Title: How to Test Climate Models Using GPS Radio Occultation
1How to Test Climate Models Using GPS Radio
Occultation
- Stephen S. Leroy, James G. Anderson, John A.
Dykema - Harvard University
2Outline
- Survey of climate model predictions for the
atmosphere - GPS radio occultation
- Optimal fingerprinting
- Climate predictability in GPS occultation
- Linear Inverse Modeling
- Conclusions
3Climate Model Evaluation Project
- IPCC Fourth Assessment Report created CMEP (Susan
Solomon, Gerald Meehl), distributed from
Livermore - Contributions from 22 climate models worldwide
- Multiple scenarios, standard output format. We
will use SRES A1B (1 CO2/year until doubling).
4Surface Air Temperature
5Upper Air Temperature Trends
Pressure (hPa)
6Radiosonde Observations
Difference of period 1961-1980 from period
1985-1995. Taken from Tett, Jones, Stott et al.,
2002.
7Geopotential Height Trends
Pressure (hPa)
8GPS Radio Occultation
Profiles refractive index vs. height 100 meter
vertical resolution 500 km horizontal
resolution 500 soundings per day per LEO (24 GPS
satellites) Directly traceable to NIST definition
of second. COSMIC Constellation Observing
System for Meteorology, Ionosphere and
Climate National Space Program Office (Taiwan)
UCAR COSMIC Project Launch March 2006 6
satellites, 3,000 soundings per day
9GPS Occultation Dry Pressure
- Refractivity
- Dry Pressure
- Relationship to Geopotential Height
10Occultation Dry Pressure
11Optimal Fingerprinting
- Signals are uniquely identified by their
normalized shapes - An arbitrary signal will always look a little
like natural variability, so detection is given
in terms of confidence levels - Detection is preferentially weighted toward
components of the signal(s) where natural
variability is small compared to the signal - In absence of data, one can still project how
long it should take for a signal to be detected.
12Deriving Optimal Fingerprints
- I. Electrical Engineering Weight the data so as
to minimize the error associated with the fitted
coefficients (North and Kim 1995) - II. Statistical Assemble the Bayesian evidence
function given a model for the data (Leroy 1997)
fingerprint
13Our Implementation
Determine detection times and optimal
fingerprints
14Dry Pressure EOFs
ENSO Southern Annular Mode Northern Annular
Mode Symmetric Jet Migration (lagged response to
ENSO)
15Open diamonds Natural variability
eigenvalues Filled squares Signals projections
onto EOFs 12 models for signal shape s 4 models
prescribe natural variability N The higher the
filled squares are with respect to the
eigenvalues, the more that mode will contribute
to detection (and increase the SNR).
16Fingerprints
1795 Detection Times
Model GFDL CM2.0 (yrs) ECHAM5/MPI-OM (yrs) UKMO-HadCM3 (yrs) MIROC3.2 (medres) (yrs) Tropospheric Expansion (m decade-1)
GFDL-CM2.0 8.67 9.05 8.29 6.63 11.02
GFDL-CM2.1 7.88 8.65 7.57 6.21 12.86
GISS-AOM 10.53 11.54 10.47 8.38 9.67
GISS-EH 10.41 11.74 10.77 8.50 9.12
GISS-ER 10.89 12.70 11.07 9.32 8.79
INM-CM3.0 9.98 11.23 9.79 8.15 10.71
IPSL-CM4 9.29 10.02 8.95 7.36 10.54
MIROC 3.2(medres) 7.09 7.47 6.83 5.39 13.04
ECHAM5/MPI-OM 7.78 8.16 7.45 5.87 12.34
MRI-CGCM2.3.2 9.95 11.70 9.92 8.35 10.68
CCSM3 8.87 9.62 8.68 6.80 11.97
PCM 12.69 12.32 11.95 8.45 7.27
18ENSO and SJM
19Linear Inverse Modeling
UKMO HadCM3
20Conclusions
- GPS radio occultation will determine the
sensitivity of the climate with 5 accuracy in 7
to 13 years - The sensitivity of the climate system is more
sensitively measured by poleward jet migration
not associated with NAM or SAM than by
temperature - Poleward jet migration does not seem to be a
lagged response of an ENSO event - Might be possible already with GPS/MET
(1995-1997) and CHAMP (2001-), but preliminary
analysis suggests GPS/MET has insufficient
coverage - Other data types will be necessary to constrain
physical mechanisms responsible for climate
change, most likely spectrally-resolved shortwave
and longwave spectra