Title: Simultaneous Retrieval of
1 - Simultaneous Retrieval of
- Aerosols and Ocean Color
- A classic inverse approach with
- the Linearized CAO-LDISORT Model
- Robert Spurr1, Knut Stamnes2, Hans Eide2,
- Wei Li2, Kexin Zhang2, Jakob Stamnes3
- 1RT Solutions Inc., Cambridge, MA 02138, USA
- 2Stevens Institute for Technology, Hoboken NJ
07030, USA - 3University of Bergen, Allegaten 55, N-5007
Bergen, Norway
2Outline of Presentation
- Context and Introduction
- Simultaneous aerosol and ocean color retrieval as
a classic inverse problem - CAO-LDISORT linearized radiative transfer
- Retrievals using SeaWiFS data
- Validation against SeaBASS data set
- USA East Coast example
- Error budget first results
- Summary and Outlook
3Context
- Need for improvement in accuracy of retrieved
ocean color products from existing (SeaWiFS,
MODIS on Terra and Aqua) and future instruments
(VIIRS on NPP and later NPOESS) - Need to evaluate VIIRS ocean color products for
eligibility as Climate Data Records (CDRs), and
also the aerosol product over oceans - Need not only for improved bio-optical models,
but also new algorithm ideas to deal with
inadequacies in existing retrievals - Need for a real examination and budgeting of
errors of all types associated with ocean color
retrievals - 3-year project funded under NASA EOS program
NRA-03-OES-02 Earth System Science Research
Using Data and Products from Terra, Aqua, ACRIM
satellites". Award to Stevens Institute for
Technology (SIT), sub-award to RT Solutions Inc. - Work based on findings in our Report for Year 1
as part of this NASA grant
4Introduction
- Existing algorithms
- Take atmospheric correction --gt water-leaving
radiances (ocean color) - In visible typically 10 of signal from ocean.
Atmospheric correction very difficult unless
infra-red black pixel assumption (BPA) holds - NIR channel to fix aerosol optical depth, 2
visible channels and semi-empirical model with
regression to get chlorophyll - Ocean/atmosphere decoupled not using all
information difficult to determine uncertainties
and derive error budgets
- This Algorithm
- Direct comparison of measured satellite radiance
data with simulated values using chi-square
minimization in an iterative inversion scheme. - Simultaneous retrieval of atmospheric and marine
parameters in one state vector - Comprehensive radiative transfer with analytic
weighting functions - Well-established error budgeting procedures
giving clear divisions between sources of
uncertainty (measurement errors, model parameter
errors, modelization errors) - Technique is standard practice in atmospheric
remote sensing tasks.
5Simultaneous aerosol and ocean color retrieval as
a classic inverse problem
errors
1)
2)
3)
4)
- Optimal Estimation (Rodgers 2000) least squares
fitting with regularization - xn retrieval state vector at iteration n, b
model parameter vector (not retrieved) - xa a priori state vector, error covariance Sa
- Ymeas vector of radiances at satellite, error
covariance Se derived from enoise - F(xn,b) forward (RT) simulation of Y, Kn are
weighting functions w.r.t elements of x - Gain matrix Gn, matrix of averaging kernels An
- Minimize c2, proceeding iteratively until
convergence is reached. - Four sources of Error
- Smoothing Error
- Model parameter error, Jacobians Kb w.r.t.
parameters b. Random or systematic. - Forward model error. Usually systematic
- Measurement error (random and systematic)
- Error budget and sensitivity studies Linearize
about a given state (1 iteration)
6Simultaneous aerosol and ocean color retrieval as
a classic inverse problem
- Use all available channels in visible and NIR to
maximize information e.g. 8 SeaWiFS channels
412,443,490,510,555,670,765,865 nm - Multilayer atmosphere with Rayleigh scattering
and gaseous absorption, plus bi-modal
maritime-type aerosol in lowest layer - Continuously varying set of bimodal aerosol
distributions Naer total loading, F bimodal
weighting factor. Scattering properties from Mie
theory - taer(l) NaerFe1(l) (1-F)e2(l)
- Improved Oceanic Medium Bio-optical model, C
Chlorophyll concentration, W CDOM absorption
Poster at this meeting, K. Zhang et al. - tocean(l) awater(l) bwater(l)
a(l)Cb(l) g(l)Cd(l) We-q(l-443 - State vector x Naer, F, C (Case I) or Naer,
F, C, W (Case I/II) - Forward Model Fully coupled atmosphere-ocean
radiative transfer (RT) model - Use the discrete ordinate RT model CAO-LDISORT
with linearization facility to deliver analytic
Jacobians Kn and Kb - Atmospheric correction and water-leaving
radiance use RT model to deliver these
quantities at each step of iteration. They are
diagnostics.
7Ocean Color Retrieval Flow Chart
First Guess
start
Biooptical Model Atmospheric model
Reference data
Linearized RT Forward Model
Update Guess
measurements
Inverse Fitting
NO
Converge?
YES
Write results
finish
8CAO-LDISORT Radiative Transfer Model
- Layer optical property inputs Dn, wn, bnl
- total optical thickness Dn
- single scattering albedo wn
- Layer phase function expansion coefficients bnl
- ANALYTIC weighting or sensitivity functions
(Jacobians) - K(t,m,f) ?I(t,m f) / ?x
- x AOT taer in planetary boundary layer
- x Chlorophyll C in uppermost ocean layer
- Coupled discrete ordinate model is completely
differentiable with respect to any x - Start derivatives of optical property inputs
- ?Dn / ?xn ?wn / ?xn ?bnl / ?xn
- Single call produces radiances and all Jacobians
simultaneously - Fast and accurate, no need for repeated
finite-difference estimates - Linearization based on LIDORT models (Spurr et
al., 2001-2005) for atmosphere and surface remote
sensing retrieval
- Extension of multiple scattering DISORT radiative
transfer model to coupled atmosphere-ocean
system - Reflection by and transmission through air-water
interface determined by Fresnels equations
Snells law - Sufficient layers in atmosphere and ocean to
resolve dependence of scattering properties --gt
stratification into optically uniform layers - Solar beam source primary and secondary rays in
the atmosphere, transmitted solar ray in ocean - Pseudo-spherical approximation transmittance of
solar beam in curved shell atmosphere (not
ocean!) - Jin Stamnes (1994), Yan Stamnes (2002).
- Monte Carlo validation Gjerstad et al., 2003.
9Jacobians for AOT t555
Weighting Function Examples for 6 Sea WiFS
channels Contour graphs, with x-axis AOT
values, y-axis Chlor values
Jacobians for Chlorophyll C
10Retrievals using SeaWiFS data
Example 1 Validation with SeaBASS data
Example 2 East Coast USA
- Approach 1 CAO-DISORT (LUT). Old method.
- LUT approach to fix aerosol model, t(865) and
CK. Stamnes et al., Applied Optics (2003) - Approach 2 CAO-LDISORT (OE). This Work.
- Optimal Estimation with loose a priori constraint
(aids convergence) - Retrieval is stable and fast (3-6 iterations), no
matter what the initial state vector guess.
11Match-ups with SeaBASS validation Data
- Is the new approach making sense?
- Contrast 3 retrievals
- SeaDAS algorithm
- CAO-DISORT/LUT (Approach 1)
- CAO-LDISORT/OE (Approach 2)
- Retrieved aerosol t865
- 137 Aeronet match-ups
- Spread/bias in SeaDAS results notably worse
- Retrieved t865
- 1378 match-up cases
- R2 values similar
12Radiance residuals for USA East Coast scene
Radiance Residuals, Channels 1-4
Radiance Residuals, Channels 5-8
(blue) CAO-DISORT(LUT)
(black) CAO-LDISORT(OE)
13Radiance residuals summary all scenes
Approach 2 vs. Approach 1 (brackets)
For all channels, greater percentage with under
5 error, large improvements especially for 490,
510, 550, 765, 865 nm
14Model parameter errors GnKbdb Example effect
on retrieved chlorophyll accuracy
(1) (2) (3) (4) (5)
(6) (7)
- Examples model parameters
- Atmospheric properties
- aerosol coefficients (extinction/scattering).
- Trace gas and Rayleigh scattering inputs
- Marine properties
- Pure water absorption and scattering coeffs.
(1-2) - Chlorophyll absorption coefficients (3-4)
- Chlorophyll scattering coefficients (4-5)
- CDOM absorption exponential gradient (7)
- Others
CAO-LDISORT will deliver weighting functions with
respect to all these parameters
15Summary and Outlook
- Summary of the present work
- Iterative inverse techniques applied to
simultaneous aerosol and ocean color retrievals,
SeaWiFS retrievals improved residuals - Linearized forward model CAO-LDISORT for
radiative transfer simulation of satellite
radiances and analytic weighting functions - Facility for extensive error budget studies
- Outlook
- Extend range to include NIR channels (e.g. MODIS
1240/1640) - Turbid/coastal waters - newer bio-optical models
- More retrievals for real data from SeaWiFS and
MODIS. - Comprehensive error budget starting Spring 2006
- This work was funded through NASA EOS program