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Retrieval of thermal infrared cooling rates from EOS
instrumentsDaniel Feldman
Thursday IR meeting
January 13, 2005
Outline
• Introduction
• Methodology
• Clear vs. Scattering
• Instrumentation questions
• Representative scenarios
Introduction
• State vector components are frequently retrieved to derive standard products
• We intend to explore in detail infrared cooling rate retrievals in clear and scattering atmospheres using EOS instruments:– AIRS– TES– MODIS/MISR
Motivation
• Closure of infrared radiation balance for input to regional-scale models
• Evaluate the direct forcing of mineral dust in the infrared via direct measurement.
• Ultimately improve parameterizations of treatment of radiation in regional-scale models.
Previous work:
• Cooling rate retrieval: – Liou and Xue (1988)– Liou (2002)
• AIRS dust:– X. Huang (JGR 2004)– Thomas (AGU)– Pierangelo (ACP 2004)
Liou and Xue (1988 & 2002)
– Analytic expression derives spectral and band radiance as a Fredholm integral of cooling rate profile and kernel transmittance function.
• Assumptions:• Utilize either Goody random model or correlated-k• Transmittance function assumes constant form over spectral and band
regions• Planck function for band equals Planck function for spectral channel.
– Limitations:• Clear-sky calculations only, transmission function takes simple form
Tj
0
* dF d
d I I j
EOS L1B Products
EOS L2Standard ProductsUsing Operational
Retrieval Algorithm
Retrieve Cooling Rate Profiles from Radiance Data
Directly
Perform Error Analysis onStandard and Research Products
Derived Analyses Of IR Heat Budgets
Perform Error Analysis onCooling Rate Profiles
Compare Retrieved DataTo
Derived IR Heat BudgetAnalyses
Project Flow Chart
Methodology
• Heating/cooling rate profile retrieval methods show distinct differences compared to standard retrievals– Standard retrieval performs an inversion of the forward
model mapping state vector to radiances.– Given full radiance field, heating rate calculation is
trivial– Challenge of heating/cooling rate retrieval involves
determining spectral and channel information to perform forward model heating/cooling rate calculation.
Clear-sky Roadmap
• Utilize LBRTM with RADSUM• For faster calculations, use Modtran 5• Develop framework for cooling rate retrieval
– Test cooling rate retrieval algorithm for H2O (800-960) using AIRS scan pattern
• Perform retrieval test by first deriving a state vector and then deriving the cooling rate.
Clear-Sky Verification
Presence of Mineral Dust• Included Volz description of dust indices of
refraction and tri-model log-normal distribution of aerosols per Seinfeld and Pandis (AOD ~ 1)
Cooling rate profile difference with dust
Cooling rate retrieval with scattering in source function
• Doubling-adding module on top of LBLRTM called CHARTS
• User-supplied spectral functions for Modtran 5
• Derivation by Liou and Xue no longer valid because source function is not Planck function.– What are valid assumptions that can be made about
source function?
Current foci of IR mineral dust research
• Composition– Sokolik et al.
• Phase function/sphericity• Spatial/height distribution
– Pierangelo et al.– Mahowald
• Particle Size Distribution– MODIS/MISR products
• AERONET validation– Thomas
Cooling Rate Retrieval Road Map
• Use Modtran 5 to develop a cooling rate retrieval program similar to that described by Liou.– Need validation with AIRS spectra
– Use of DISORT option
– Problems with sertran parameters
• Test out program sensitivity to dust layer using range of dust fields provided by Mahowald.
Numerical methods for cooling rate retrieval
• Create cooling rate jacobians with respect to standard state vector
• Look at variation in band radiance with respect to view angle
• Explore band radiance variations with respect to state components
• Effect of uncertainty in measurements and state components (chain rule)
k k
j
k
n
k k
j
k
j
x
I
xzT
x
I
xzT
dI
zTd
)(.
.
)(
)(
1
I = radiancex = state vectorT = heating/cooling (h/c) ratez = height coordinatek = state vector component indexj = channel indexn = matrix index for h/c rate designation
Questions for future:
• AIRS vs. TES– TES has coverage over bright surfaces– AIRS radiances are better validated
• Surface emissivity– MODIS 5km land emissivity map?
• Role of AERONET for validation
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