HIPPO: CO2 and O2 Analysis Plans
Britton Stephens (NCAR EOL) and HIPPO Science Team
[IPCC, 2007] Uncertainty due to people
Uncertainty due to trees and
oceans
}
Uncertainty due to climate
models
Climate projections are sensitive to human decisions, and physical and carbon cycle
feedbacks
Tropical Land and Northern Land fluxes plotted versus annual-mean northern-
hemisphere vertical CO2 gradient
Continental-scale carbon fluxes inferred from surface data are still very uncertain, owing to biases in atmospheric CO2 transport
[Gurney et al., 2004; Stephens et al., 2007]
• PIs: Harvard, NCAR, Scripps, NOAA• Global and seasonal survey of CO2, O2, CH4, CO, N2O, H2, SF6, COS, CFCs, HCFCs, O3, H2O, CO2 isotopes, Ar, black carbon, and hydrocarbons
• NSF / NCAR Gulfstream V• 5 campaigns over 4 years• Continuous profiling from surface to 10 km and to 15 km twice per flight
• hippo.ucar.edu (also Facebook, Twitter, YouTube)
67 S, Southern Ocean Brooks Range, AlaskaPago Pago, American Samoa
HIPPO_2 Nov 2009
HIPPO_3 Mar-Apr 2010HIPPO_1 Jan 2009
preHIPPO Apr-Jun 2008
A global mission has 11 flight segments in 3 weeks; denotes PBL sample (~ 150 in each global program).
HIPPO Aircraft Instrumentation – over 100 measurements of over 80 unique species
O2:N2, CO2, CH4, CO, N2O , other GHGs, CO2 isotopes, Ar/N2, COS, halocarbons, solvent gases, marine emission species, many more
Whole air sampling: NWAS (NOAA), AWAS (Miami), MEDUSA (NCAR/Scripps)
O3 (1 Hz)NOAA GMD O3
T, P, winds, aerosols, cloud waterMTP, wing stores, etcBlack Carbon (1 Hz)NOAA SP2H2O (1 Hz)Princeton/SWS VCSEL
CO, CH4, N2O, CFCs, HCFCs, SF6, CH3Br, CH3Cl, H2, H2O
NOAA- UCATS, PANTHER GCs (1 per 70 – 200 s)
CO (1 Hz)NCAR RAF CO
O3 (1 Hz)NOAA CSD O3
CO2 (1 Hz)Harvard OMS CO2
O2:N2 , CO2 (1 Hz)NCAR AO2CO2, CH4, CO, N2O (1 Hz)Harvard/Aerodyne - QCLS
What happens when you measure CO2 five ways on an airplane?
HIPPO Seasonal Coverage
April 2010 (HIPPO3) CO2 Gradients
Oct-Jan
Mar-Jun
Jul-Sep
April 2010 (HIPPO3) CO2 Gradients
HIPPO 1 Southbound January, 2009
HIPPO 2 Southbound November, 2009
HIPPO 3 Northbound November, 2009
HIPPO 1 and 2 and NOAA CarbonTracker Comparisons
Without improving transport models, or waiting for them to be improved, there are already metrics that can be applied independent of transport errors:
• Interannual variability
• Terrestrial CO2: Growing season net flux (GSNF) and dormant season net flux (DSNF)
• Oceanic O2: Seasonal net outgassing (SNO), seasonal net ingassing (SNI)
• Tracer-tracer correlations (e.g. O2:CO2 ratios)
LEF Column Average
[Gurney et al., GBC 2004]
[Yang et al., GRL 2007]
“(unoptimized) CASA underestimates GSNF by ~ 25%”
LEF
“vertically-integrated observations . . . provide a measure of CO2 variations that is not highly sensitive to error in the transport fields. As a group, the seasonal cycle in column CO2 is most sensitive to the seasonal fluxes themselves.” TCCON data
now calibrated using HIPPO
[Nakatsuka and Maksyutov, BGS 2009]
Using light-aircraft profile data:
“Surface-optimized CASA underestimates GSNF by 15%”
Have successfully said what the world is not (CASA), now let’s say what it is – define hemispheric GSNF and DSNF over multiple years
“Our simulations suggest that boreal growing season NEE (between 45-65°N) is underestimated by ~40% in CASA.”
[Keppel-Aleks, et al., Biogeosci., 2011]
TCCON data now calibrated using HIPPO
Hypothesis: like column averages, integrated HIPPO slices are also much less sensitive to atmospheric transport errors.
Plan:
• Average HIPPO CO2 over Northern Hemisphere for 9 slices
• Model runs to test hypothesis• Combined analysis with TCCON and light-aircraft profile data
Goal:
• GSNF and DSNF values as a rigid constraint on global ecosystem models
Without improving transport models, or waiting for them to be improved, there are already metrics that can be applied independent of transport errors:
• Interannual variability
• Terrestrial CO2: Growing season net flux (GSNF) and dormant season net flux (DSNF)
• Oceanic O2: Seasonal net outgassing (SNO), seasonal net ingassing (SNI)
• Tracer-tracer correlations (e.g. O2:CO2 ratios)
[Keeling and Shertz, Nature 1992]
[Garcia and Keeling, JGR 2001]
[Najjar and Keeling, GBC 2000]
Seasonal Net Outgassing
ORCA-PISCES-T underestimates → outgassing in December, but overestimates seasonal fluxes (as seen in H2 and H3), suggesting timing issues
Atmospheric Potential Oxygen (O2 + 1.1 * CO2) highlights oceanic exchange processes
↑
Dissolved O2 climatology performed well in comparison to surface stations but appears to overestimate outgassing when airborne data included
per meg
T. Blaine Dissertation, 2005
10 Transcom models forced with a common seasonal ocean O2 flux field differ on surface concentration amplitude by a factor of 2.
Models converge on predictions of seasonal amplitudes for altitude-latitude integrated 180 W slices
Altitude-latitude integrated 180 W slices are equivalent to zonal means
J. Bent, dissertation in progress
Conclusions
• HIPPO data provide critical tests of global atmospheric transport models as well as constraints on surface fluxes that are independent of atmospheric transport model differences.
• For CO2, winter build-up pervades the entire NH troposphere, with efficient mixing from low latitude/altitude to high latitude/altitude, whereas models tend to trap high CO2 near the surface in winter.
• The NCAR AO2 instrument has detected the broad influence of Southern Ocean O2 fluxes for the first time, providing important constraints on ocean biogeochemistry and tests for models of carbon/climate feedbacks.
• Other science highlights to date have included Arctic CH4 fluxes, tropical N2O fluxes, global H2O transport, and black carbon distributions.
• With over 80 other species measured, many additional research avenues can be followed.
HIPPO Science Team: Harvard University: S. C. Wofsy, B. C. Daube, R. Jimenez, E. Kort, J. V. Pittman, S. Park, R. Commane, Bin Xiang, G. Santoni; (GEOS-CHEM) D. Jacob, J. Fisher, C. Pickett-Heaps, H. Wang, K. Wecht, Q.-Q. Wang
National Center for Atmospheric Research: B. B. Stephens, S. Shertz, P. Romashkin, T. Campos, J. Haggerty, W. A. Cooper, D. Rogers, S. Beaton , R. Lueb
NOAA ESRL and CIRES: J. W. Elkins, D. Fahey, R. Gao, F. Moore, S. A. Montzka, J. P. Schwartz, D. Hurst, B. Miller, C. Sweeney, S. Oltmans, D. Nance, E. Hintsa, G. Dutton, L. A. Watts, R. Spackman, K. Rosenlof, E. Ray
UCSD/Scripps: R. Keeling, J. Bent
Princeton: M. Zondlo, Minghui Diao
U. Miami: E. A. Atlas
TCCON: Vanessa Sherlock et al.
JPL: M. J. Mahoney; (AIRS) M. Chahine, E. Olsen
Cooperating modeling groups: ACTM P. Patra, K. Ishijima; GEMS-MACC R. Engelen; TM3/TM5 Sara Mikaloff-Fletcher;
Wofsy slides:
Carbon Cycle Highlight: CH4 release from Arctic ecosystemsThere is very strong interest in determining if Arctic warming is leading to large releases
of CO2 and CH4. But strong pollution inputs into the Arctic mask these diffuse emissions.
The HIPPO-2 transect in early November was a golden time to study this phenomenon: soils were still warm, but biomass fires were over and the Arctic airmass did not yet cover northern pollution sources. We found very strong pollution signals high in the
Arctic atmosphere (blue points, a surprise in itself), and the unmistakable signature of non-pollution inputs in the lower atmosphere over the whole Arctic Basin (red points).
(E. Kort, S. Wofsy, Harvard)
-80 -60 -20 0 20 40 60 80
N2O
321
323
325
500m4500m
Highlights: Sources of N2O
The observed distribution of N2O was completely different than predicted by models, even those that gave excellent
results when inverted using surface data, and which did well for SF6. Inverse modeling using the ACTM model of P. Patra
and K. Ishijima showed that N2O from strong sources in S. and S. E. Asia are lofted into the middle tropical troposphere.
Since this part of the distribution had never been seen before, models did not previously attribute global sources correctly.
(E. Kort, Harvard; P. Patra, K. Ishijima (JAMSTEC))
Biomass-burning from SE Asia
Asian pollution lofted high into the Arctic troposphere; "blackened" atmosphere in November, 2009.
Biomass burning plumes from SE Asia contributed to gigantic BC
loadings between ITCZ and ~40°N
Very low BC loadings in southern hemisphere (SH)—
much lower than models Large BC loadings in northern hemisphere (NH) with loadings comparable to those in urban areas,
originating in SE Asia (movie)
Strong interhemispheric gradient at the ITCZ
HIPPO-3, April 2010 Southbound
Low BC in SH
HIGHLIGHTS: BLACK CARBONAPRIL 2010
BC results from J Schwarz, R. Spackman, D. Fahey (NOAA); Movie courtesy Brad Pierce, NOAA
RAQMS CO simulation
Carbon Cycle Highlight: CH4 release from Arctic ecosystemsThere is very strong interest in determining if Arctic warming is leading to large releases
of CO2 and CH4. But strong pollution inputs into the Arctic mask these diffuse emissions.
The HIPPO-2 transect in early November was a golden time to study this phenomenon: soils were still warm, but biomass fires were over and the Arctic airmass did not yet cover northern pollution sources. We found very strong pollution signals high in the
Arctic atmosphere (blue points, a surprise in itself), and the unmistakable signature of non-pollution inputs in the lower atmosphere over the whole Arctic Basin (red points).
(E. Kort, S. Wofsy, Harvard)
Carbon Cycle Highlight: CO2 Seasonal cycle propagationInverse models of the carbon cycle give conflicting results in part because they rely on data from surface stations, and various models give different results for the rate of propagation
of seasonal changes in the middle troposphere. Data from November and January show the Arctic filling up with CO2 rapidly, with seasonal
signals transported isentropically, rather than vertically or horizontally (note the vertical axis is Potential Temperature). Accurate representation of the "warm conveyor belt", and other jet-stream phenomena, may hold the key to improved CO2 modeling. (B. Stephens, NCAR)
color scales differ
-80 -60 -20 0 20 40 60 80Latitude
-80 -60 -20 0 20 40 60 80
N2O
321
323
325
SF6
6.4
6.6
6.8500m
4500m500m4500m
Highlights: Sources of N2O
The observed distribution of N2O was completely different than predicted by models, even those that gave excellent
results when inverted using surface data, and which did well for SF6. Inverse modeling using the ACTM model of P. Patra
and K. Ishijima showed that N2O from strong sources in S. and S. E. Asia are lofted into the middle tropical troposphere.
Since this part of the distribution had never been seen before, models did not previously attribute global sources correctly.
(E. Kort, Harvard; P. Patra, K. Ishijima (JAMSTEC))
Biomass-burning from SE Asia
Asian pollution lofted high into the Arctic troposphere; "blackened" atmosphere in November, 2009.
Biomass burning plumes from SE Asia contributed to gigantic BC
loadings between ITCZ and ~40°N
Very low BC loadings in southern hemisphere (SH)—
much lower than models Large BC loadings in northern hemisphere (NH) with loadings comparable to those in urban areas,
originating in SE Asia (movie)
Strong interhemispheric gradient at the ITCZ
HIPPO-3, April 2010 Southbound
Low BC in SH
HIGHLIGHTS: BLACK CARBONAPRIL 2010
BC results from J Schwarz, R. Spackman, D. Fahey (NOAA); Movie courtesy Brad Pierce, NOAA
RAQMS CO simulation
ORCA-PISCES-T underestimates →
outgassing in December, but overestimates seasonal
fluxes (as seen in H2 and H3),
suggesting timing issues
HIPPO O2 Highlight: Atmospheric Potential Oxygen (O2 + 1.1 * CO2) highlights oceanic
exchange processes
↑ Dissolved O2
climatology
performed well in
comparison to
surface stations
but appears to overestima
te outgassing
when airborne
data included
per meg
Notable features of the mission• Very strong interest from modeling groups, rapid
sharing of observations and model results.• Few operational issues (so far…). • Tall poles identified, solved, in advance.• Strong NCAR EOL/RAF management, Mission
Manager (Pavel Romashkin), flight crew; adaptation to unusual mission profile.
• Success of HAIS sensors. • Strong science team.• Outreach via social media, professional website.
Data managementPre-release data • Merged data sets to the team within 24 hours. • Provisional data to cooperating modeling groups
(i.e. anyone asking) and TCCON within 6-8 weeks.Data Release• Data management at NCAR (Janine Aquino)• Public portal, metadata, data protocol at CDIAC
(Tom Boden, Sig Christensen)• Outreach website, social media (Allison Rockwell)
Websites for HIPPO
• HIPPO Project Page (http://www.eol.ucar.edu/hippo/ ) full data sets, links to all of the sites
• Outreach (http://hippo.ucar.edu )• Public Portal at CDIAC (http://hippo.ornl.gov/ )• Instant turnaround via postings on
http://www.seas.harvard.edu/~swofsy and http://www.eol.ucar.edu/raf/Stephens/VTCO2
• Moving-target data upload and download (team use): ftp to/from : catalog.eol.ucar.edu
Species measured by PANTHER and UCATSFred Moore, Eric Hintsa, Dale Hurst, Jim Elkins
PANTHER (6-Channel GC):
ECD channels: N2O, SF6, CCl2F2 (CFC-12),) CCl3F (CFC-11), and CBrClF2 (halon-1211) injected every 70 seconds, and H2, CH4, CO, CCl4, CH3CCl3 (methyl chloroform) and PAN (peroxyl acetyl nitrate) injected every 140 seconds. The width of a sample load on an ECD channel is only 3 seconds, allowing this data set to correlate well with other fast measurements.
MSD channels: The methyl halides CH3I, CH3Br, CH3Cl, the sulfur compounds COS, CS2, the hydrochlorofluorocarbons CHClF2 (HCFC-22), C2H3Cl2F (HCFC-141b), C2H3ClF2 (HCFC-142b), and the hydrofluorocarbon C2H2F4 (HFC-134a) are injected every 180 seconds with 150 seconds sample load width. This data set correlates with a time average of other fast measurements.
UCATS:
2-Channel GC: every 70 s (N2O, SF6) or every 140 s (H2, CH4, CO)
TDL: 10-second average H2O
Photometer: 1-Hz O3
•Chlorofluorocarbons CFC-11 (CCl3F)•CFC-12 (CCl2F2)•CFC-13(CClF3)•CFC-113 (CCl2FCClF2)•CFC-114 (CClF2CClF2)•CFC-115 (CF2ClCF3)
Halons CFC-12b1 (Halon 1211,CF2ClBr)•CFC-13b1 (Halon 1301, CF3Br)•CFC-114b2 (Halon 2402, C2F4Br2)
Hydrochlorofluorocarbons/Hydrofluorocarbons HCFC-22 (CHF2Cl)•HCFC-141b (CH3CFCl2)•HCFC-142b (CH3CF2Cl)•HFC-134a (C2H2F4)•HFC-124 (C2HClF4)•HFC-123 (C2HCl2F3)•HFC-125 (C2HF5)•HFC-143a (C2H3F3)•HFC-152a (C2H4F2) (1,1-difluoroethane)•HFC-23 (CHF3)•HFC-227ea(C3HF7)(1,1,1,2,3,3,3-Heptafluoropropane)•HFC-365mfc (C4H5F5) (1,1,1,3,3-pentafluorobutane)
Solvents Carbon Tetrachloride (CCl4)•Methyl Chloroform(CH3CCl3)•Tetrachloroethylene (C2Cl4)•Methylene Chloride (CH2Cl2)•Chloroform (CHCl3)•Trichloroethylene(C2HCl3)•1,2-Dichloroethane (C2H4Cl2)
Methyl Halides and related Methyl Bromide(CH3Br)•Methyl Chloride (CH3Cl)•Methyl Iodide (CH3I)•Methylene Bromide(CH2Br2)•CHxBryClz•Bromoform (CHBr3)
•Organic Nitrates Methyl nitrate(CH3ONO2)•Ethyl nitrate(C2H5ONO2)•Propyl nitrates(C3H7ONO2)•Butyl nitrates (C4H9ONO2)•Pentyl nitrates (C5H11ONO2)
Non-Methane Hydrocarbons Ethane (C2H6)•Ethyne (C2H2)•Propane(C3H8)•Isobutane(C4H10)•n-Butane (C4H10)•Isopentane (C5H12)•n-Pentane (C5H12)•Isoprene (C5H10)•Benzene (C6H6)•Toluene (C7H8)•C2-Benzenes (C8H10)•a-Pinene (C10H20)/other terpenes
Other Methane (CH4)•Carbon Monoxide (CO)•Nitrous Oxide (N2O)•Carbonyl Sulfide (COS)•Dimethyl Sulfide (C2H6S)•Carbon disulphide (CS2)•Methyl-t-butyl ether•Methyl Acetate/Ethyl Acetate•Acetonitrile•1,2 Dichlorobenzene
Perfluorocarbons Sulfur Hexafluoride (SF6)•PFC-116 (C2F6)•PFC-218 (C3F8)•PFC-318 (C4F8)(perfluorocyclobutane)
Others CO2•H2
•13CO2
•18OCO
Complete List of Chemical Species Monitored by the Whole Air Sampler (WAS)Elliot Atlas, Ben Miller, Steve Montzka