Simultaneous Retrieval of - PowerPoint PPT Presentation

1 / 15
About This Presentation
Title:

Simultaneous Retrieval of

Description:

Simultaneous Retrieval of Aerosols and Ocean Color A classic inverse approach with the Linearized CAO-LDISORT Model Robert Spurr1, Knut Stamnes2, Hans Eide2, – PowerPoint PPT presentation

Number of Views:134
Avg rating:3.0/5.0
Slides: 16
Provided by: nasaGov58
Category:

less

Transcript and Presenter's Notes

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

2
Outline 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

3
Context
  • 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

4
Introduction
  • 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.

5
Simultaneous aerosol and ocean color retrieval as
a classic inverse problem
  • Next Guess

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)

6
Simultaneous 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.

7
Ocean 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
8
CAO-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.

9
Jacobians 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
10
Retrievals 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.

11
Match-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

12
Radiance residuals for USA East Coast scene
Radiance Residuals, Channels 1-4
Radiance Residuals, Channels 5-8
(blue) CAO-DISORT(LUT)
(black) CAO-LDISORT(OE)
13
Radiance 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
14
Model 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
15
Summary 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
Write a Comment
User Comments (0)
About PowerShow.com