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Snow Water Equivalent Variations in Snow Water Equivalent Variations in Western Canada – Climate Change Western Canada – Climate Change Related Impacts for Hydropower Related Impacts for Hydropower
ProductionProduction
Anne Walker
Climate Research Branch, Meteorological Service of Canada
PERD CCIES Workshop
January 22-24, 2003
Importance of Snow Cover for Importance of Snow Cover for Hydropower ApplicationsHydropower Applications
Seasonal snow cover is a dominant feature of the Canadian landscape for a large part of the year
Snow cover is a major source of water in the hydrologic cycle for northern climates such as Canada
knowledge of the water equivalent of the snow cover (SWE) over a basin during a winter season is one of the most important pieces of information for management of hydropower facilities
snow cover is closely tied to air temperature and precipitation
changes in these climate variables will have a direct impact on SWE amounts and distribution
understanding of recent variations/changes in snow cover (SWE) and related impacts on hydropower production is necessary to be able to predict the future impacts on the hydroelectric industry due to climate-related changes in snow cover
PERD SWE Project ObjectivesPERD SWE Project Objectives
(1) to create a 20-year time series (1979-1999) of satellite-derived snow water equivalent (SWE) over selected basins in western Canada that are of key importance to hydropower production
(2) analyse the spatial and temporal variations in snow water equivalent depicted in the time series and determine the vulnerability of hydropower facilities during the 20 year period to provide a baseline for future expected changes
(3) using future climate scenarios based on output from the Canadian global climate model (GCM) and/or other GCM’s, develop scenarios of change in SWE and assess the expected impacts of these changes on hydropower operations over the next 50-100 years
(4) conduct a preliminary assessment of the feasibility of incorporating satellite derived SWE into regional climate models
Cryosphere in the Climate SystemCryosphere in the Climate System
CRB/MSC research theme focussed on understanding the role of the cryosphere in the climate system
Conducting studies on the spatial and temporal variability of cryospheric elements using both conventional and satellite data sets and relationships with climate variability.
Development, validation and implementation of new techniques to use remote sensing for the measurement of cryospheric and other climate variables.
Optical and microwave satellite data (e.g., AVHRR, SSM/I) Airborne, ground-based microwave radiometers
Passive Microwave Satellite Remote Passive Microwave Satellite Remote Sensing for Snow CoverSensing for Snow Cover
scattering of emitted earth radiation by snow cover provides basis for SWE/depth retrieval, areal snow extent
SSM/I – coverage of large regions in Canada at least 2X daily
Day and night sensing; spatial resolution = 25 km
Improved spatial and temporal coverage over conventional measurements
Near real-time access to data (via CMC) provides capability to support operational applications
20+ year data record with SSM/I (1987-present) + SMMR (1978-87) suitable for analyses of temporal variability (climate research applications)
Example of DMSP SSM/I satellite coverage over North America in one day.
MSC conventional networks - snow
CRB/MSC Passive Microwave Snow Cover CRB/MSC Passive Microwave Snow Cover ResearchResearch
Main objective: develop, validate and refine empirical
and theoretical algorithms of snow cover properties in varying climatic regions and landscapes of Canada using passive microwave data
focus on SWE algorithm development and validation
satellite, airborne and ground-based radiometers
field campaigns information products for operational
agencies (e.g. flood forecasting, hydro-power, weather prediction)
collaboration with university research partners (CRYSYS)
Study sites: [1] Southern Prairies (agricultural) [2] Boreal Forest (forest) [3] Mackenzie Basin (forest, tundra) [4] Central Quebec (taiga) [5] New Brunswick (dense forest) [6] Southern Ontario (agricultural, forest) [7] [8] Arctic Islands (tundra)
Passive Microwave SWE AlgorithmsPassive Microwave SWE Algorithms Prairie (open) algorithm
SWE algorithm developed using airborne microwave radiometer data set (1982 experiment) weekly SWE maps produced using SSM/I data since 1989
SWE = a + b (TB37V - TB19V)
18
Boreal forest algorithms 3 forest SWE algorithms derived using BOREAS airborne microwave radiometer data,
ground SWE data coniferous, deciduous, sparse forest
4 algorithms applied to gridded SSM/I data with addition of land cover classification data to yield an overall SWE value that takes into account effects of land cover variations
SWE = FDSWED + FCSWEC + FSSWES + FOSWEO
D - deciduous; C - conifer, S - sparse forest, O - open
SWEi = A + B (37V - 19V)
Fi = Land cover fraction per grid point (i = D, C, S or O)
Regional SWE Monitoring – Canadian Regional SWE Monitoring – Canadian
PrairiesPrairies
Operational products generated using prairie and boreal forest SWE algorithms
Weekly SWE maps for 3 prairie provinces
Products available to public via internet – State of the Canadian Cryosphere website (www.socc.ca)
Products distributed via e-mail to a variety of users: Federal government: MSC, Water Survey of Canada, Agriculture Canada, Canadian Wheat Board
Provincial government: Alberta Environment, Manitoba Conservation, BC Environment, Lands and Parks
Hydroelectric companies: Manitoba Hydro, NWT Power Corporation, BC Hydro
Other users: Red River Basin Disaster Information Network, Lake of the Woods Control Board, Electric Power Group (New York, USA), Private citizens (for recreation, tourism)
SSM/I SWE Map for January 22, 2003
Specialized SWE Products for Specialized SWE Products for Hydropower ApplicationsHydropower Applications
Manitoba Hydro receives weekly SWE maps (Canadian prairie region and Manitoba focus)
Used in making reservoir operating decisions (input to weekly water planning meetings)
Snare River Basin – NWT
Weekly SWE maps for the Snare River basin are produced before and during spring melt for NWT Power Corporation for use in planning hydroelectric power operations
Relationships with hydropower clients have already been established through operational SWE products – introduction of satellite derived products into their operational activities
PERD SWE Project Objectives – PERD SWE Project Objectives – Progress to DateProgress to Date
(1) to create a 20-year time series (1979-1999) of satellite-derived snow water equivalent over selected basins in western Canada that are of key importance to hydropower production
(2) analyse the spatial and temporal variations in snow water equivalent depicted in the time series and determine the vulnerability of hydropower facilities during the 20 year period to provide a baseline for future expected changes
(3) using future climate scenarios based on output from the Canadian global climate model (GCM) and/or other GCM’s, develop scenarios of change in SWE and assess the expected impacts of these changes on hydropower operations over the next 50-100 years
(4) conduct a preliminary assessment of the feasibility of incorporating satellite derived SWE into regional climate models
Objective 1: Creation of SWE Time Objective 1: Creation of SWE Time SeriesSeries
Need to understand spatial and temporal variations in snow cover and relationships to climate
Availability of SSM/I and SMMR data in a consistent 25 km grid format (EASE-Grid)
temporal coverage: October 1978 to December 2001
Opportunity to look at spatial and temporal variations in snow cover over 20+ years and relate to climate/atmospheric circulation
Can we safely combine SMMR and SSM/I records, apply current algorithms and be certain that resulting trends are real or related to sensor differences?
SMMR-SSM/I continuity issues were identified after applying SWE algorithms to passive microwave time series
Focus of research by PDF at CRB (Dr. Chris Derksen – expertise in snow-climate interactions)
Discontinuity in SWE Time SeriesDiscontinuity in SWE Time Series
0
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tud
y A
rea S
WE
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m)
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dy A
rea S
CA
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uare
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SWE
SCA
78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 0079 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 00 01
SMMR SSM/I
SMMR period dominated by lower snow-covered area (SCA) and SWE in comparison with SSM/I time period.
Is this “real” or the result of SWE algorithm performance w.r.t. differences between the two EASE-Grid data products?
Comparisons with Comparisons with in-situin-situ Data Data
0%
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Mo
ose
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nip
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do
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% o
f O
bse
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ion
s
SMMR Overestimation
SMMR Underestimation
SMMR No Difference
Bias not observed with SSM/I derived SWE estimates, indicating systematic SWE underestimation during SMMR years.
0%
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Mo
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awin
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Saskato
on
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nip
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Bran
do
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% o
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ion
s
SSM/I Overestimation
SSM/I Underestimation
SSM/I No Difference
******
*
SMMR derived SWE estimates are consistently too low relative to surface data.
Removal of Sensor Bias in SWE Time SeriesRemoval of Sensor Bias in SWE Time SeriesSMMR and SSM/I brightness temperature regressed during overlap period for midlatitude terrestrial study area.
SMMR18V = 0.936▪SSM/I19V + 8.24
SMMR37V = 0.900▪SSM/I37V + 21.89
Subsequently, all SMMR brightness temperatures adjusted to the SSM/I F-8 baseline, and SWE reprocessed.
-3
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nd
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E A
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y
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Sta
nd
ard
ized
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E A
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y
BeforeAdjustment
AfterAdjustment
Evaluation of AdjustedEvaluation of Adjusted SWESWE TimeTime SeriesSeries Evaluation indicates this adjusted dataset is suitable for time series analysis:
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-15
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-5
0
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Dec. 1 Jan. 1 Feb. 1 AllObservations
Ave
rag
e B
ias,
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row
ave
- in
sit
u (
mm
)
SMMR (Unadjusted)
SMMR (MidlatitudeAdjustm ents)
0%
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SMMR (Unadjusted) SMMR (MidlatitudeAdjustm ents)
SSM/I (Unadjusted)
Fre
qu
ency
SWE Overestim ation
SWE Underestim ation
Objective 2: Analysis of SWE VariabilityObjective 2: Analysis of SWE VariabilityRotated principal components analysis (1978/79 – 2000/01) of pentad to pentad change-in-SWE (SWE) produces dominant synoptic-scale regional accumulation and ablation patterns:
PC3 PC4+ - + -
PC1 PC2+ - + -
15.1% 4.4%
4.0% 3.7%
PCA results integrated with other datasets to explore linkages with atmospheric circulation: NCEP gridded atmospheric data Quasi-geostrophic model output Teleconnection indices
Next Steps (towards March 2004)Next Steps (towards March 2004)
Completion of Objective (2) Comparison of SWE variations with temperature and precipitation over the same time period
(baseline) Acquire feedback on baseline SWE time series from hydropower clients
Address Objective (3) Acquisition and analysis of climate change scenarios for temperature and precipitation (50-100
years) Identification of potential changes in snow cover (SWE) Solicit feedback on results from hydropower clients
Summary Report documenting results from Objectives (1)-(3)
Evaluation of data from new passive microwave sensors AMSR-E on EOS Aqua satellite (May 2002), AMSR on ADEOS-2 (December 2002) Both sensors provided enhanced spatial resolution (10 km) Snow cover field validation campaign planned Canadian Prairies in February 2003 (CRYSYS
project)
Assessment of the feasibility of incorporating satellite derived SWE into regional climate models
Linkage with CRCM (CRB research) established – use of SSM/I derived SWE to compare with model output