intensify due to an increase in TC wind speed. Walsh et al.
(2016b) showed that large-scale frontal system-related events are projected to decrease in northern
and southern Australia and increase along the east coast. Projections for wind-driven rain events
associated with convective storms and summertime ECLs are highly uncertain.
5.2.3 Regional Interpretations for Risk Assessment for Australia
This section only refers to riverine flooding caused by the changes to rainfall regimes.
It is important to note that for most urban developments around Australia the so-called 1 in 100-year
flood event (1% AEP) is used to delineate areas that can be developed against those that cannot, or
at least have significant restrictions on the types of structures allowed. In Australia, the publication
Australian Rainfall and Runoff (ARR) was first published in 1958 and updated in 1987. This release
used historical rainfall records to determine rainfall distributions around Australia. The historical
observations roughly spanned the period from around 1945 to 1985, which is a period approximately
35 -75 years ago. The climate has changed significantly since those decades and is likely to continue
to do so for the next century or more. A new version of ARR was released in 2019
(http://arr.ga.gov.au/). It highlights the fact that most land planning decisions around Australia for
river flood are being based upon analyses of rainfall regimes from the climate of the past, and not for
the climate extremes which the built environment will experience within the lifetime of the structures.
The result is that sub-optimal information is currently being used when making planning decisions for
river flood.
Changes to rainfall regimes are discussed in more detail in the individual sub-sections within this
report dedicated to the phenomena that produce them, such as TCs and ECLs. However, many
extreme rainfall events are produced by other weather systems ranging from cut-off lows, monsoon
lows, hybrid systems, coastal troughs and convergence zones in the trade winds. Antecedent
conditions like clustering of events; hydrological processes (such as response to vegetation,
mitigation measures and changes to watercourse characteristics); water management strategies; and
land use changes, are complex and are not considered in this discussion.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 47
As mentioned above, from a property damage perspective, community flood risk is driven by very rare
events that exceed the typical land planning threshold of 1% AEP. A paper by Dyer et al. (2019),
highlighted that catchments with historically strong land planning controls are more sensitive to
increases in flood intensity or frequency due to the accumulation of properties just above the 1%
AEP. However, there is very little information and research on the extreme rainfall scenarios that drive
floods of this rarity and beyond at catchment scales, despite Australia having a long history of
devastating floods.
The hazard component of financial riverine flood risk models requires numerical estimates of river
flood AEPs. These estimates also need to be linked to related coastal and estuarine storm surge that
can exacerbate near-coastal flooding. These are strongly influenced by sea level rise changes that
incorporate regional variations to the global trends, along with adjustment factors to cater for sea level
variations linked to the naturally occurring climate oscillations that could be in effect at the time of the
storm surge.
For river flooding, the general trend is for an increase in flood risk related to increases in daily and
sub-daily rainfall intensity. The minimum rate of increase is in the order of 7% per degree Celsius of
warming – acknowledging that the rate of increase for smaller catchments could be 15% or more per
degree Celsius of warming if the rainfall is produced by discrete convective systems (Guerreiro et al.
2018). Only a small number of detailed dynamical studies has been conducted on the impact of future
extreme rainfall events on Australian river flooding.
For the larger and less populated Australian river catchments, a 7% increase per degree Celsius of
warming is applied as the minimum likely future catchment-wide rainfall increase. Catchments which
respond to sub-daily rainfall events could well experience significantly higher increases in catchment-
wide rainfall (Wasko et al. 2016, Guerreiro et al. 2018). These catchments include many rivers flowing
through the main urban centres, and most east coast river systems.
For larger rivers, which respond to multi-day rainfall events, the predicted trends in 20-year flood
return periods are available for a few rivers. They are assumed to also apply to rarer floods. The
trends in return periods of floods for the larger river systems have some of the largest uncertainties of
all the climate change-affected severe weather phenomena because the hydrological responses of
the major river systems are affected by numerous factors (Sharma et al. 2018).
In the lower reaches of several east coast river systems, the effects of rising sea levels and storm
surge must also be considered. A recent paper by Dyer et al. (2019) outlined how this approach is
applied to selected east coast river systems.
The key factors relevant to the changing climatology of river flooding in Australia include the following
(noting there are many more factors to consider including mitigation strategies, changing vegetation
types and other demographic factors):
1. Natural variability across Australia has masked trends. However, Wasko et al. (2016) showed
that total rainfall and maximum precipitation intensity are expected to increase with
temperature, regardless of future changes in storm sizes. This will increase flood severity for
the smaller catchments, but the impact is less clear for the larger catchments.
2. Natural climate variability can modulate forced climate change effects on river flooding.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 48
3. Increases in maximum extreme precipitation from hours to days will increase flood risk in the
future. Extreme precipitation increases by ~7% per degree Celsius warming with sub-daily
extremes and rarer events potentially having larger increases.
4. Therefore, small catchments (e.g., urban areas) will likely see stronger increases in flash
flooding. Changes in flood frequency and severity are more uncertain in larger catchments.
5. Future work should focus on coupling high-resolution climate models with hydrologic models
to better understand the hydrologic response to increasing extreme precipitation. Additionally,
more research on changing risks in high-impact flood events (e.g., 1-in-100-year event) is
needed to mitigate societal and financial risks to future flood events
For the short east coast rivers that respond to sub-daily rainfall, all flood return periods are expected
to become more frequent. These events are expected to vary by catchment according to their size
and the meteorological situations that produce the more significant floods. Fowler et al. (2020) point
out that as well as increased flood frequency, the flood volumes and peak flow rates should also
increase, leading to non-linear increases in the damage produced by changes to extreme short-
duration rainfall.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 49
5.3 Damaging Hail
5.3.1 Background
Insurance Council of Australia claims records show hail is the most frequently occurring cause of
major damage across Australia. However, there is low confidence in long-term observed trends in hail
distribution because of data inhomogeneities and inadequacies in monitoring systems (Field et al.
2012). The primary historical record of hail within Australia is the Australian Bureau of Meteorology’s
severe storms archive. Reports in this database are not homogeneous in space and time with limited
quantitative information on hail size and distribution. The information is heavily influenced by the
location and population distribution across the country (Allen and Allen 2016). A more systematic
Section Summary
In the November 2019 edition of this report, it was stated that large and giant hail risks should
increase over central to south-eastern New South Wales, including the Australian Capital
Territory, and the central to eastern parts of Victoria. New, independent research has
strengthened these conclusions, and points to further marked increases in hail risk over the
south-east of Queensland and north-east of New South Wales, which further exacerbates the
multi-peril risks across this region.
Insurance Council of Australia data shows hailstorms are the most frequently occurring damaging
weather phenomena in Australia. However, inhomogeneous historical data have hampered the
identification of trends in the occurrence of large and giant hail events across Australia.
IAG analyses conducted in 2019 reveal crop losses for pea size hail and above. Motor claims
commenced with hail in the 2-3cm range, with vulnerabilities varying with motor vehicle type and
make. Building damage commenced with hail sizes of 4cm and above. Damage surveys indicate
that Australian domestic properties can get cracked tiles and dented metal roofs (Parackal et al.
2014) when hail is approximately 5cm in diameter.
The most rigorous Australian hailstorm climatology and trend analysis to date was conducted by
Soderholm and Warren (2020 – personal communications). Their analysis was based on 20 years
of eastern Australian radar observations. Preliminary results show evidence of a substantial
increase in the frequency of damaging hailstorms across the major urban areas of eastern
Australia, extending from the Sunshine Coast in Queensland down beyond Wollongong in New
South Wales. These studies also confirmed the existence of strong inter-annual variability linked
at least in part to the ENSO (Soderholm et al. 2017).
There are emerging signs, backed-up by insurance claims records, that Melbourne may be
experiencing an increase in damaging hail events. The rarity of large and particularly giant hail for
cities such as Canberra, Perth and Adelaide makes the short available period of radar data
inadequate to identify trends. However, historical insurance claims also identify an increasing
trend of hail-related damage for these locations. Overall, insurance claims records indicate a
southward extension of the primary hail risk regions of Australia.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 50
severe weather monitoring application, called WeatheX, has been implemented by CLEX partners,
including Monash University, the Bureau of Meteorology and other research and industry partners
including IAG. WeatheX is an attempt to, over time, build a more comprehensive database of severe
weather events nationally. Details of the app can be found here:
https://climateextremes.org.au/weathex/.
Observational Studies
In recent years, within Australia, there has been some detailed analyses of volumetric weather radar
data from the major population centres. This unique, approximately 20-year, record has already
identified some key drivers of observed trends. The work of Warren et al. (2020) and Soderholm et al.
(2017) leads the way, with the focus on eastern Australia.
Soderholm et al. (2017) developed an 18-year hail climatology across south-east Queensland as a
part of the Coastal Convective Interactions Experiment (CCIE) (Soderholm et al. 2016), limited to a
100km range around the Marburg weather radar. The study made use of the Maximum Expected Size
of Hail (MESH) algorithm. They found there were three dominant synoptic situations conducive to the
formation of damaging hailstorms for this region, with different spatial and temporal characteristics
associated with each situation. Figure H1 summarises the key findings.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 51
Figure H1 Analysis of hailstorm spatial distribution under different combinations of thunderstorm synoptic type
(TST) (columns) and sea-breeze presence (rows). Averaged mean-sea-level pressure and 500 hPa
temperature for each TST are shown in (a) – (c) and across all hailstorm cases in (d). Sea-breeze day subsets
for each TST are shown in (e) – (g), with all hailstorms on sea-breeze days shown in (h). The spatial
distributions of non-sea-breeze day subsets for each TST are presented in (i) – (k), with all hailstorms on non–
sea-breeze shown in (l). The spatial distributions of hailstorms for each TST on days with and without a sea
breeze are shown in (m) – (o) and the distribution of all hailstorms shown in (p). Locations Brisbane (BNE), Esk
(ESK) and Boonah (BNH) are marked. Location of Marburg radar is shown with a black diamond and range
rings given at 16, 40 and 80 km for (e) – (p) and study region outlined in (a) – (d). Source: Soderholm et al.
(2017).
They also confirmed the existence of a strong relationship between the ENSO and hailstorm
frequency for this region. El Niño phases tended to be associated with a greater number of damaging
hailstorm days, while fewer hailstorms occur in La Niña phases.
Warren et al. (2020) extended this study and expanded it to include the Greater Sydney region, using
the MESH analysis tool. They found damaging hailstorms occurred on average 26 and 32 days per
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 52
year in Brisbane and Sydney, respectively, across the 8-year period of 2009-2015. These results
were based upon a systematic analysis of volumetric radar data, including a thorough data
homogenisation process to overcome known calibration errors of individual radar by using a stable
satellite-based reference. Statistical analysis by Warren et al. (2020) determined that a MESH value
of 32mm provided reasonable skill for discriminating regions with property loss. Preliminary work to
extend this analysis to other capital cities is well underway, although results have not yet been
published (Soderholm, 2020 personal communications).
Hail Related Damage Studies
Within Australia, IAG has undertaken insurance claims-based studies to relate property (including
motor, residential and commercial property) and crop damage, to their causes. Most of these
analyses are not published. Hail sizes of less than 2cm can result in agricultural losses. For example,
large quantities of small hail can cause crop losses, the extent of which depends on the stage in the
crop growth cycle, and the type of crop. Analyses reveal crop losses commence once hail reaches
pea size.
Motor claims started when hail reach the 2-3cm range, with vulnerabilities varying with motor vehicle
type and make. Building damage commenced in the 4cm and above range. Damage surveys indicate
that for approximately 5cm hail, Australian domestic properties can sustain cracked tiles and dented
metal roofs. The precise minimum size hail needed to crack solar photovoltaic panels has not been
quantified. It is known that damage has occurred to these panels in several giant hailstorms events
that affected each of the major capital cities.
Wind and direction of approach also affect hail damage. The James Cook University Cyclone Testing
Station report (Parackal et al. 2014) on the 2014 Brisbane hailstorm states “It was noted that the
winds in the area had a significant influence on the direction of travel of hail and the impact on
building performance. The most obvious evidence of this is that window damage far exceeded roof
damage, suggesting that there was a significant horizontal component in the trajectory of the hail.
Furthermore, windows on the windward side of the buildings (often to the south) were broken while
windows on other sides were not. Even windows that were reasonably well-protected by awnings
were broken, again indicating the effect of wind on hail trajectory. It was also noted that where there
was tile damage from hail, this was often on steeper tiled roofs. Once again, this appears to illustrate
that there was a significant horizontal component in the hail trajectory”.
Once a roof suffers hail damage there may be ongoing water ingress damage for the weeks following
the hailstorm, continuing until the damage is repaired. Occasionally damage from the storm may not
be evident until there is a subsequent heavy rainfall event.
This finding implies that any increases in thunderstorm-related wind gusts will also exacerbate hail
damage. Changes in the approach angles of future climate thunderstorms could expose different
regions and property mix to hail damage. The University of Queensland and the Bureau of
Meteorology are continuing to use wind information from Doppler radar to explicitly model hail fall
trajectories. This work will provide a new technique for quantifying the effects of wind on hailstorm
impact angle (Brook, 2020 personal communication).
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SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 53
Modelling Studies
Simulating hail in climate models is challenging because climate models are not able to resolve the
processes (e.g. strong convective updrafts) that are necessary for hail development.
Several approaches have been developed to derive hail risk estimates that either use hail
observations and claims data (Changnon and Changnon 2000, Xie et al. 2008, Changnon 2009,
Barthel and Neumayer 2012); remote sensing data (Witt et al. 1998, Cecil 2009); algorithms that
relate large-scale environmental conditions to large hail development (Brooks 2009, Allen et al. 2015,
Prein and Holland 2018); or high-resolution numerical models (Mahoney et al. 2012, Brimelow et al.
2017).
Although there is considerable uncertainty, current indicators are that climate change will lead to a
decrease in the frequency of small hail and an increase for large hail (see Figure H2: Mahoney et al.
2012, Brimelow et al. 2017, Dessens et al. 2015), mainly as a result of higher atmospheric melting
levels in warmer climates. Prein and Heymsfield (2020) analysed reanalysis and radiosonde data to
evaluate trends between 1979 and 2010. They found that there were significant trends in the height of
the melting level and the WCL depth across Australia (see Figures EP4 and EP5 in Section 5.2). A
change in melting level will affect the distribution of snow, damaging hail and heavy rainfall. In
general, a higher melting level will lead to decreases in large hail – although not necessarily giant hail
– and less snowfall. Increases in melting level across Australia for the warm season (December to
May) were typically 30-60m/decade, while the increases in the deep tropical areas exceeded
140m/decade. Hail observations from the USA and Australia show that giant (> 50mm in diameter)
damaging hail rarely occurs in
environments with melting level heights
above 4.5/3.8km because of enhanced
melting.
There is consensus that climate change is
leading to a higher potential for extreme
convective storms (Gensini and Mote
2015, Púčik et al. 2017, Rasmussen et al.
2017).
Brimelow et al. (2017) used a cloud model
that explicitly simulates hail embedded in
climate model fields to investigate potential
changes in hail risk over North America
(Figure H2). They showed that the hail
damage potential is increasing over
southern regions in March, April and May
and over northern regions (north of 50°N)
and the Rocky Mountains in June, July and
August due to increasing buoyancy in the
future climate.
In the subtropical eastern and south-
eastern regions of the USA, in contrast,
they showed a substantial decrease in hail
Figure H2 Frequency of spring hail over Colorado and
the High Plains. Green bars show the relative frequency
of different hail sizes in the present climate (1979-2000)
and red bars show the distribution in the future climate
(2041-2070) under the A2 business-as-usual scenario.
Source: Brimelow et al. (2017).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 54
damage potential due to the increase in melting of hailstones. Recent advances in the explicit
modelling of hailstone microphysics by Kumjian and Lombardo (2020) has confirmed the importance
of weak horizontal flow and updraft geometry within the hail growth layer for large hail formation. This
dynamical understanding is expected to lead to further improvements in climate model simulations of
hail.
5.3.2 Changes in Australia
Observed changes
It should be noted that in Australia “large hail” is defined as hail sizes from 2.0cm through to 4.9cm.
“Giant hail” covers hail sizes of 5.0cm and greater. IAG’s claims experience shows that most damage
to property and motor vehicles starts to occur once hail reaches 2.0cm in diameter, and the damage
increases significantly as the size reaches then exceeds 5.0cm. Cyclone Testing Station damage
surveys show hail of ~2.0cm damages skylights, air-conditioning units, and windows (mainly in old
houses). Broken windows and skylights lead to significant water damage from the wind-driven rain.
When hail reaches 4.0+cm, it starts to damage roof tiles and metal cladding. The IAG claims
experience in Australia and New Zealand shows that large quantities of small hail – pea size and
greater – can also produce significant damage to crops, and domestic and commercial buildings, the
latter mainly through the blocking of gutters which leads to increased water ingress and, in extreme
cases, roof collapse. Hail size, quantities and changes to storm tracks are therefore important
considerations in any climate change risk assessments. It is necessary to consider potential changes
in both large and giant hail, as well as trends in the frequency, duration and tracks of supercells that
produce the greatest damage. Because Australia’s main urban areas are skewed along the coast,
trends that increase hail risks in near-coastal regions exacerbate the damage potential of the
hailstorms.
Observed changes in large hail in Australia are strongly influenced by changes in observational
practices and an increase in population density. Figure H3 shows the Bureau of Meteorology annual
Figure H3 Annual frequency of large hail (diameter larger than 2.5cm) from the Bureau of Meteorology
Severe Storm Archive dataset (source Prein and Holland 2018).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 55
hail reports from 1979 to 2015; the general increasing trend of hail observations displayed is more
likely to be caused by changes in the observation and storm spotter networks rather than an increase
in underlying hail occurrence.
Soderholm and Brook (personal communication, May 2020) have applied the calibration techniques
from Warren et al. (2020) to the entire Australian radar archive. Using this record, they are
undertaking comprehensive cell tracking for locations where there is sufficient available data to detect
trends. For a couple of radars, the record length is around 20 years, albeit with some missing data
periods. They have produced annual time series of hailstorm occurrence (using MESH thresholds >
30mm and 35dbz areas > 30km2). The analysis is ongoing, and allowances need to be made for
periods of missing data. Preliminary results show a marked increase in hailstorm trends across a
large portion of eastern Australia that requires further investigation.
For most central east coast radars (Gympie, Wollongong, Marburg, Terrey Hills, Newcastle, Mt
Stapylton) there has been a significant increase in the number of hailstorm cell hours and hail days.
This signal is present across a diverse number of sites and radar hardware, suggesting that it is a
robust trend for the region.
The results for the more southern cities of Adelaide, Hobart and Perth are less clear. Trends are not
yet identifiable in the volumetric radar data, which only dates back to 2010 for Perth’s Serpentine
radar (the original radar dates back to 1997). However, the lower frequency and significant inter-
annual variability of hailstorms mean these locations require longer periods of record to identify
trends. The Melbourne records hint at an increasing trend in event days, although further work is
required before this can be considered a real trend. IAG’s claims data, combined with the Bureau of
Meteorology’s Severe Weather database and old media reports, highlights that major damaging hail
events for Perth, Adelaide and Melbourne have been increasing in the most recent decade.
When looking at the areas with the biggest impacts, there are no historical analogues prior to these
major events, and these areas have been well-populated for the past century or more. For Perth, the
March 2010 hailstorm set a record for giant hail within the greater Perth region. Although newspaper
records are available for the past 140 years, unfortunately, the high-quality radar record only dates to
this event. For Adelaide, the November 2016 large hail event set a record for hail size in the greater
Adelaide area. In Melbourne, the largest hail event on record occurred in March 2010 with additional
giant hail events occurring on Christmas Day 2011, December 2017 and January 2020. Finally,
Canberra and the Australian Capital Territory experienced the largest and most damaging hailstorm
on record in January 2020. Southern Sydney also experienced giant hail from this event, making this
the first recorded event to affect three Australian capital cities. All these events produced damage that
surpassed the damage from previous large hail-producing thunderstorms by very large margins.
Sydney and Brisbane have experienced multiple large-to-giant hail events throughout their history, so
the trends observed by Soderholm (personal communication, 2020) and Warren (2019) are
particularly concerning as these cities have experienced several billion-dollar events in the past.
In an outbreak without precedent in its long historical record, Sydney has recently experienced five
major hailstorm events: an event with large volumes of small hail on Anzac Day (25 April) 2015; a
large hail event through the northern suburbs in February 2017; a large-to-giant hail event centred on
Campbelltown on 15 December 2018; a multi-cell giant hail event across large parts of Sydney on 20
December 2018; and a giant hail event across southern suburbs in January 2020. However, the April
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
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1999 giant hailstorm across eastern Sydney remains the costliest Australian hail event on record and
likely produced the largest reported hail size in the Greater Sydney region.
In New Zealand, the South Island town of Timaru experienced New Zealand’s most damaging ever
hailstorm by a large margin in November 2019.
Allen and Karoly (2014) showed that ENSO has a significant impact on the distribution and frequency
of severe thunderstorm environments in Australia, and this was confirmed by Soderholm et al. (2017)
for south-east Queensland. This also agrees with the assessments of Prein (2019) who showed a
significant increase in large hail risk in south-eastern and south-western Australia during El Niño
events. However, there remains uncertainty in the details of how ENSO modulates severe convection,
including hail across Australia.
Projected changes
Little research has been done to investigate potential future changes in Australian hail and severe
convective storm risk. However, the techniques identified in Prein et al. (2017b) and Warren et al.
(2020) could be applied to climate models to use hail environments as a way to track future changes
in the frequency of hail events. It should be noted that insurance records highlight the marked
dominance of warm-season hail events over cool-season events for major damage-producing storms
across Australia.
Allen et al. (2014a, b) assessed changes in hail environments in two coarse-resolution GCM
simulations. They showed that severe thunderstorm environments significantly increased in both the
models for northern and eastern Australia by the end of the century under an RCP8.5 scenario. This
is in response to an increase in the convective available potential energy (CAPE5) from higher
moisture and warmer SSTs in the proximity of hail environments. An increase in CAPE is a likely
consequence of climate change (e.g. Romps et al. 2014, Gensini and Mote 2015, Prein et al. 2017b).
However, other environmental changes, such as changes in wind shear and freezing/melting level
heights, are also essential for future hail risk determinations, as are the effects of topographical and
meteorological triggers. A more systematic analysis of hail environments than in Allen et al. (2014a,
b), with multiple GCMs at higher spatial and temporal resolution, is necessary to assess future
changes in hail risk and uncertainties. Advice from the Bureau of Meteorology indicates they now
have environmental diagnostics relevant for hail from 12 CMIP5 GCMs, one CMIP6 GCM and BARPA
(downscaled from CMIP5 at ~12 km resolution). This includes wind shear, melting level height and
SHIP (Significant Hail Parameter) with the potential to add other diagnostics. In time, trends may be
identified with more confidence.
To estimate changes in hail risk on local scales, high-resolution climate models are necessary to
resolve land-sea contrasts and topographic gradients that are important for hail development
(Soderholm et al. 2017). Leslie et al. (2008) used a 1km climate model over the Greater Sydney
Basin to assess changes in hail risk between 2001 and 2050 for an RCP4.5 scenario. They showed
significant increases in the key characteristics of severe hailstorms over this region.
5 CAPE is the amount of energy a parcel of air would have if lifted a certain distance vertically through the atmosphere. CAPE is effectively the positive
buoyancy of an air parcel and is an indicator of atmospheric instability, which is used as an indication of severe weather potential.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
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5.3.3 Regional Interpretations for Risk Assessment for Australia
This section focuses on the large and giant hail components of severe thunderstorms as these are
the dominant drivers of severe thunderstorm risk in Australia. It must be noted that defining hail risks
is far more complex than simply tracking changes in hail size.
For example, the physical storm footprint and associated damage are markedly different between a
short-lived pulse thunderstorm and a long-lived supercell thunderstorm, even though they may both
produce the same hail size. Moreover, other important risk drivers such as severe wind squalls,
intense rainfall and related water ingress and flash flooding also need to be considered.
Projected changes in damaging hail over Australia, defined as hail of 2.0cm or greater, are highly
uncertain due to a lack of research and deficiencies in validation data, as discussed. Climate change
assessments in this report are therefore primarily based on results from other regions, particularly the
USA, and large-scale drivers across Australia that are related to damaging hail occurrence.
The factors concerning the changing climatology of damaging hail in Australia include:
1. The future climate trend projections were determined by interpreting a range of disparate data,
including insurance claims data combined with meteorological reasoning.
2. Emerging research using volumetric radar data spanning up to 20 years by Soderholm and
Brook (personal communication, 2020) suggests a significant increase in damaging hail
events for a region extending from the Sunshine Coast in Queensland down beyond
Wollongong in New South wales. There are tentative signs that Melbourne may be
experiencing an increase in damaging hail events with insurance claims records pointing to
this increase being real. The rarity of large and particularly giant hail for cities such as Perth
and Adelaide makes the short available period of radar data inadequate to identify trends.
Further work is required to assess the long-term radar datasets for the Perth and Adelaide
regions.
3. Studies also confirmed the existence of substantial inter-annual variability linked at least in
part to the ENSO (Soderholm et al. 2017, Soderholm and Brook personal communication
2020).
4. Incomplete observational hail data were supplemented by extracting trends in hail
environments from the ERA-Interim reanalysis dataset (Prein and Holland 2018). The ratios
between observed large and giant hail for Bureau of Meteorology forecast districts – where
there are sufficient observations – were also considered. This analysis was provided by Prein
(2019) based upon his analysis of the Australian Severe Thunderstorm database.
5. The IAG-sponsored Greater Sydney hail modelling work of Leslie et al. (2008) was applied to
the Greater Sydney and surrounding regions out to the year 2050. It serves as a guide for the
+2°C hail risk estimates for this region. Consideration is also given to the work of Brimelow et
al. (2017) for North America which showed a predicted trend to larger hail sizes in continental
and mid-latitude regions and decreases in subtropical environments under the RCP8.5 climate
change scenario due to the increasing heights of the melting levels in these regions.
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SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 58
6. IAG’s increasing hail claims experience for the combined Perth, Adelaide, Canberra and
Melbourne areas is used as tentative evidence of the likely southern shift in the areas of
greatest hail risk. It is noted that much longer lengths of record are needed to derive
statistically significant results. It is also important to note that by the time there is sufficient
length of claims data to demonstrate statistical significance, the changes will have been in
effect for a decade or more.
The main trend imposed on the current Australian climatology of damaging hail is to increase the hail
risk for the +2°C scenario for the south-east Queensland and coastal New South Wales regions and
shift the hail risk regions southwards down the eastern coast and ranges, particularly for the +3°C
scenario. The impacts would also lead to increased damage to crops across this region. These
changes are primarily based on:
• The preliminary trends observed in the volumetric radar dataset by Soderholm and Brook
(2020) while acknowledging the limitations in this dataset.
• The predicted southward shift of the subtropical jet stream.
• The general increases expected in atmospheric instability (CAPE) with increased heating and
stronger updrafts expected in severe thunderstorms in a warmer environment.
• Changes in thunderstorm micro-physics should reduce large hail in tropical and near-tropical
areas with lesser effects on damaging hail southwards.
• This effect should progressively shift the highest hail risk regions southwards in the +3°C and
higher warming scenarios.
• Changes in thunderstorm triggers in a warming climate linked to the southward shift of the
subtropical ridge axis and deepening of the eastern Australian inland trough.
• Observed tentative trends in large and giant hail using IAG’s claims experience across
southern regions, while acknowledging the limitations in this data.
Figure H4 summarises the regional changes to large and giant hailstorm frequencies across Australia
between the base climatology and the approximately +3°C climate change scenario.
Based on large-scale drivers, the largest projected changes to the current climate hail climatology are
likely to be concentrated over south-eastern Queensland, north-eastern, eastern and south-eastern
New South Wales, including the Australian Capital Territory, and eastern Victoria. The regions that
dominate the relative rates of increase in the future are those with historically fewer damaging
hailstorms, i.e., Melbourne; the mountainous parts of eastern Victoria; the southern to central ranges
and coastal plains of New South Wales; and the Australian Capital Territory.
These trend estimates are consistent with the predicted deepening of the east coast trough;
southward shift of the north-east New South Wales to southern Queensland dry line; and increased
coastal moisture availability from the observed rapidly warming East Australian Current. The
southward shift of the subtropical ridge axis could also affect the location, frequency and intensities of
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 59
the severe thunderstorm-triggering coastally-trapped southerly changes that frequent the New South
Wales and south-east Queensland coasts.
Increases are also applied to the warm season hail events that affect agricultural and west coastal
areas of south-west Western Australia. However, the starting point is from an inadequate number of
historical events, so trends cannot be identified with confidence. Here the west coast trough is
expected to deepen and lead to a southward shift of the location of the coastal crossing point when
the trough is at its deepest. This is typically when it triggers severe thunderstorms, due to increasing
low level shear, coupled with rapidly-rising maximum temperatures and increased moisture availability
from the warming Leeuwin Current off the west coast of Western Australia, and the warmer seas off
the Pilbara and Gascoyne coasts. An expected higher hot season melting level in this region could
partially offset other factors. However, this is only expected to reduce the occurrence of smaller size
hail. The impact on damaging large and giant hail is less clear. There are tentative indications that the
steering flows of severe thunderstorms are becoming more meridional during the warmer seasons.
Studies available for other parts of the world indicate these risks are most likely to increase. These
increases might be partially offset by reduced hail risks for large parts of tropical and central Australia,
including most of Queensland where increased daytime heating and CAPE could be offset by the
rising atmospheric melting levels, based on research from the USA (Brimelow et al. 2017).
Figure H4 Schematic graphs showing the relative change in large and giant hailstorm frequency between the
1950s and the +3°C climate change scenario.
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5.4 East Coast Lows
5.4.1 Background
ECLs are weather systems that periodically bring heavy rain and/or high winds to eastern Australia,
with the highest impacts near the coast. There are several classification methods used by
researchers (Dowdy et al. 2019), which leads to substantial differences in their climatology. They
typically affect areas from Fraser Island to eastern Victoria and Tasmania. Other nearby areas may
experience similar systems.
ECLs are noted for their extreme characteristics and high impacts. These characteristics have been
described in several studies (e.g., Holland et al. 1987, Hopkins and Holland 1997, Mills et al. 2010,
Dowdy et al. 2013a, Pepler et al. 2014, Louis et al. 2016, Dowdy et al. 2019, Cavicchia et al. 2020).
These include:
• Heavy rains on the poleward side, resulting from moist tropical air being advected around the
low and into the coastal region. These rains may extend for some distance down the coast,
but the most damaging extreme rains are often constrained to a narrow rainband (~100km
across) and are marked by a sharp transition to fine conditions to the north of the low centre.
• Damaging winds that may exceed TC force and are typically located in a narrow (usually
<100km) zone poleward and westward of the centre. The Sygna ECL produced wind gusts up
Section Summary
ECLs are weather systems that periodically bring heavy rain and/or high winds to eastern Australia. The most significant impacts occur near the coast due to topographical enhancement of rainfall that can last for 24 hours or more. There are several disparate definitions as to what constitutes an ECL. Therefore, when drawing conclusions from any particular study, the nature of the lows included need to be considered. Their impact range is typically from Fraser Island to eastern Victoria and Tasmania.
Observational and modelling studies point to a decline in the numbers of winter ECLs. There is less certainty on the trends of the subset of ECLs that produce the most damage - namely the warm cored or hybrid ECLs that have intense mesoscale vortices near the coast and produce intense lines of extreme rainfall producing thunderstorms. They may also produce extreme winds and damaging high energy wave trains from directions different to those experienced in the more commonly occurring types of lows.
Insurance claims data highlights a marked increase in the frequency of the most damaging ECL
events during the most recent decade. Four of the six most costly ECLs observed over the past 45
years occurred in the most recent decade. What may have been the most damaging ECL during
the past 220 years occurred in 1867, and there are no future climate studies available to
determine the most likely trends in these rare but most extreme events.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 61
to 170 km/h at Nobbys Signal Station, Newcastle, equivalent to that experienced in a Category
3 TC.
• Localised ocean currents and waves may cause considerable damage to coastal foreshores,
including structures. The direction of approach of the highest energy waves is a key
determinant on the degree of coastal erosion and inundation, as demonstrated by the severe
coastal erosion event at Wamberal in July 2020 associated with a physically very large and
intense central to northern Tasman Sea low.
• Storm surge is rarely much over 1.0m, as the primary damaging wind direction is along the
coast – the exception may be from surges produced by a small, intense low right on the coast
when wind direction varies from the more common directions.
• ECLs have a wide range of sizes and lifetimes, from small, intense storms that last 10-15
hours (e.g., the Sygna storm, Bridgeman 1986) to large, long-lived systems (e.g., the Pasha
Bulker ECL of June 2007, Mills et al. 2010, and Sydney ECL of April 2015) that may affect the
east coast for days.
• They are often accompanied by rapid intensification, some of which satisfies the ‘bomb’
criteria of Sanders and Guyakum (1980). There is radar evidence that the most damaging
ECLs have produced mesoscale cores (see Figure EC1) similar to the eye of TCs that have
severely affected coastal communities (Pasha Bulker ECL 2007, April 2015 ECL).
Figure EC1 Weather radar imagery from the Williamtown / Lemon Tree Passage radars showing the mesoscale
cores of the Pasha Bulker ECL June 2007 (left) and April 2015 ECL (right). Source: Mills et al. (2010), Bureau of
Meteorology.
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SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 62
The conditions associated with the development of intense ECLs may include (Figure EC2):
• A characteristic cut-off low and/or split jet configuration (e.g., Holland et al. 1987, Dowdy et al.
2013a, 2019).
• The presence of a strong anticyclone or ridge on the poleward side, with the ECL cradled in
an Easterly Dip being one of the more common configurations (e.g., Holland et al. 1987).
• Development of intense low centres over an area of strong SST gradients associated with
eddies along the East-Australian Current (typically >4°C in 50km) (e.g., Hopkins and Holland
1997, McInnes et al. 1992, Buckley and Leslie 2000, Chambers et al. 2014, 2016).
• Pepler and Dowdy (2020) show that the vertical structure of ECLs is also important when
assessing their impacts. Deeper ECLs are more likely to produce extremely heavy rainfall
during their developmental phase. ECLs with only marked surface features are more likely to
be associated with damaging winds and heavy rainfall.
5.4.2 Climatology
Three known observational databases have been developed, and two of these are still available
(Speer et al. 2009, Pepler and Coutts-Smith 2013). However, a systematic study of these systems is
hampered by the variety of definitions employed.
The Bureau of Meteorology defines ECLs as intense lows off and near the coast
(http://www.bom.gov.au/New South
Wales/sevwx/facts/ecl.shtml). More objective
definitions include the following:
• Holland et al. (1987) introduced three
types of lows based on their basic
characteristics and development
mechanisms;
• Hopkins and Holland (1997)
introduced a fourth type of low, then
focused on Type 2 ECLs, which they
defined based on their rainfall and
wind characteristics;
• Speer et al. (2009) defined six types
of Maritime lows based mainly on their
surface characteristics (these included
systems that would not typically be
considered an ECL); and
• Cavicchia et al. (2020) applied a
characterisation scheme based on
Figure EC2 Schematic of the environmental flow
around one type of ECL: Solid lines indicate the
surface pressure pattern; darker (lighter) shading
indicates convective (stratiform) cloud; the yellow
arrow indicates subsiding dry air flow; and the blue
arrows indicate rising, moist tropical air. Modified
from Holland et al. (1987).
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 63
dynamical structures. They applied three classifications to climate models to allow for a more
systematic analysis – cold-cored, warm-cored and warm-cored hybrid cyclones.
Others have developed automated ECL identification methods based on various surface pressure
characteristics (Browning and Goodwin 2013, 2016, Dowdy et al. 2011, Murray and Simmonds 1991).
Dowdy et al. (2013a, 2013b) defined ECLs empirically based on upper-level characteristics known to
be associated with their development.
Pepler et al. (2015) compared some of these automated systems and used three such systems in
considering potential future changes. All of these latter approaches are not capable of identifying the
small, intense mesoscale structures within the broader ECLs that have historically produced the
greatest damage, despite their small size (Figure EC2).
Dowdy et al. (2019) provides an overview of the range of classification approaches that are, or have
been, in use and used this to produce a generalised definition of ECLs and Intense ECLs, while
noting a range of subtypes can be useful for various specific purposes. The definition is as follows:
ECLs are cyclones near south-eastern Australia that can be caused by both mid-latitude and tropical
influences over a range of levels in the atmosphere; Intense ECLs have at least one major hazard
associated with their occurrence, including extreme winds, waves, rain or flooding.
The variety of definitions is reflected in assessments of the impacts of such storms. While there is no
doubt about systems with major impacts such as the 1974 Sygna Storm (Bridgeman 1986) or the
2007 Pasha Bulker Storm (Mills et al. 2010), different studies have attributed a wide range of
characteristics to ECLs based on measures of damage produced (Hopkins and Holland 1997, Speer
et al. 2009, Callaghan and Power 2014). Key points to note include:
• Depending on the method used, the estimated number of systems per year can vary from 2.5
to 22. The lower numbers of ECLs generally relate to those ECLs that cause significant
damage. The larger numbers refer to a wider range of low types, many of which occur far
enough off the east coast of Australia to produce limited or no damage over land.
• The proportion of east coast floods or heavy rains caused by ECLs has been assessed to vary
from 16% to 57%.
• Some studies include transitioning TCs as ECLs; others have them as separate systems.
Given this level of ambiguity, the techniques developed by Cavicchia et al. (2020) and Pepler and
Dowdy (2020) are welcome as these are consistent approaches applicable to both reanalyses and
climate change modelling studies. A useful next step would be to evaluate their over-land impacts to
enable better assessment of future trends in risks to near coastal communities.
Despite the concerns expressed above, some useful climatological information is available.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 64
Seasonal occurrence
ECLs (Figure EC3, left) exhibit a maximum occurrence in winter (Hopkins and Holland 1997,
Callaghan and Power 2014) and this is also reflected by a secondary peak in deaths from freshwater
flooding (Figure EC3, right). This overall seasonal variation may be regionally- and system-
dependent. Hopkins and Holland (1997) found the maximum occurred in summer in a small region
along the east coast of New South Wales. The maximum from tropical transition also occurs in
summer (Speer et al. 2009, Callaghan and Power 2014).
Interannual and interdecadal variation
There is good evidence for a close association
between ECLs and related flooding and
freshwater drownings, with the ENSO cycle
(Figure EC4, Chiew et al. 1998, Power and
Callaghan 2016, Browning and Goodwin 2016).
Micevski et al. (2006) and Power and
Callaghan (2016) also found a longer period
fluctuation in phase with the IPO, which they
concluded that this resulted in long-period
variations in decadal occurrences of 7 to 26
floods, 2 to 15 ECLs and 3 to 114 deaths.
Figure EC3 Seasonal ECL occurrence variation. Left panel: Monthly occurrence of ECLs, TIs (Tropical
Interaction – essentially transitioning tropical lows or cyclones) and Major Floods (the sum of the previous
two). Right panel: bimodal peak in deaths associated with major freshwater flooding events. Modified
from Callaghan and Power (2014).
Figure EC4 Increased occurrence of coastal floods,
east coast lows, Tropical Interactions and related
deaths during El Niño and La Niña years. Source:
Power and Callaghan (2016).
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SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 65
5.4.3 Changes in Australia
Observed changes
Hopkins and Holland (1997) found a significant increase in the number of ECLs between 1958 and
1992. This increase is most likely due to natural fluctuation in frequency.
This trend was also not reproduced in the modelling study by Browning and Goodwin (2016). Hopkins
and Holland (1997) also found no trend in general heavy rain occurrences and a decrease in the
frequency of extreme convective rain events.
By comparison, Powers and Callaghan (2016) found a significant (50%) increase in the frequency of
major floods since 1860 arising from ECLs (Figure EC5). Some of this increase will be due to
increasing populations and improved observing systems. Curiously, a closer examination of the
changes indicates that rather than a linear trend, there was a marked shift upwards around 1950
followed by nearly constant, or perhaps declining, frequency. This agrees with Franks (2002), who
found a notable climatic change from low to high flood frequency around 1945.
Pepler et al. (2016) found a small decline in the frequency of ECLs using the Twentieth Century
Reanalysis. Ji et al. (2017) used three different tracking algorithms and found that the decline mainly
occurred in winter with an increase in early spring.
It is important to note that changes in overall frequencies may not correspond well to the changes in
the major hazards they pose. The extremely damaging ECLs (those that have the potential to
produce a billion dollars or more of damage) tend to occur on decadal to multi-decadal time scales
(Sygna ECL 1974, Pasha Bulker ECL 2007, April 2015 Newcastle ECL). Hence the historical record
is insufficient to identify trends in these rarest events.
Figure EC5 Annual frequency of ECLs (black) and Tropical Interactions (grey) from 1860. Modified
from Power and Callaghan (2016).
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SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 66
Guerreiro et al. (2018) found that the rate of increase in intense rainfall with durations of an hour have
been observed to be two to three times the expected rate of increase using Clausius-Clapeyron
scaling (which is based only on the increased water-holding capacity of air with increased
temperature). These findings were based on a study of observed extreme hourly rainfall changes
between 1966-1989 and 1990-2013. The projected increase in rainfall rates at hourly timescales are
in the order of 15% per degree Celsius of climate warming – more than double the 7% increase
expected for wider-area rainfall, spanning a day or more. So even if the total number of ECLs
declines over time, those that do occur may be expected to have increasing potential to produce
greater flash flooding, fast response river and stream flooding, and wind-water ingress damage.
Projected changes
Future variations associated with anthropogenic climate change have been assessed by Dowdy et al.
(2013b, 2019), Pepler et al. (2016) and most recently by Cavicchia et al. (2020). The consensus of
the available studies is for a significant decrease in the frequency of ECLs during the 21st century.
However, these assessments show the declines are most pronounced for ECLs that occur during the
cooler months of May to October.
Historically the greatest
observed damage to
Australian property and loss
of life has been associated
with the less common
warm-cored or hybrid ECLs.
The strongest observed
winds tend to occur with
warm-cored ECLs, followed
by hybrid ECLs. Warm-
cored ECLs also have a
strong tendency to produce
the heaviest rainfall.
Cavicchia et al. (2020)
separate out trends in the
cold-cored, warm-cored and
hybrid-cored ECLs using a
suite of 12 down-scaled
climate models under the
IPCC A2 scenario and
compared the period 1990-
2009 with a future climate
period 2060-2079. Their
research findings predict a
decline in both warm-cored
and cold-cored ECLs, with
the largest decline in the
cooler months. Hybrid
Figure EC6 Box plots of relative changes of ECLs in the region 25oS to
40oS, 150oE to 160oE for a 12-member climate model ensemble
showing differences between the period 1990-2009 and 2060-2079 for
an A2 scenario for the whole year (left), cool season (May-October –
centre) and warm season (November-April – right). The boxes show the
inter-quartile range, the solid line the ensemble median, and whiskers
the most extreme data points. Source: Cavicchia et al. (2020).
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cyclones showed a tentative increase in the warmer months, although also declining in the cooler
months (see Figure EC6).
The geographical trends in future climate ECLs were found to be inhomogeneous across the analysis
domain. The main declines were further into the Tasman Sea with onshore ECLs – those forming
over the rapidly-warming East Australian Current – showing evidence of some increasing trends,
mostly through the warm season (Figure EC7), noting there remain substantial climate model
uncertainties. It is the mesoscale onshore features of ECLs that have been observed to produce the
greatest damage through heavier, short-duration rainfall and stronger wind gusts. The more synoptic-
scale characteristics off the coast tend to be associated with higher storm surges, wave impacts and
coastal erosion. Therefore, future climate projections need to consider both onshore and offshore
structures when assessing changing impacts under a warmer climate.
Although overall numbers of ECLs across the western half of the Tasman Sea appear most likely to
decline in a warming climate, the more damaging aspects of ECLS may not decline. Model
predictions show increasing wind speeds for warm-cored and hybrid ECLs, along with increasing
rainfall, meaning the magnitude of their impacts are more likely-than-not to increase (Dowdy et al.
2019). To date, model predictions of changes to maximum intensity have been indeterminate.
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Figure EC7 Relative changes in the ECL track densities between the historical (1990-2009) and future (2060-
2079) climate simulations for an A2 scenario, for the three classes of ECLs for the cool and warm seasons.
Stars indicate where 75% or more of the model members agree on the sign of the change. Source: Cavicchia et
al. (2020).
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Rising sea levels are likely to exacerbate coastal and estuarine flooding and erosion associated with
ECL events significantly. Further research focusing upon the more extreme events and their impacts
is required to clarify more accurately what these future impacts are likely to be and their geographical
variations along the coast and ranges.
5.4.4 Regional Interpretations for Risk Assessment for Australia
Risk assessment models for ECLs needs to cover all wind, rain and oceanic-related damage drivers
and rely on consistent definitions for each type, and climatology databases as described earlier. The
classification scheme used by Cavicchia et al. (2020) offers a more structured approach than those of
earlier schemes and highlights inhomogeneities across the Tasman Sea. Future analyses will need to
be undertaken at resolutions high enough to resolve the most damaging elements of ECLs,
particularly the smaller subset with intense mesoscale structures close to the coast.
The estimated changes to ECLs for risk assessment purposes need to be based solely on those
types known to produce significant damage and/or river and flash flooding. Insurance claims from the
Insurance Council of Australia and IAG’s claims history show a marked increase in damage from
catastrophic ECL events – those that have produced insured losses of $250 million or more
(normalised to 2017 dollars). The near-shore mesoscale structures of these ECLs were critical in
causing the associated damage. These most destructive ECLs are listed in Table EC1. Historically
the most destructive type of ECLs has occurred with frequencies rarer than once per decade. In the
most recent decade, there have been four of these events. Until climate models can resolve the near-
coastal damaging mesoscale structures of ECLs, extreme caution needs to be applied to risk
modelling based on trends in all ECLs across a much broader region out to 160oE.
Table EC1 ECL events that have produced insured losses of $250 million or more (normalised to 2017 dollars)
based on Insurance Council of Australia claims data, supplemented by IAG claims data scaled up in
accordance with IAG’s market share.
Date Approximate Normalised
(2017 dollars) Insured Loss
May 1974 ~$1,000 million
Feb 1978 $269 million
June 2007 $2,200 million
April 2015 $1,060 million
April-May 2015 $250 million
June 2016 $422 million
February 2020 ~$900 million
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The more common, but predominantly offshore, types of ECLs are of less interest as they result in
little or no damage. Trends in these non-damaging ECLs can mask the more important but harder to
identify trends in the rarer and very damaging ECLs.
The ECLs of greatest interest tend to be most closely aligned to those described in Holland et al.
(1987) and Mills et al. (2010). Trends in “bomb” ECLs, along the lines of Sanders and Guyakum
(1980), are particularly relevant.
It is noted that none of the future-climate modelling studies has been completed at a high enough
resolution to resolve the intense small-scale secondary cores within the larger ECLs – i.e., the
structures that typically produce major damage, as observed in the Pasha Bulker ECL in 2007 and
the April 2015 Newcastle ECL. The modelled changes in the intensity and duration of their associated
rainfall and their projected future increases are also not in a form that is usable for quantifying trends
in risks.
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5.5 Bushfire
5.5.1 Background
Bushfire risk to property is determined by a complex number of biophysical determinants, including
fuel quantity, fuel moisture content, weather conditions and an ignition source. Local topographic
influences are also very important, although secondary to the prevailing fire weather conditions in the
event of an extreme bushfire. The influence of people on bushfire risk is many-fold, ranging from
being one of the sources of ignition, through to fuel management, prescribed burning programs, and
other vegetation management or agricultural practice changes. Other important factors are
community education and preparedness activities, active fire suppression activities during bushfires,
and advance bushfire risk management techniques using tools such as land planning, building codes
and retrofitting/self-contained sprinkler installations.
Section Summary
Bushfire risk is different to other weather-related natural disasters because it relies on several
biophysical determinants which include fuel quantity, fuel moisture content, weather conditions
and an ignition source. Humans influence bushfire risks extensively through fuel management,
active and passive suppression activities and a range of built environment strategies. Therefore,
real trends in bushfire risk in a warming climate extend well beyond meteorological trends.
Extensive historical building loss data indicates the most extreme loss events for properties occur
when the FFDI reaches or exceeds values of 75 (Extreme FFDI Category). These property losses
coincide with FFDIs well in excess of the 99th percentile for those locations. An IAG study looking
at the ratios between the most extreme fire weather conditions – the 99th percentile FFDI – for the
1960s compared to the 2010-2019 decade found the largest increases across eastern and south-
eastern Australia with a very large increase along the New South Wales south coast.
The prolonged extreme fire weather across southern and eastern Australia in spring to summer
2019-2020 was unique in both the extent and persistence of extreme fire weather conditions.
Many locations with individual FFDI values exceeding 100 (Catastrophic FFDI). There are signs
that the interval between the most devastating fires in Australia is shortening, noting that
this does not mean that every year will have catastrophic bushfires. A 2019 National
Environmental Science Programme study using an RCP8.5 scenario and 12 downscaled regional
climate model runs (NARCLiM) showed significant increases in FFDI over 25 (Very High) for
virtually all of Australia for 2060-2079. Another NARCLiM study incorporating upper-level
instability through an index called C-Haines found there were statistically significant trends in the
mean number of days that C-Haines and FFDI were >=8 and >=25, respectively for both summer
and spring. However, the largest increases were during spring.
The increasing length of the fire season could reduce or shift the window of opportunity for
fuel-reduction burning to winter or shorter periods in spring. Increased fire seasons will also
adversely affect shared resources between Australia and the USA.
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The Country Fire Authority (CFA) and
Department of Sustainability and
Environment (DSE) conducted a study
into the sources of Victorian fire ignition
types. The study included over 23,000
fires that occurred between 1997 and
2009. They found 35% were caused by
arson, 19% were escaped fires, 5%
were accidental ignitions, 5% were
lightning ignitions, 5% were started by
machinery and the remainder (~30%)
had unknown causes (Penman et al.
2014a). However, despite being one of
many sources of bushfire ignition, a study by Dowdy and Mills (2012) showed that lightning accounted
for 90% of the total area burnt by fires. They attributed this to the fact that lightning-induced bushfires
tended to occur more evenly across the landscape in native vegetation rather than being close to
roads and urban areas where more rapid-fire containment activities are possible. This makes lightning
a very important contributor to bushfire risk in the Australian landscape. Further research by Clarke et
al. (2019), investigating anthropogenic and lightning-caused wildfire in south-eastern Australia, found
that fire weather conditions are highly correlated with the likelihood of fire ignition. This is particularly
true for lightning (57%) and power transmission line ignitions (55%), while the built environment tends
to be the largest driver for human-related ignitions.
Climate change can either directly or indirectly influence many of these factors in complex and
interacting ways. These factors, and strategies to address them, are being studied widely, with new
research appearing each year. Due to the complexity of bushfire sources, the main focus of this
section will be the weather and climate-related components of bushfire risk, particularly the most
severe end of the spectrum as this is where most of the property loss and fatalities occur (Toivanen et
al. 2019). A study by Blanchi et al. (2014) revealed that over 50% of all fatalities occurred on days
where the FFDI exceeded 100 (the current threshold for declaring a day as ‘catastrophic’). For these
days, over 60% of all fatalities occurred within structures, and 78% occurred within 30m of the fuel
source.
5.5.2 A Global View
The complex interactions between fuel, weather conditions, and ignition sources make it challenging
to simulate all the factors relevant to defining bushfire risk. In an observational study covering 1979 to
2013, Jolly et al. (2015) showed that fire weather seasons have lengthened by 18.7% globally,
resulting in a doubling of the global burnable area affected by long fire weather seasons.
In their 2009 review paper, Flannigan et al. stated that climate change would lead to a general
increase in area burned and fire occurrence. Still, the spatial variability of this result is large. Moritz et
al. (2012) used global climate models (GCMs) to project fire risk for 2010 to 2039. They found an
increase in fire risk in warm climates and a small decrease in tropical and subtropical climates.
However, GCM agreement for this result is low, indicating large uncertainties in changing fire hazards
for small global warming increases.
Fire Indices
The McArthur Forest Fire Danger Index (FFDI:
McArthur 1967), commonly used to monitor fire weather
in Australia, is based on daily temperature, wind speed,
humidity, and a drought factor (Lucas 2010).
Vertical instability, as measured using an index called
C-Haines, has also been shown to be an important
factor affecting bushfire severity, particularly in spring
and summer, in south-eastern Australia (Di Virgilio et al.
2019).
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5.5.3 Observations and Trends for Australia
Tracking trends in bushfire risk involves identifying and tracking all the contributing factors. These
include fuels, drought/dryness, fire weather, ignition sources, and a range of advanced fire mitigation
factors, including the ability to conduct adequate controlled burns in peri-urban areas (Clark and
Evans 2019).
To date, fuel quantities, types, and moisture content changes have not been tracked in a detailed,
homogeneous fashion. However, efforts are underway to quantify current conditions better, then
reconstruct trends backwards in time. For example, Haverd et al. 2018 investigated the rate of fuel
accumulation following a fire event. Increasing attention is being given to understand and provide
better future climate projections of the responses of ecosystems, notably vegetation. For example,
Medlyn et al. (2015) conducted ecosystem-scale Free-Air CO2 Enrichment (FACE) experiments. In
particular, the University of Western Sydney has commenced the first Australian focused research
project to identify the effects of rising carbon dioxide levels on Australian eucalypt forest; details can
be found here: https://www.westernsydney.edu.au/hie/EucFACE.
Results from these studies have begun to emerge (e.g. Jiang et al. 2020) with more to become
available in the coming years.
Fuel moisture trends to date have primarily relied on general empirical relationships. However,
research has commenced to identify and quantify trends in fuel moisture levels in native forests. The
results of these studies will emerge over the next few years. A preliminary study by Boer et al. (2020)
revealed an upward trend in eastern Australian temperate forest area that is in a critically dry state
(Figure BF1). A comment in Nature by Sanderson and Fisher (2020), indicates that the simplified
views of changing fire risks in global climate models, which focuses on selected weather parameters,
may be under-estimating the future bushfire risks, as many of the complex factors affecting bushfire
risks are currently not adequately captured in current-generation global climate models.
Figure BF1 Forest area in critically dry fuel state, eastern Australia (1990–2019). Annual variation in the
duration and cumulative area of large forest patches (>100,000 ha) in a critically dry fuel state. The horizontal
black line indicates the 30-year mean value; light and dark grey bands indicate mean value ± 1 and 2 standard
deviations, respectively. To identify forest areas in a critically dry state, spatially explicit predictions of fine dead
fuel moisture content (DFMC) were based on gridded daily vapour pressure deficit, and a threshold of DFMC
<10% was used. Source: Boer et al. (2020).
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The FFDI commonly used to monitor fire weather in Australia is based on daily temperature, wind
speed, humidity, and a drought factor (Lucas 2010). Vertical instability, as measured using an index
called C-Haines, has also been shown to be an important factor affecting bushfire severity,
particularly in spring and summer, in south-eastern Australia (Di Virgilio et al. 2019). The seasonal
90th percentile FFDI trends show increases at almost all observation sites monitored by the Bureau of
Meteorology with significant increases at most of the sites for at least one season within the period
1973-2017 (Figure BF2).
The increase is particularly strong in south-eastern Australia and is primarily related to temperature
increases (Dowdy 2018). The increases have been most significant in spring followed by summer for
southern Australia with the largest increases in winter for the tropical regions.
Figure BF2 Map of trends in seasonal 90th percentile FFDI from 1973 to 2017. Marker size is proportional to the
magnitude of the trend. Reference sizes are shown in the legend. Filled markers represent statistically
significant trends. Red represents an upward trend and blue a downward trend. Source: Harris and Lucas
(2019)
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Another way to assess trends in the most destructive fire weather conditions is to compare the 99th
percentile FFDIs for the decade 1960-1969 with those of the most recent (2010-2019) decade
(Dowdy 2018). Figure BF3 shows the ratio of the 99th percentile FFDI for the 2010-2019 decade,
relative to the 1960-1969 decade. Most areas in Australia have increasing FFDIs relative to 50 years
ago; the exceptions being parts of the interior of Australia, the south coast of West Australia and small
parts of Tasmania. The greatest increases in FFDI have been observed across eastern Australia,
central and inland Victoria, the tropics and western parts of West Australia.
Figure BF3 Ratio of the 99th percentile of FFDI for the decade 2010-2019 relative to 1960-1969, based on the
Bureau of Meteorology’s gridded FFDI dataset. Source: IAG based on the BoM data described in Dowdy
(2018).
Societally and economically, severe fire conditions that can lead to extreme bushfires with
devastating effects are particularly important. These events typically have FFDI>40, resulting in a very
high chance of house destruction (Bradstock and Gill 2001). Information suggests an increasing
occurrence of extreme bushfires in recent decades (Sharples et al. 2016). Historical building loss data
indicates the most extreme loss events occurs when the FFDI reaches or exceeds values of 75
(Extreme FFDI Category). These property losses coincide with FFDIs well in excess of the 99th
percentile for those locations (Blanchi et al. 2010). It is therefore important that future climate
modelling studies of trends for these destructive fire weather conditions focus on the fire dangers
above the 99th percentiles for regions across Australia. There also need to be corresponding studies
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 76
on the changing demographics and forest structures in the wildland-urban interface to separate non-
climatological influences.
There has been a tentative reduction in the time between the most catastrophic bushfire events in
Australia’s history – those that have destroyed many hundreds to thousands of properties and led to a
substantial large loss of lives across south-eastern Australia. These were the devastating Victorian
bushfires of January 1939 (71 deaths, 650 buildings destroyed), then the Ash Wednesday fires of
February 1983 (75 deaths, 3,700 homes and buildings lost) (Miller et al. 1984). After this, Victoria
experienced the deadly Black Saturday fires of February 2009 (173 deaths, 3,500 buildings
destroyed) (Teague et al. 2010). Most recently many parts of Australia experienced the spring –
summer fires of 2019-2020 (34 deaths, 9,352 buildings including 3,500 homes, destroyed, along with
record poor air quality across major eastern and south-eastern cities and the largest area of forest
burnt in historical times).
There are no measurements of the FFDI for the 1939 bushfires, which had burnt the largest area of
temperate forest prior to the most recent (2019-20) event. However, maximum temperatures across
large parts of the state were over 45°C, and the Royal Commission investigation into these fires
indicated it was extremely dry with strong winds allowing the fires to jump from mountain to mountain,
indicating marked spotting and extreme bushfire behaviour. For the Ash Wednesday bushfires, the
BNHCRC6 modelling for Mt Gambier produced an FFDI estimate of 92, almost twice the 99th
percentile FFDI value for that location. For the Black Saturday bushfires, the FFDI estimate at
Kinglake was 104, over four times the 99th percentile value.
The prolonged extreme fire weather across southern and eastern Australia in spring – summer 2019-
2020 was unique in both the extent and persistence of extreme fire weather conditions, with many
locations having individual FFDI values exceeding 100 (Catastrophic FFDI). Figure BF4 shows the
accumulated FFDI percentages and FFDI deciles for December 2019 as one indicator of the severity
and longevity of this event. The Special Climate Statement issued by the Bureau of Meteorology
should be consulted for more detail (BoM 2020).
Detailed investigations of the 2019-2020 fire season are ongoing. Still, it is apparent there were
multiple periods of catastrophic fire weather conditions and significant losses of property across every
state and territory in Australia.
One measure of widespread risk from fire weather is the occurrence of high FFDI values, at the same
time, across Australia (cumulative values are shown in Figure BF5). Since 1950 there has been an
increase in the rate of such days for various FFDI thresholds, with steeper rises particularly evident
during the major 1982-83 and 2019-20 fire seasons. Note that FFDI over 25 is considered Very High,
and FFDI above 50 is Severe.
6 https://www.bnhcrc.com.au/
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Figure BF4 Accumulated FFDI percentages (top) and FFDI deciles (bottom) for December 2019 compared to
the long-term mean for 1950-2018. Source: Australian Bureau of Meteorology/NSW Bushfire Risk management
Research Hub calculated based on data as described in Dowdy (2018).
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Figure BF5 Graphs illustrating trends in widespread fire danger across Australia from 1950 to 2019. Each
graph shows a marker for each day where every Australian state and territory recorded an FFDI above the
thresholds indicated above the graph. An increase in the steepness of the curve indicates an increase in the
rate of these events Source: University of Wollongong, based on the Australian Bureau of Meteorology data
described by Dowdy (2018).
Although humans cause a significant proportion of bushfires, dry lightning strikes are the largest
natural source of ignition of bushfires and account for the largest areas burnt. A recent study by
Dowdy (2020) investigated thunderstorm environments in Australia for the period 1979-2016. They
showed that there are observed increases in the days when there are thunderstorm environments,
associated with low rainfall for the spring and summer fire seasons for southern and south-eastern
Australia (Figure BF6).
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Figure BF6 Long-term maps of thunderstorm environments by season from December 1979 to November
2016. The left column shows the average number of thunderstorm environments with the right column showing
the change in the number of environments from the first half to the second half of the study. Changes are shown
if statistically significant at the 90% confidence level. Source: Dowdy (2020)
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Penman et al. (2014a) noted that there are strong links between weather and human-caused ignition.
This means periods of elevated fire danger conditions will lead to more ignitions, all other things being
equal.
5.5.4 Projected Changes in Australia
Detailed, high-resolution studies have been undertaken for Australia. A study by the National
Environmental Science Programme (2019), using a high (RCP8.5) emission scenario and an
ensemble of 12 downscaled regional climate model simulations (NARCLiM), shows significant
increases in the critical fire weather risk factor (defined here as the percentage change in FFDI over
25 (Very High)), for virtually all of Australia for the future climate period 2060-2079 (Figure BF7). The
slower rates of change along the southern coastline of Western Australia and the eastern coastal
fringe is due to the locally moderating effects of the sea breeze. This moderating effect is not likely to
extend to the rarest of extreme events. So even in these regions, there is a growing risk of extreme to
catastrophic bushfires over the coming decades. As concerning as these predictions are, researchers
are becoming more aware of additional factors that need to be considered to identify regions of
greatest bushfire risk in a warming climate (Sanderson and Fisher 2020). Even the most recent
climate-fire-vegetation models (Sanderson and Fisher 2020) do not produce fires as extensive as
those observed in the 2019-20 season. Therefore, challenges remain when trying to simulate all
future climate fire conditions and events.
Figure BF7 Percentage change in Very High or FFDI >25 days between 1990-2009 and 2060-2079 for a high
greenhouse gas emission scenario (RCP8.5) from a 12-member ensemble using the downscaled NARCLiM
dataset. Coloured regions indicate at least two-thirds of the models agree on the direction of change. Source:
NESP Bushfires and Climate Change 2019 based on Dowdy et al. (2019).
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There is high confidence that climate change will lead to an increase in the average FFDI and a
higher frequency of days with severe fire danger or higher across southern and south-eastern
Australia (Figure BF8), although with greater variability along parts of the east coast where the
changes are less confident (CSIRO and Bureau of Meteorology 2015, Moritz et al. 2012, Clarke et al.
2011, Clarke et al. 2016, Clarke and Evans 2019, Dowdy et al. 2019).
Figure BF8 Projected changes in the annual cumulative FFDI between 1990-2009 and 2060-2079, based on
the six downscaled NARCLiM model members that verify best against observed FFDI data. Source: Clarke and
Evans (2019)
The increased frequency of days with a High FFDI will result in reduced intervals between
catastrophic fire events, higher fire intensities, slower fire extinguishments, and an increase in fire
spread (Hennessy et al. 2007). Hennessy et al. (2005) estimated that by 2050 the frequency of
extreme fire danger would increase by 15-70% across south-east Australia. Similar increases are
predicted for the Bay of Plenty, Wellington, and Nelson regions in New Zealand (Pearce et al. 2005).
Recent research into the most extreme and uncontrollable bushfires – including those where there is
considerable support from increased upper-level instability and sometimes enhanced by the formation
of pyro-cumulonimbus – predicts that they will significantly increase in frequency in the future. Di
Virgilio et al. (2019) investigated trends in both FFDI and C-Haines (see Fire Indices insert in Section
Summary) between 1990-2009 and 2060-2079 using downscaled (the NARCLiM suite of model runs)
GCMs for south-eastern Australia. They found there were statistically significant trends in the mean
number of summer and spring days that C-Haines and FFDI were >=8 and >=25 respectively (days
when both upper air and surface measures of bushfire severity are significant). However, the most
substantial increases are projected to occur through spring. These findings are broadly similar to
results from Dowdy et al. (2019) which investigated projected trends in FFDI and C-Haines using
three different modelling approaches (including the NARCliM suite of models). They found future
increases in the south as well as some regions of decrease in the east of Australia.
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Under a 4°C warming, the frequency of days with FFDI>40 has the potential to increase by more than
200% in eastern Australia during the fire season (Clarke et al. 2011). Lucas et al. (2007) suggested
that the number of Extreme fire danger days (FFDI>50) could increase by 100-300% by 2050, relative
to 1990. However, at present, GCMs do not have sufficient resolution to robustly identify trends in the
most catastrophic events.
Furthermore, a lengthening of the fire season could reduce or shift the window of opportunity for fuel-
reduction burning to winter or shorter periods in spring (Hennessy et al. 2007, Clarke and Evans
2019). These changes are due to increasing temperatures and drying in these regions and changes
to the nature of the rainy seasons in forested areas.
A slower change in fire hazard is expected in tropical and monsoonal north Australian regions
(medium confidence) (CSIRO and Bureau of Meteorology 2015). However, some parts of tropical
Australia have experienced major increases in FFDI relative to the 1960-1969 decade (Figure BF3).
There is limited information in the literature about trends in the rarer and most catastrophic bushfires
that typically drive most of the property risk and loss of life. Coupled atmosphere-fire simulations of
actual extreme fire weather events are emerging. Toivanen et al. (2019) highlight the complex
interactions between the relatively short-lived but most destructive periods of bushfires when most
deaths and damage occur, and meteorological weather systems that produce them and cause the
rapid expansion of fire areas following wind changes. They also highlight the importance of vertical
instability and spotting of fires as they move through eucalyptus forests. Further research into factors
contributing to increased spotting of bushfires is emerging, such as the findings of Storey et al.
(2020). They showed that weather conditions at the surface and aloft, along with the vegetation and
topography all have key influences. These complex interactions are lost in simplified approaches and
are not accounted for in Bushfire Attack Level (BAL) approaches commonly used in land planning and
building in fire-prone lands.
Encouraging results applying statistical models calibrated against historical fire events are being
developed to more accurately determine the bushfire risks faced by properties and assets in fire-
prone regions (Price et al. 2015 (Figure BF9), Price and Bedward 2019). These techniques can be
used to determine the most effective controlled burning fuel reduction programs for each region. To
date, these techniques have concentrated on short-duration fire events. Further work is needed to
extend this research to prolonged fire events and to extend the fire spread models to capture bushfire
behaviour under the most catastrophic fire weather conditions.
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Figure BF9 Risk map for the Sydney region showing the probability of extant fires spreading to each census
block. The background is a true-colour satellite image showing the urban areas in grey, peri-urban in speckled
green and grey, and forest (in green) surrounding the centre. Source: Price et al. (2015)
Future climate predictions across Australia – from the available science – are based primarily on the
expected trends in the bushfire weather, as measured by the FFDI and C-Haines indices. The Bureau
of Meteorology and CSIRO maps (2016, 2018) serve as a simplified visual guide to the observed
trends, while the works of Clarke and Evans (2019), Dowdy et al. (2019) and Di Virgilio et al. (2019)
provide a basis for the changing bushfire risk across many densely populated Australian districts. It
should also be noted that the Australian Fire Danger Rating System Program is developing a more
comprehensive bushfire rating system that better describes bushfire behaviour in different
environments across Australia (Matthews et al. 2019). This Fire Behaviour Index may provide new
insights into trends and areas at greatest risk from bushfires in a changing climate.
For Tasmania, the work of Fox-Hughes et al. (2015) supplements the previously mentioned studies
which focus more over the mainland of south-eastern Australia. Model projections show a broad
increase in fire danger across Tasmania, but with substantial regional variation. The increase was
smaller in western Tasmania (district mean cumulative fire danger increasing at 1.07 per year)
compared with parts of the east (1.79 per year) for example. There were also noticeable seasonal
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variations. Small changes occurring in autumn, while spring saw a steady increase in the area
subjected to the 99th percentile fire danger (from 6% in 1961–1980 to 21% by 2081–2100).
There is significant scope for next-generation models like NARCliM (versions 1.5 and 2.0) and
BARPA (Bureau of Meteorology Atmospheric Regional Projections for Australia) to provide a more
comprehensive and granular base for establishing fire weather risk indices and understanding the
impacts of climate change on fire weather. However, they need to be extended across all of the
populated regions of Australia, and trends in all parts of the bushfire fire danger spectrum need to be
addressed, particularly the rare Extreme and Catastrophic components of the fire weather spectrum.
Exacerbating conditions caused by more unstable upper air conditions and changes to the probability
of ignition also need to be considered when refining regional predictions of changes in bushfire risk.
The effectiveness of potential bushfire prevention and suppression techniques must also be factored
in.
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5.6 Oceans: Sea Level Rise, Temperature Anomalies and Extreme Sea Levels
Section Summary
The main change since the release of the first edition of this report is to extend the observed rate
of sea level rise to the end of 2019 and to confirm that there is an observed acceleration of these
rises. New information has been included, highlighting timeframes when historic 1% AEP
extreme sea level events become more frequent or even yearly events.
Within Australia, the CoastAdapt website provides one set of sea level rise projections. An
expanded set of projections is available from the US NOAA Sea Level Rise Report. This report
provides a range of planning scenarios, intended to span the range from the lowest justifiable
projection (a linear extrapolation of the historically observed 3mm/year of Global Mean Sea Level
Rise) to an extreme scenario consistent with some of the highest physically grounded projections
in the literature. Commentary provided may be particularly useful in highlighting the broad range of
plausible scenarios, particularly in the most damaging and irreversible upper-end projections. The
significance of these projections may be diminished by the term “average” which is biased in
favour of the unachievable low-end projections.
Most of the new research presented focuses on the dynamics of the Greenland and Antarctic ice
sheets and ice shelves. Changes to these stand to produce the most irreversible and accelerating
trends of sea level rise over centennial time frames.
A summary of the key points concerning sea level rise and extreme sea levels includes:
• Globally, sea level has risen by ~220mm from 1880 to 2019, although there is
considerable uncertainty in the early part of this record.
• The rate of sea level rise is accelerating, from 1.4mm/year over the period 1901–1990 to
3.6mm/year for the period 2006–2015 with an above-trend rate of increase of 4.7mm/year
for the period January 2014 to March 2020.
• From a damage to property perspective, the changes to extreme sea levels, their
magnitude and AEP are more critical than changes in the mean sea level.
• IPCC projections indicate that by the end of this century global sea levels could increase
by up to 0.84m (0.61-1.10m likely range) for the RCP8.5 scenario, relative to a 1986-2005
baseline. Other studies gaining credence point to plausible global sea level rises of
over 2.0m within a century and multi-metre sea level rises by 2300.
• Sea levels will continue to rise throughout the 21st and 22nd centuries due to ongoing ice
losses from the Greenland and Antarctica ice sheets. However, the rates of increase will
be determined by the rates of global emissions over the next few decades.
Much of Australia is projected to continue to experience above global average sea level
rise throughout the 21st century with rates up to 30% above the global average.
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5.6.1 Background
Arguably the most critical of all the changes produced by the rapidly changing climate are those
associated with the oceans: sea level rise, ocean heatwaves and extreme sea levels.
Land planning decisions around our coasts and estuaries determine where whole communities will be
established, along with the supporting infrastructure. Once they are in place, it is challenging to
protect them from the irreversible impacts of sea level rise that will continue for centuries, irrespective
of the actions taken globally over the next few decades. The magnitude of these challenges, however,
will be determined by global actions to reduce emissions over the next few decades.
Retreat and relocation may become the only viable options. To safeguard our communities into the
next century, land planning decisions need to consider higher sea level rise scenarios over longer
timeframes rather than the mean or median projected rises for a specific point in time.
Climate change impacts on the world’s oceans take many forms. They produce SST anomaly
patterns that can alter the global atmospheric circulations, along with marine heatwaves that can
severely impact marine ecosystems. Significant sea level anomalies can trigger compound events,
where multiple damage drivers can affect countries or communities beyond those experienced from
single events. These compounding events are often responsible for cascading impacts that extend
well beyond the region directly affected by the events. They can also produce recurring weather
events that can lead to significant levels of damage and hamper communities’ ability to prepare and
respond due to the short time frame between successive events.
Sea levels are changing at different rates around the world, and extremes of sea level are changing at
record rates. In addition to this, dissolving carbon dioxide is leading to increasing ocean acidification
that will affect all marine and coastal ecosystems, threatening food security for nations globally.
Although very important socially, financially and ecologically, this aspect of climate change will not be
covered further in this section as the focus is on more direct damage and disruption to property and
society.
Sea level rise is a combination of the thermal expansion of warming ocean water, meltwater run-off
from ice sheets and glaciers, changes to terrestrial water storage, altered ocean currents and wind
regimes. Changes in Earth’s gravity and rotation with the rise and subsidence of different parts of the
Earth’s crust from the shifting masses will have varying impacts across the globe.
When considering damage to property associated with sea level rise during the coming century, the
main concern is not what is likely to happen to the mean sea level but how this will affect the changes
to extreme sea levels, their magnitude and AEP. In multi-centennial time frames the greatest concern
shifts to ongoing changes to the mean sea level. It is also noted that irrespective of the emissions
pathway followed, sea levels will continue to rise throughout the 21st and 22nd centuries and most
likely for millennia due to ongoing ice losses from the Greenland and Antarctica ice sheets (IPCC
2019). These changes can occur as non-linear step function changes happening within the space of a
decade and are irreversible over human lifetime scales.
Globally, the sea level has risen by ~220mm from 1880 to 2019, although there is considerable
uncertainty in the early part of this record (Dangendorf et al. 2019). Based upon complex analyses of
trends from tide gauge records and satellite altimetry, the rate of increase is accelerating (Nerem et
al. 2018, Dangendorf et al. 2019), from 1.4mm/year over the period 1901–1990 to 2.1mm/year (1970–
2015), 3.2mm/year (1993–2015), and 3.6mm/year for 2006–2015 (IPCC 2019). Recent years show
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an above-trend rate of increase of 4.7mm/year for the period January 2014 to March 2020. The rate
of increase since 1993 is close to the upper limit of the IPCC AR5 projected changes (IPCC 2019).
It is very likely that areas that are already affected by coastal erosion and inundation will be more
severely affected in the future (Field et al. 2012). Increased frequency of coastal inundation for
Sydney, Australia, has recently been documented by Hague et al. (2020). They show that in Sydney,
frequencies of minor coastal inundation have increased from 1.6 to 7.8 days per year between
1914 and 2019 and they attribute over 80% of the observed coastal inundation events between
1970 and 2015 to anthropogenic increases in GMSL. They project that impact-producing coastal
inundations will occur weekly by 2050 under high- and medium- emission/sea-level rise
scenarios, and daily by 2100 under high emission scenarios.
Local sea level rise can deviate significantly from the global mean due to differential heating of ocean
areas; changing wind systems and ocean currents; and land movement. Satellite altimetry spanning
28 years shows considerable regional variations in the observed rate of sea level rise (Figure SL1).
Climate models project that by the end of the century global sea levels could increase by 0.43m
(0.29-0.59m likely range) for the RCP2.6 scenario and 0.84m (0.61-1.10m likely range) for the
RCP8.5 scenario (IPCC 2019), relative to a 1986-2005 baseline. Figure SL2 summarises the range of
future sea level rise projections out to 2300 with the inset showing projections out to 2100 (IPCC
2019).
Figure SL1 Observed satellite altimeter trends in sea level rise from 1992 to 2020. Source: NOAA Laboratory
for Satellite Altimetry 2020, accessed in June 2020.
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It should be noted that there are many contributing factors relating to sea level rise (IPCC 2019), few
of which are well modelled. These factors mean there is a potential for the long-term sea level rise to
be significantly higher than the projections produced by climate models that use simple cryosphere
modules. Factors include: the acceleration of glaciers feeding ice shelves once the ice shelves
collapse (e.g. the collapse of the Larsen A and B ice shelves in 1995 and 2002 respectively); the
effects of lakes and meltwater on the surface of ice shelves; the melting and destabilisation of the
bases of ice sheets in contact with the warming of the Circumpolar Deep Water; and the collapse of
ice cliffs into the oceans.
Partially offsetting this is the expected increase in snowfall over elevated regions of Antarctica and
Greenland, although this is not likely to be enough to offset losses through other mechanisms.
Interactions between tropical warm ocean events linked to ENSO and IOD changes and the Southern
Ocean are also poorly understood. However, it is considered an extreme El Niño event in 1940 was
the trigger for the grounding line retreat of the ice sheets in the Pine Island catchment of West
Antarctica, which is still ongoing.
Figure SL2 Projected sea level rise (SLR) until 2300. The inset shows an assessment of the likely range of the
projections for RCP2.6 and RCP8.5 up to 2100 (medium confidence). Projections for longer time scales are
highly uncertain, but a range is provided (low confidence). For context, results are shown from other estimation
approaches in 2100 and 2300. The two sets of two bars labelled B19 are from an expert elicitation for the
Antarctic component (Bamber et al. 2019) and reflect the likely range for a 2ºC and 5ºC temperature warming
(low confidence). The bar labelled “prob.” indicates the likely range of a set of probabilistic projections. The
arrow indicated by S18 shows the result of an extensive sensitivity experiment with a numerical model for the
Antarctic ice sheet combined, like the results from B19 and “prob.”, with results from Church et al. (2013) for the
other components of SLR. Source: IPCC (2019).
Processes controlling the timing of future ice shelf loss and the extent of ice sheet instabilities could
increase Antarctica’s contribution to sea level rise to values substantially higher than the IPCC’s
“likely” range on century and longer timescales. This ice sheet instability is irreversible with recovery
time scales in the hundreds to thousands of years, and then only once the climate forcing triggering
these instabilities are brought under control (IPCC 2019).
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Emerging studies focusing on the Antarctic ice sheet, indicate that there are early signs of an
acceleration of melting and a speed-up of glacial flow. Details of the history, ice mass loss, complex
Antarctic ice sheet and glacier structures, and the dynamic behaviour of the Antarctic ice sheet are
explained in Bell and Seroussi (2020). Estimated contributions to sea level rise from the varied ice
loss mechanisms differ considerably. They are not well incorporated into most cryospheric models but
amount to several metres within the next couple of centuries. Modelling studies (Figure SL2) indicate
a multi-metre rise in sea level by 2300 (2.3–5.4m for RCP8.5 and 0.6–1.07m under RCP2.6),
indicating the critical importance of reduced emissions to limit sea level rise (IPCC 2019). It should be
noted that the ability of the world to follow an RCP2.6 scenario is becoming highly unlikely as
emission and observed warming trends are already diverging above the RCP2.6 pathway.
Global temperature increases beyond 2°C increase the risk of rapid increases in sea level due to
melting of significant parts of ice sheets in Greenland and Antarctica. The global sea level could
potentially rise by ~70m if both ice sheets completely melt (Alley et al. 2005), although this would take
centuries to occur and current estimates are very uncertain. However, it is noted that transitions in ice
sheet behaviour can happen rapidly once tipping points are crossed. The collapse of the Larsen A
and B ice shelves (1995 and 2002, respectively) are pointers to what could occur elsewhere around
Antarctica once the buttressing floating ice shelves thin and weaken.
As discussed in Section 4.3, moderate changes in the mean can have dramatic effects on extremes –
including the effects of storm surge and wave action. Wahl et al. (2017) investigated mid-century
changes in the return period of the 100-year extreme sea level under the RCP4.5 emission scenario.
For Australia, they showed that the historic 100-year extreme sea level height could occur annually
for many sites along the Australian coastline (see Figure SL3). Rapid changes are predicted
especially for the densely populated Australian east and south-east coasts, as well as the New
Zealand North Island and around Dunedin in the South Island.
Figure SL3 Changes in the 100-year return period of extreme sea level height until mid-century
under RCP4.5. Source: Wahl et al. (2017).
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A global view of changes in extreme sea level events for RCP 2.6 and 8.5 scenarios is shown in
Figure SL4. The focus is on what has been described as a historical centennial event (HCE). The
approximate year in which these extreme events become annual events is illustrated by the darkness
of the circle at various locations around the world.
Wave heights
Studies for the North and South Atlantic Oceans have shown that extreme wave heights, which
contribute to extreme sea level events, coastal erosion and flooding, have been increasing at the rate
of 1.0cm/year over the period 1985 to 2018 (IPCC 2019). Extreme wave heights are associated with
Figure SL4 The effect of regional sea level rise on extreme sea level events at coastal locations. (a) Schematic
illustration of extreme sea level events and their average recurrence in the recent past (1986–2005) and the
future around 2100. (b) The year in which HCEs are expected to recur once per year on average under RCP8.5
and RCP2.6, at the 439 individual coastal locations where the observational record is sufficient. The absence of
a circle indicates an inability to perform an assessment due to a lack of data but does not indicate an absence of
exposure and risk. The darker the circle, the earlier this transition is expected. White circles (33% of locations
under RCP2.6 and 10% under RCP8.5) indicate that HCEs are not expected to recur once per year before
2100. (c) An indication of locations at which this transition of HCEs to annual events is projected to occur more
than 10 years later under RCP2.6 compared to RCP8.5. Source: IPCC (2019)
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the most intense low-pressure systems. TCs (Section 5.1), ECLs (Section 5.4) and mid-latitude frontal
low-pressure systems are the source of these extremes for Australian coastal waters.
Marine heatwaves
Marine heatwave events are periods of extremely high ocean temperatures that exceed the local 99th
percentile observed SST. These events adversely affect marine ecosystems and organisms in every
ocean basin, including corals, sea grasses and kelps that help to protect coastal zones from severe
oceanic impacts.
For the period 1982 to 2016, the observed number of heatwave events have doubled in frequency,
are more intense, and more extensive (IPCC 2019). The IPCC concluded, with very high confidence,
that these heatwaves are projected to further increase in frequency, duration, spatial extent and
intensity. Climate models project a 50-time increase in the frequency of marine heatwaves by 2081–
2100, relative to 1850–1900. Over the same timeframe, their intensity is expected to increase about
10-fold. These increases would continue through the 22nd century. Studies focusing on Australian
marine heatwaves have been produced by Oliver et al. (2014, 2018).
5.6.2 Changes in Australia
Observed changes
Most of Australia experienced above global average sea level changes during recent decades, with
hotspots in the Tasman Sea and northern and western Australia (Figure SL1) where rates were up to
twice the global average. To understand regional rates of sea level rise better, several factors need to
be considered: the influence of ENSO on sea level rise; the influence of Glacial Isostatic Adjustment
(ongoing movement of land once burdened by ice-age glaciers); local land movement produced by
geological and hydrological factors; and atmospheric pressure effects.
The CoastAdapt website (https://coastadapt.com.au) provides access to observed sea level trends and
variability at local government level around Australia. These trends are based on satellite
observations over the adjacent oceans and seas since 1992. Tide gauge records are also available
for a limited number of locations around the coast. The Bureau of Meteorology maintains the
Australian Baseline Sea Level Monitoring Network and access to the data from this network can be
found at the following link: http://www.bom.gov.au/oceanography/projects/abslmp/abslmp.shtml
Projected changes for Australia
Much of Australia is projected to continue to experience above global average sea level rise
throughout the 21st century with rates up to 30% above the global average (Figure SL2: IPCC 2019).
NCCARF developed regional sea level rise projections for each local government area around
Australia, for four different climate change scenarios. These projections, including a range of
uncertainties, can all be found at: https://coastadapt.com.au/sea-level-rise-information-all-australian-
coastal-councils. Caution is advised in using the RCP2.6 projections from this website as we, the
authors of this report, believe these projections are unachievable. The RCP4.5 scenario is considered
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by the authors the most optimistic outcome, assuming substantial actions are taken globally within the
next few years. The higher RCP scenarios could be viewed as the more realistic future climate
outcomes. Scenarios with projections higher than that of the RCP8.5 should be considered for the
most critical developments.
A sample plot of sea level rise projections for the Gold Coast Local Government Area (LGA) is shown
in Figure SL5 for the RCP4.5 and 8.5 scenarios out to the year 2100, along with the observed satellite
data for this area. Corresponding inundation maps for each area are available for download for the
RCP scenario. However, these maps show changes in the mean sea level and not the extreme sea
level.
Figure SL5 Observed satellite derived sea level (green lines) and projected sea level rises out to 2100,
including uncertainty limits, for the RCP 4.5 and 8.5 scenarios for the Gold Coast LGA. Source: CoastAdapt
(https://coastadapt.com.au).
The highest rate of increase in sea level is simulated in the Tasman Sea and is attributed to long-term
and ongoing changes in the South Pacific Gyre (Oliver et al. 2014, 2015).
Different emission scenarios differ in the amount of regional sea level rise but are consistent in the
spatial patterns. Slangen et al. (2012) identified the steric contribution (sea level rising because of
changes in ambient temperature and salinity) as the dominant source of regional variability. However,
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this assessment might change with improved representation of ice sheets and glaciers in next-
generation earth system models that can simulate extreme ice loss scenarios.
An alternative view of sea level rise can be found in the US NOAA Sea Level Rise Report (Sweet et
al. 2017). This report provides a broad range of planning scenarios, that span the range from the
lowest justifiable projection (a linear extrapolation of 3 mm/yr of GMSL rise) to an extreme scenario
consistent with some of the highest physically grounded projections in the literature. The
intermediate-high and high emission scenarios from the NOAA report produce rates of sea level rise
significantly above those contained in the CoastAdapt website. These should also be considered by
those assessing risks in the most susceptible areas or for projects that are designed to remain viable
well into the next century.
There are few studies on what the regional changes in extreme sea levels are likely to be considering
changes in the weather systems that produce them. There is very little information available on
expected changes in the associated direction of approach of the highest energy waves in future
climates or changes in their duration. The importance of this directional change of approach of high
energy waves is illustrated by the major coastal erosion experienced along the Wamberal New South
Wales coast in July 2020. The erosion was due to an ECL event that produced a major wave train
from a more south-easterly direction than historically experienced. An intense weather system does
not have to produce record wave heights to be extremely damaging if the direction of coastal impact
differs from the directions historically experienced along that particular coastline.
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5.7 Connected Extremes: Compound and Clustered Events
5.7.1 Background
The literature uses the term ‘compound event’ to describe events that are connected physically or
show statistical dependency. In 2012 the Special Report of the IPCC (Seneviratne et al. 2012)
introduced the following definition of compound events. “(1) Two or more extreme events occurring
simultaneously or successively, (2) combinations of extreme events with underlying conditions that
amplify the impact of the events, or (3) combinations of events that are not themselves extremes but
lead to an extreme event or impact when combined.” Alternatively, Leonard et al. (2014) defined
compound events as an extreme impact that depends on multiple statistically dependent variables or
events.
This section considers only interconnected meteorological-hydrological-oceanographic events. There
can be connections between non-interconnected events, such as pandemics, geological events or
other phenomena, but they are not included in this discussion.
Coincident hazards that are naturally part of each severe weather phenomena are not considered
compound or connected events for this report. For example, coincident rainfall, severe winds, storm
surge, etc., that are part of a TC have already been discussed in previous sections. These events are
also already considered by catastrophe risk models commonly used by the insurance industry.
Instead, this section focuses on the currently available scientific understanding of how multiple severe
Section Summary
Connected extremes are defined as the simultaneous occurrence of events, or a sequence of
events, affecting a region, multiple regions, states and even countries. Connected extremes can
include, for example, a major TC during a pandemic. This report only covers interconnected
meteorological-hydrological-oceanographic events. Connected extremes can result in impacts
far greater than the individual events alone. The science of connected extremes is in its infancy.
However, some research findings are starting to emerge, including:
• Robust observational trends in hydrological extremes indicate growing evidence that
anthropogenic forcing will lead to further increases in hydroclimatic variability across a
wide range of timescales.
• Concurrent extremes, such as prolonged drought and increased severe bushfires, are also
likely to occur more frequently in the future.
• Concurrent freshwater flooding and storm surge are increasingly likely under climate
change.
• Within Australia, there has already been a diverse range of connected events. These
include the 2019-2020 extreme bushfire season; the triple TC impacts on the Pilbara coast
in 1980; and, the south-east Queensland floods over the December 2010-January 2011
period. How the risks of these connected events will change in a warming world has not
yet been investigated in any depth.
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weather phenomena, either of the same or different types, are connected through time and space.
Areas of future research needed to improve understanding are highlighted.
Insurers must understand possible multiple impacts across a portfolio from days to weeks to years,
and these portfolios may span several states or countries. Therefore, understanding the
connectedness of these multiple severe weather phenomena and how they may change with climate
change is important from both a claims and financial management perspective.
The simultaneous occurrence of events, or a sequence of events, affecting a region, multiple regions,
states and even countries can cause impacts far greater than the individual events alone. Merz et al.
(2009, 2016) and Schröer and Tye (2018), for example, showed that the cumulative effect of
moderate flooding could result in higher impacts than rarer single extreme events. Likewise, multi-
hazard events such as combined heat and drought (Livneh and Hoerling 2016) or extreme rainfall
combined with anomalous warmth (Huang et al. 2018) can produce impacts much more severe than
would have resulted from individual events.
Connections among extremes operate across scales. These can range from short-timescale cold-pool
outflows triggering neighbouring thunderstorms to long-timescale variability of the global circulation
that favours concurrent, clustered and distant events (Villarini et al. 2013). An example is the serial
clustering of tropical and extratropical cyclones (Mumby et al. 2011, Vitolo et al. 2009). An Australian
illustration of a clustered event is provided by the sequential impacts of Severe TCs Amy (January
1980), Dean (January/February 1980) and Enid (February 1980) on the east Pilbara coast within a
five-week period. The impacts across the same general region produced damage in some towns,
e.g., Goldsworthy and Port Hedland, that was exacerbated due to the earlier events. The repairs to
the buildings from the impact of TC Amy were not completed before TC Dean passed near the town
of Port Hedland and over the severely damaged town of Goldsworthy.
Winter storms sweeping down coastal regions (Haigh et al. 2016), or self-reinforcing blocking high-
pressure systems driving weather systems away from an already dry area (Seneviratne et al. 2010,
Sillman and Croci‐Maspoli 2009), are other examples of high connectivity across events.
Geographically distant simultaneous events can be “teleconnected”. An example of teleconnected
events is the 2010 Russian heatwave and Pakistan flood, which were linked through a high-amplitude
wave pattern of the mid-latitude jet stream (Lau and Kim 2010, Galarneau et al. 2012). Moreover,
connections can be non-stationary over time (Wahl et al. 2015).
The specific attributes of connected events that drive impacts are not well understood. But the timing
between events appears to be a key factor. Fussell et al. (2017), for example, showed that a second
TC landfall before recovery from an earlier TC landfall could trigger permanent population migration
out of the region. Further, the particular sequencing of hydrologic extremes (e.g., a rapid transition
from drought to flood) can greatly amplify human and environmental consequences (e.g., Oakley et
al. 2018, Li and Ye 2015). Moreover, regions where annual mean rainfall is dominated by a few
intense events – such as California – are particularly vulnerable to connected extreme events
(Diffenbaugh and Giorgi 2012, Swain et al. 2018). Ultimately, the relevant scales of connected
extremes will be those that intersect with scales of key societal or ecological exposure such as water,
energy and food networks (Franzke 2017).
Robust observational trends in hydrological extremes have recently emerged in observations
(Diffenbaugh et al. 2017), and there is growing evidence that anthropogenic forcing will lead to further
increases in hydroclimatic variability across a wide range of timescales (e.g., Pendergrass et al. 2017,
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Swain et al. 2018). For example, Swain et al. (2018) investigated future climate trends in sequential
events similar to the Californian transition from extreme drought over the 2012-2016 period to a wet
extreme in 2016-2017. They found a 25% to 100% increase in connected extreme dry-to-wet
precipitation events by the end of the century, despite only modest changes in mean precipitation.
Such hydrological cycle intensification would seriously challenge California’s existing water storage,
conveyance and flood control infrastructure.
Concurrent extremes are also likely to occur more frequently in the future. For example, concurrent
drought and heat (Agha Kouchak et al. 2014, Sharma and Mujumdar 2017), may already be
increasing on a regional basis (Diffenbaugh et al. 2015). Wahl et al. (2015) also showed that
concurrent freshwater flooding and storm surge are increasingly likely under climate change.
An indication of the types of hydrological events with a strong connection to the large-scale
environment is illustrated by the sequence of floods experienced across the south-east of
Queensland in the period December 2010 to January 2011. The large-scale environmental setting
was that of a strong La Niña. This positive phase of the ENSO caused a prolonged period of heavy
rainfall over Queensland, as well as in other parts of Australia (Figure CE1). Near-record SSTs were
recorded off the Queensland coast in late 2010. December 2010 was Queensland's wettest
December on record, with record-high rainfall totals reported from 107 rainfall stations. The initial bout
of floods was triggered by an outbreak of extremely heavy rainfall across south-east Queensland over
the period 18-20 December 2010. This produced major floods affecting multiple rivers and towns
across eastern and south-eastern Queensland. Before these floods had time to subside, a
combination of surface and middle-level lows led to several more days (4-12 January 2011) of
extreme rainfall across south-east Queensland. This second, independent yet interconnected, event
initially produced extreme flash flooding through Toowoomba, followed by major catastrophic river
flooding of the Lockyer Valley. The Wivenhoe and Somerset Dams were unable to contain the full
extent of the rainfall runoff from these events. Subsequent dam overflows, combined with the Lockyer
Valley floodwaters, produce major flooding of the Ipswich to Brisbane region. Independently, these
flood events would have been major, but occurring sequentially contributed to the floods becoming a
major catastrophe for this part of Australia.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 97
Figure CE1 Rainfall deciles for the three months from 1 November 2010 to 31 January 2011. Source:
Australian Bureau of Meteorology.
The topic of connected extremes was identified as a critical research need in the Climate Science
Special Report of the Fourth National Climate Assessment (Kopp et al. 2017). There has been a
surge in research focused on connected extremes over the past decade. Most of it focused on
concurrent co-located multi-variate extremes such as extreme wind and rain, or extreme heat and
drought, rather than on the physical processes connecting events in space and time and their
predictability.
5.7.2 Changes in Australia
To date, there have been few robust investigations into compound and clustered events that have
occurred in Australia. This makes it difficult to identify trends in these events that may lead to more
catastrophic damage than would otherwise be expected. The following section describes some
relevant Australian examples of connected and clustered events as possible future research
directions.
Extensive Droughts and Bushfires
Possibly the best indication of what could be considered a geographically widely distributed clustered
event would be the 2019-2020 “Black Summer Bushfires” in Australia. The damaging bushfires
started in September 2019 and ended in February 2020. There were multiple outbreaks of
geographically separate major bushfires. Initially, the bushfires were centred over east to south-east
Queensland. Later, new major bushfires occurred further southwards in the Mid North Coast of New
South Wales. Subsequent events then erupted across geographically disparate locations ranging
from Kangaroo Island (South Australia) to the Adelaide Hills, to Mallacoota and east Gippsland
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 98
(Victoria), to the New South Wales South Coast, and to the Australian Capital Territory and
surrounding parts of New South Wales. These events are summarised in Table CE1.
All these events occurred in a large-scale environment of prolonged record heat and drought that
affected large parts of Australia throughout 2019 and into 2020. The compound impacts of these
multiple fire outbreaks produced damage that surpassed that of previous catastrophic bushfire
events, including the Black Saturday fires of February 2009 and the Ash Wednesday fires of February
1983.
Table CE1 List of the major damaging bushfire events in Australia from September 2019 to January 2020.
Source: IAG internal reports
Bushfire start date State Areas with significant property damage
4 September 2019 Queensland Peregian Beach, Stanthorpe, Applethorpe
6 September 2019 New South Wales Tenterfield, Drake and Tabulum
8 October 2019 Queensland Rural east and south-east Queensland
8 October 2019 New South Wales Busbys Flat, Rappville, Long Gully, Wyan
12 October 2019 South Australia Riverland, Murraylands, North Districts, Lewiston, Loxton and Nain
6 November 2019 Queensland Cobraball, Bungundarra, Cooroibah, Adelaide Park, Yeppoon and Woodbury
8 November 2019 New South Wales Nymboida, Rainbow Flat, Koorainghat, Willawarrin and Old Bar
11 November 2019 South Australia Port Lincoln, Stansbury and Yorketown
21 November 2019 Victoria Rochester, Natte Yallock and Buchan
3 December 2019 New South Wales Balmoral, Grose Valley and Gospers Mountain
5 December 2019 Western Australia Two Rocks, Yanchep, Wanneroo
15 December 2019 South Australia Mount Lofty Ranges, Adelaide Hills, Kangaroo Island
19 December 2019 Victoria Marthavale, Barmouth Spur, Tambo Crossing, Mallacoota and east Gippsland
30 December 2019 Tasmania Elderslie, Mangans
31 December 2019 New South Wales Eden, Bega, Batemans Bay, Batlow, Southern Highlands
16 January 2020 Victoria Mallacoota, Bendoc, Clayton South, Glen Alvie, Sarsfield, Tamboon
24 January 2020 New South Wales Namadgi National Park, Orroral Valley, Clear Range, Wyndham, Colinton,
Bredbo, Narooma, Mount Darragh
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 99
There is no historical analogue to this clustered series of damaging bushfire events. It poses the
question of whether these multi-state, multi-month bushfire events will become more common in a
warming climate, and how they will change in the future. The extent of the observed extreme fire
weather exceeded that predicted by the CMIP6 models for Australia out to the end of this century
(Sanderson and Fisher 2020). Only four of the CMIP6 models include a prognostic fire module (EC-
Earth3-Veg, CESM2, CNRM-ESM2-1 and MPI-ESM1- 2-LR). Sanderson and Fisher found that for
these models, there can be substantial regional biases that make projections or formal climate
change attribution statements difficult. For New South Wales, the scale of the recent fires is
unmatched in the current and future CMIP6 simulations. Similar biases are evident in other Australian
territories. It is therefore critical to note that the complex dynamics of fuel accumulation, vegetation
dynamics and their interactions with climate under transient CO2 concentrations, as well as impacts of
land management and human ignitions, are likely to result in fire behaviour patterns not represented
in historical records, or future climate simulations.
Other scenarios of compound events based upon observed events from the past also require more
detailed investigation. Here, we will concentrate on TCs and bushfires; ECLs; and droughts and
floods.
Tropical Cyclones and Bushfires
The south-west of Western Australia experienced a compound bushfire, severe wind, storm surge,
and heavy rainfall event during TC Alby in April 1978 (Figure CE2). Such an event has the potential to
be far more extreme in a warming climate and could be expected to have catastrophic consequences
for this region. The rarity of these events makes the determination of their likely recurrence and
impacts challenging to quantify. However, due to their high impact potential, they are worthy of
scenario analyses. These scenarios could then serve as a basis for developing mitigation and
adaptation strategies to lessen the potential impact.
Figure CE2 Track of TC Alby, April 1978. Source: Australian Bureau of Meteorology.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 100
East Coast Lows
An illustration of how extensive the damage from multi-day, multi-peril, multi-state events can be is
given by the major ECL event of June 1867. This event produced the record floods of the
Hawkesbury River that peaked in the town of Windsor. An internal IAG research project investigated
this event using all available newspapers and other sources. Extensive damage was reported across
four states over five days (Figure CE3). Leading up to this event, widespread, good rains fell across
eastern Australia. This rain resulted in full rivers and high levels of soil moisture, laying the
groundwork for the severe flooding from the ECL event. It is apparent from the large-scale weather
system that produced the record flooding that the event had two phases. The initial intense period
resulted in the flooding of rivers in the Goulburn, Yass, Braidwood and inland parts of northern and
western New South Wales (west of the ranges), and the Hunter and Clarence Rivers through Grafton.
In addition to the flooding, severe thunderstorm activity was reported at Mudgee. Then the second,
even more, intense phase of the weather system struck. The available data suggested that this was
likely a powerful, extensive, multi-centred ECL during its most intense period.
There have been no analogues to this weather system for the last 220 years as records indicate the
size of these floods eclipsed those experienced and documented in the 1799-1800, 1806 and 1857
severe flood events. If these events were to occur today, the consequences would be catastrophic.
Yet little research is available to quantify how these extreme and very rare events are likely to be
affected by on-going climate change.
Multiple ECLs can affect New South Wales in close succession, such as the ECLs that occurred in
the May-June period of 1974. In more recent times another sequence of highly damaging ECLs
occurred. Over the period 3-7 June 2016, an intense ECL formed that produced insured damage of
$432 million. Only two weeks later, 18-20 June, a second major damage-producing ECL occurred.
Research is needed to identify the large-scale environments conducive to these sequential events.
5. CHANGES TO EXTREMES FOR DIFFERENT WARMING SCENARIOS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 101
Figure CE3 Summary of the major impacts of the major ECL event spanning the period 21-24 June 1867.
Source: Internal IAG research.
From Drought to Flooding Rains
The year 2020 has also demonstrated how a major transition can occur from extreme heat, drought
and bushfire weather (September 2019 to February 2020), to widespread floods, with the transition
occurring within a week. In addition to this, in January 2020, the first connected hailstorm event to
affect three capital cities – Melbourne, Canberra and Sydney – occurred. All three events produced
billions of dollars of damage. Some communities affected by the 2019-20 bushfires were affected by
large hail and damaging floods. There is a pressing need to understand the connections between
these apparently separate yet connected extreme events.
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 102
6. CONCLUSIONS
This report provides a comprehensive review of the latest climate change science, with a focus on the
Australian region, and on weather and climate extremes that drive property risk.
Climate change is not just about the future: there is already solid evidence that there have been
measurable changes to weather and climate extremes from the warming experienced to date.
Although the impacts of climate change at larger geographical scales and longer time frames are
quite well understood, they can mask significant nuances at regional and local scales.
That has driven the approach in preparing this report. It combines the extensively available literature
with well-considered expert judgement to gain a better understanding of how climate change
influences the various extreme weather events across Australia (as summarised in Table ES1).
Using the available continental scale information, this report derived regional scale insights that aim to
provide meaningful direction and trigger further collaboration and coordination among communities,
academia, businesses and government. The key assessments are:
1. The frequency of named tropical cyclones in the Australian region has declined in recent
decades, but the details of how this will project into the future is uncertain. Globally a slight
reduction in TC frequency is expected. However, over the past 30 years, the proportion of the
most destructive TCs has increased at the expense of weaker systems, and this change is
expected to continue. The frequency of landfalling TCs throughout the western South Pacific
region has increased.
There has already been a poleward shift in the regions where TCs reach their peak intensity
and this is expected to continue. TC risk, therefore, is expected to increase most rapidly in the
south-east Queensland / north-east New South Wales regions, followed by the coastal
districts south of Shark Bay in Western Australia. Marginal decreases in risk for wind impacts
may occur in some northern regions.
Planning for inland penetration of TCs should be based on substantial increases in both
rainfall rate and affected areas. Winds are also likely to decay more slowly, so increased wind-
driven rainfall ingress should be expected both inland and along the coast. More intense
storms, combined with rising sea levels, point to increasing storm surge impacts, and these
may be very substantial in some regions.
2. Intense, short-duration, rainfall is expected to increase almost everywhere in Australia,
resulting in more frequent flooding in urban areas and in small river catchments. Storm rainfall
totals from both ECLs and tropical systems are also expected to increase, leading to
increased flood risk in the larger river catchments. More work is required to understand and
confidently assess these changes.
3. Areas at risk of large and giant hail should progressively shift southwards. The largest
increase in risk is likely to be in the region inland from the Hunter River, south through the
central and southern New South Wales highlands, and central-to-eastern Victoria. Slower
increases are assessed to affect the south-west of Western Australia. At the same time,
severe hail risk is expected to decrease in northern-to-central Queensland, extending further
southward with ongoing increases in warming.
CONCLUSIONS
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 103
4. The multi-day impacts of ECLs on the south-eastern seaboard of Australia are expected to
increase because of wind-driven rainfall ingress, and flash and fast-response riverine flooding.
This effect will be compounded by rising impacts from storm surge, waves, and coastal
erosion. The most damaging warm-cored and hybrid-cored ECL activity, most common in
summer to autumn, is expected to increase. Other types of ECLs, notably the winter-spring
systems, are expected to decrease. There is limited understanding of the subset of rare
extreme ECLs that drive the majority of property damage over land.
5. Longer periods of drought and coincident extreme heatwaves will exacerbate the bushfire risk,
noting these will be driven in part by future climate changes to the ENSO cycles. Bushfire risk,
as measured by the trends in meteorologically-based fire danger indices, is likely to increase
in almost all locations nationally, leading to more frequent and extreme events, and longer fire
seasons. The rate of increase varies by location and will depend on weather system changes
and site-specific factors at regional scales.
6. Sea level rise is expected to accelerate around the Australian coastline, but at differing rates.
Notably, past assessments of sea level rise are lower than recent observations. Sea level rise
will contribute substantially to escalating impacts from storm surge and the effects on coastal
natural systems, buildings and infrastructure. The greenhouse gases that are already present
will cause sea level rises to continue for the next couple of centuries, even if there are
significant emission reductions globally through the coming decades.
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 104
GLOSSARY
Term Definition Source
Advanced Dvorak
Technique (ADT)
ADT is a computer-based algorithm that determines TC
intensity using geostationary Infrared satellite imagery and is
based on the traditional Dvorak technique. It provides
uniformity compared with manual methods.
NOAA
Annual Exceedance
Probability (AEP)
An annual exceedance probability (AEP) is the probability of
an event occurring in any given year. i.e. A 1% AEP means
there is a 1% chance in any given year of the event
occurring. This is often used to describe the probability of
river flooding at a location.
Australian tropical
cyclone database
Details of all tropical cyclones that are known to have
occurred in the Australian region (90oE-160oE south of
Indonesia and PNG) are contained in a database maintained
by the Bureau of Meteorology. After a tropical cyclone has
occurred, tropical cyclone meteorologists reanalyse the
cyclone data and compile what is known as the 'best track'
and a report.
http://www.bom.gov.au/cyclone/tropical-cyclone-knowledge-
centre/databases/
BOM
Bushfire Attack
Level (BAL)
The Australian Standard, AS 3959, divides bushfire prone
areas into six bushfire attack levels (BAL), based on the
region, slope and vegetation, to classify the severity of a
building’s potential exposure to ember attack, radiant heat
and direct flame contact.
https://www.rfs.nsw.gov.au/plan-and-prepare/building-in-a-bush-fire-
area/building-after-bush-fire/your-level-of-risk
NSW RFS
Carbon capture and
storage (CCS)
technology
The process of trapping carbon dioxide at its emission
source, transporting it to a storage location, and isolating it
there.
CSIRO
Clausius-Clapeyron
relationship
Clausius-Clapeyron equation relates saturation vapour
pressure to the air temperature. Vapour pressure is the
pressure exerted by water vapour alone. As air warms, its
capacity to hold water increases at the Clausius-Clapeyron
rate (CC, approximately 7% °C−1) https://www.theweatherprediction.com/habyhints2/646/
CLEX Centre of Excellence for Climate Extremes (CLEX) is an
international research consortium of five Australian
CLEX
GLOSSARY
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 105
Term Definition Source
universities and a network of national and international
partner organizations supported by the Australian Research
Council.
https://climateextremes.org.au/
CLIVAR CLIVAR (Climate and Ocean: Variability, Predictability and
Change) is one of the four core projects of the World Climate
Research Programme (WCRP)
http://www.clivar.org/
CLIVAR
CMIP5 models,
CMIP6
Coupled Model Inter-comparison Project (CMIP) is to
understand past, present and future climate changes arising
from natural, unforced variability or in response to changes in
radiative forcing in a multi-model context. It includes
assessments of model performance during the historical
period and quantifications of the causes of the spread in
future projections. In addition to these long-time scale
responses, experiments are performed to investigate the
predictability of the climate system on various time and space
scales as well as making predictions from observed climate
states. An important goal of CMIP is to make the multi-model
output publicly available in a standardized format. The
number refers to the generation of climate models in that
particular time.
https://www.wcrp-climate.org/wgcm-cmip
WCRP
Decadal Prediction
Large Ensemble
modelling (DPLE)
Decadal Prediction Large Ensemble (DPLE) is a set of
simulations carried out at NCAR to support research into
near-term Earth System predictions. The DPLE comprises 64
distinct ensembles, one for each of 62 initialization times
(November 1 of 1954, 1955, ..., 2016, 2017). For each start
date, a 40-member ensemble was generated by very slight
random perturbations in the atmospheric initial conditions.
The initial conditions for the atmosphere and land models
were obtained from the Large Ensemble (LENS) simulations
at corresponding historical times.
http://www.cesm.ucar.edu/projects/community-projects/DPLE/
NCAR
Dvorak analysis An analysis procedure, named after Vern Dvorak, for
determining tropical cyclone / hurricane intensity from cloud
patterns in satellite images.
AMS
GLOSSARY
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 106
Term Definition Source
East Coast Low
(ECL)
East Coast Lows are intense low-pressure systems which
occur on average several times each year off the eastern
coast of Australia, in particular, southern Queensland, New
South Wales and eastern Victoria
BOM
El Niño-Southern
Oscillation (ENSO)
El Niño refers to the warming of the oceans in the equatorial
eastern and central Pacific and Southern Oscillation is the
changes in the climate associated with this warming (hence
'Southern Oscillation Index' to measure these changes).
'ENSO' is used to describe the whole suite of changes
associated with an 'El Niño' event - to rainfall, oceans,
atmospheric pressure etc.
BOM
Ensemble modelling Ensemble modelling is a process where many computer
models (which may be from difference weather centres or
variants of the one model) are used to predict the range of
possible outcomes by examining the aggregate output from
the many models.
Fast response
catchments
A fast response catchment is a river catchment that responds
rapidly (usually within 6 hours) to heavy rain. They tend to
produce floods of short duration with rapidly rising water
levels (e.g. high peak discharge).
Forest Fire Danger
Index (FFDI)
The McArthur Forest Fire Danger Index (FFDI) was
developed in the 1960s by CSIRO scientist A. G. McArthur to
provide a consistent index of the weather component of
danger of fire in Australian forests. The index combines a
measure of dryness, based on rainfall and evaporation, with
meteorological variables for wind speed, temperature and
humidity.
Wikipedia
GFDL Geophysical Fluid Dynamics Laboratory (GFDL) at the
National Oceanic and Atmospheric Administration (NOAA)
https://www.noaa.gov/
https://www.gfdl.noaa.gov/about/
IBTrACS IBTrACS (International Best Track Archive for Climate
Stewardship) provides global tropical cyclone best track data
in a centralized location to aid our understanding of the
UCAR
GLOSSARY
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 107
Term Definition Source
distribution, frequency, and intensity of tropical cyclones
worldwide.
https://climatedataguide.ucar.edu/climate-data/ibtracs-tropical-cyclone-
best-track-data
Indian Ocean Dipole
(IOD)
The IOD is the difference in sea surface temperature
between two areas (or poles, hence a dipole) – a western
pole in the southern Arabian Sea (western Indian Ocean) and
an eastern pole in the eastern Indian Ocean south of
Indonesia.
BOM
Insurance Council of
Australia (ICA)
The Insurance Council of Australia is the representative body
of the general insurance industry in Australia.
https://www.insurancecouncil.com.au/
ICA
Interdecadal Pacific
Oscillation (IPO)
The IPO is a large-scale, long period oscillation that
influences climate variability over the Pacific Basin. The IPO
operates at a multi-decadal scale, with phases lasting around
20 to 30 years.
NIWA
Intergovernmental
Panel on Climate
Change (IPCC)
www.ipcc.ch
The IPCC is the United Nations body for assessing the
science related to climate change and prepares assessment
reports about the state of scientific, technical and socio-
economic knowledge on climate change and its impacts.
IPCC
La Niña The extensive cooling of the central and eastern Pacific
Ocean. In Australia (particularly eastern Australia), La Niña
events are associated with an increased probability of wetter
conditions.
BOM
Latitude of Lifetime
Maximum Intensity
(LLMI)
The Latitude of LMI.
Lifetime Maximum
Intensity (LMI)
The Lifetime Maximum Intensity (LMI) is the maximum
intensity, defined by the greatest difference in pressure
between the central pressure of a TC and the environmental
pressure, of a TC during its lifetime.
GLOSSARY
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 108
Term Definition Source
NARCliM The New South Wales and ACT Regional Climate Modelling
(NARCliM) Project is a research partnership between the
New South Wales and ACT governments and the Climate
Change Research Centre at the University of New South
Wales. It has produced an ensemble of regional climate
projections for SE Australia that can be used by the New
South Wales and ACT community to plan for the range of
likely future changes in climate.
https://climatechange.environment.New South Wales.gov.au/Climate-
projections-for-New South Wales/About-NARCliM
NARCliM
NCCARF The National Climate Change Adaptation Research Facility
(NCCARF) works to support decision makers throughout
Australia as they prepare for and manage the risks of climate
change and sea-level rise. NCCARF has a national focus
across Australia to build resilience to climate change in
government, NGOs and the private sector.
https://www.nccarf.edu.au/
Pre-industrial levels 'Pre-industrial levels' refer to the period before the start of the
industrial revolution, notionally 1850-1900.
IPCC
RCP2.6 scenario The RCP2.6 scenario is very stringent pathway considered
by the IPCC, that requires removal of some of the CO2
present in the atmosphere.
NIWA
RCP8.5 scenario The RCP8.5 scenario is essentially ‘business as usual’ with
very high greenhouse gas concentrations out to 2100 and
beyond.
The Special Report on Emissions Scenarios (SRES) A2
pathway used in the AR4 IPCC report is similar to the current
RCP8.5 scenario.
NIWA
Representative
Concentration
Pathway (RCP)
A RCP is a greenhouse gas concentration (not emissions)
trajectory adopted by the IPCC (based on levels pre 1750).
Lower numbers relate to lower GHG concentrations.
NIWA
GLOSSARY
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 109
Term Definition Source
Saffir Simpson
Intensities
A 1 to 5 classification scheme for US hurricane intensity
based on the maximum one-minute average surface wind
speed and the type and extent of damage done by the storm.
The intensities for 1 to 5 are: 1) 64-82 kt, 2) 83-95 kt, 3) 96-
112 kt, 4) 113-136 kt, and 5) 137 kt and higher. These
categories are used by weather forecasters in North America
to characterize the intensity of hurricanes for the public. The
Saffir Simpson classification is NOT the system used by the
BOM in Australia.
AMS
Scatterometer A scatterometer is a microwave radar sensor which
measures the reflection (or scattering effect) produced while
scanning the surface of the Earth from an aircraft or a
satellite. This can be used to measure global sea-surface
wind speed and direction.
https://winds.jpl.nasa.gov/aboutscatterometry/
NASA
Southern Oscillation
Index (SOI)
The Southern Oscillation Index (SOI) is calculated from the
monthly or seasonal fluctuations in the mean sea level air
pressure difference between Tahiti and Darwin.
BOM
South Pacific
Convergence Zone
(SPCZ)
The SPCZ is a band of low-level convergence, cloudiness
and precipitation extending from the east of Papua New
Guinea south-eastwards towards French Polynesia and as
far as the Cook Islands. The SPCZ is a portion of the
Intertropical Convergence Zone (ITCZ).
Wikipedia
Tropical cyclones Tropical cyclones are intense low-pressure systems which
form over warm ocean waters at low latitudes that must have
10-minute average wind speeds around more than half the
circulation of 63 km/h (34 knots) or more. Tropical cyclones
can cause extensive damage as a result of the strong wind,
flooding (caused by either heavy rainfall or ocean storm
surges). If they attain maximum mean winds above 117 km/h
(63 knots) they are called severe tropical cyclones. In the
north-west Pacific severe tropical cyclones are known as
typhoons and in the north-east Pacific and Atlantic/Caribbean
they are called hurricanes.
The severity of a tropical cyclone is described in terms of
categories ranging from 1 (weakest) to 5 (strongest) related
to the maximum mean wind speed as shown in this table.
BOM
GLOSSARY
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 110
Term Definition Source
Note: corresponding wind gusts are also provided as a guide.
Stronger gusts may be observed over hilltops, in gullies and
around structures.
Category Strongest
Gust
(km/h)
Typical Effects
1 < 125 Damaging winds. Negligible house damage.
Damage to some crops, trees and caravans.
Craft may drag moorings.
2 125 - 164 Destructive winds. Minor house damage.
Significant damage to signs, trees and
caravans. Heavy damage to some crops. Risk
of power failure.
3 165 - 224 Very destructive winds. Some roof and
structural damage. Some caravans destroyed.
Power failures likely.
4 225 - 279 Significant roofing loss and structural damage.
Many caravans destroyed and blown away.
Dangerous airborne debris. Widespread power
failures.
5 > 279 Extremely dangerous with widespread
destruction.
WeatheX WeatheX is a mobile phone-based application to allow the
public to report the severity, location and timing of hail, wind
damage, flooding and tornadoes.
https://climateextremes.org.au/weathex/
CLEX
SEVERE WEATHER IN A CHANGING CLIMATE – 2ND EDITION 111
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