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Major topics of Atmospheric Chemistry course are Acid Rain, Aerosol, Aerosols Optics, Geochemical Cycles, Global Models, Trop Ozone Pollution and many others. These lecture slides contain following keywords: Inverse Modeling, Atmospheric Composition, Bayes’ Theorem, Scalar, Jacobian Matrix, Jacobian Matrix for Forward Model, Gaussian Pdfs for Vectors, Averaging Kernel Matrix, Application To Satellite Retrievals, Satellite Retrievals
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INVERSE MODELING OF ATMOSPHERIC COMPOSITION DATA
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Optimize values of an ensemble of variables (
state vector
x
) using observations:
THREE MAIN APPLICATIONS FOR ATMOSPHERIC COMPOSITION:1.^
Retrieve atmospheric concentrations (
x) from observed atmospheric
radiances (
y) using a radiative transfer model as forward model
2.^
Invert sources (
x) from observed atmospheric concentrations (
y) using a
CTM as forward model
3.^
Construct a continuous field of concentrations (
x) by assimilation of sparse
observations (
y) using a forecast model (initial-value CTM) as forward model
a priori estimate
xa
a
observation vector
y
forward model^ y = F(x)
+
“MAP solution”“optimal estimate”
“retrieval”
Bayes’theorem
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use single measurement used to optimize a single source
a priori
bottom-up estimate
xa
a
Monitoring sitemeasuresconcentration
y
Forward model gives
y = kx
“Observational error”
-^ instrument •^ fwd model
y = kx
2
2 2
2 (^
)
(^
)
ln
(^
|^
)^
ln
(^
|^
)^
ln
( )
a a x^
x
y^
kx
P x
y
P y
x
P x
^
^