1 / 14

Level-2 ocean color data processing basics

Level-2 ocean color data processing basics. NASA Ocean Biology Processing Group Goddard Space Flight Center, Greenbelt, Maryland, USA SeaDAS Training Material. Light paths to the sensor. the satellite observes both the ocean and the atmosphere. Ocean color.

Télécharger la présentation

Level-2 ocean color data processing basics

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Level-2 ocean color data processing basics NASA Ocean Biology Processing Group Goddard Space Flight Center, Greenbelt, Maryland, USA SeaDAS Training Material SeaDAS Training ~ NASA Ocean Biology Processing Group

  2. Light paths to the sensor the satellite observes both the ocean and the atmosphere SeaDAS Training ~ NASA Ocean Biology Processing Group

  3. Ocean color the atmosphere is 80-90% of the total top-of-atmosphere signal in blue-green wavelengths (400-600 nm) ~1% error in instrument calibration or atmospheric model leads to ~10% error in Lw() SeaDAS Training ~ NASA Ocean Biology Processing Group

  4. Effects of the atmosphere gaseous absorption (ozone, water vapor, oxygen) Rayleigh scattering by air molecules Mie scattering and absorption by aerosols (haze, dust, pollution) polarization (MODIS response varies with polarization of signal) • Rayleigh (80-85% of total signal) • small molecules compared to nm wavelength, scattering efficiency decreases with wavelength as -4 • reason for blue skies and red sunsets • can be accurately approximated for a given atmospheric pressure and geometry (using a radiative transfer code) • Aerosols (0-10% of total signal) • particles comparable in size to the wavelength of light, scattering is a complex function of particle size • whitens or yellows the sky • significantly varies and cannot be easily approximated SeaDAS Training ~ NASA Ocean Biology Processing Group

  5. Surface effects Sun glint corrections based on statistical models (wind & geometry) whitecaps SeaDAS Training ~ NASA Ocean Biology Processing Group

  6. brdf Sun nLw() = Lw() fb() / td0() 0 f0 Atmospheric correction TOA gas pol glint whitecap air aerosol td() Lw() = Lt() / tg() / fp() - TLg()- tLf() - Lr() - La() But, we need aerosol to get Lw() Lw(=NIR)≈ 0 and can be estimated (model extrapolation from VIS) in waters where Chl is the primary driver ofLw() SeaDAS Training ~ NASA Ocean Biology Processing Group

  7. Magnitudes of Lw(NIR Lw(NIR) ≠ 0 (turbid or highly productive water) Lw(NIR) = 0 (clear water) SeaDAS Training ~ NASA Ocean Biology Processing Group

  8.  L  = F0· 0 as()  () = as() as()  (,) = as() Aerosol determiniation in visible wavelengths Given retrieved aerosol reflectance at two  and a set of aerosol models fn(,0,). a() & ra() model a(NIR) as(NIR)  (,) SeaDAS Training ~ NASA Ocean Biology Processing Group

  9. Iterative correction for non-zero Lw(NIR) (1) assume Lw(NIR) = 0 (2) compute La(NIR) (3) compute La(VIS) from La(NIR) (4) compute Lw(VIS) (5) estimate Lw(NIR) from Lw(VIS) + model (6) repeat until Lw(NIR) stops changing iterating up to 10 times SeaDAS Training ~ NASA Ocean Biology Processing Group

  10. Level-2 ocean color processing (1) determine atmospheric and surface contributions to total radiance at TOA and subtract, iterating as needed. (2) normalize to the condition of Sun directly overhead at 1 AU and a non-attenuating atmosphere (nLw or Rrs = nLw/F0). (3) apply empirical or semi-analytical algorithms to relate the spectral distribution of nLw or Rrs to geophysical quantities. (4) assess quality (set flags) at each step SeaDAS Training ~ NASA Ocean Biology Processing Group

  11. Level-2 flags and masking RGB image Chl sediments glint cloud SeaDAS Training ~ NASA Ocean Biology Processing Group

  12. Add masking for high glint Add masking for straylight Level-2 flags and masking RGB image nLw(443) sediments glint cloud SeaDAS Training ~ NASA Ocean Biology Processing Group

  13. Level-2 ocean color flags Level-2 flags used as masks in Level-3 processing SeaDAS Training ~ NASA Ocean Biology Processing Group

  14. References H.R. Gordon and M. Wang, Appl. Opt.33, 443-452 (1994) F. S. Patt et al., NASA Tech. Memo. 20689222, 74 pp (2003) Ch. 4 & 9: NIR correction Ch. 5: atmospheric correction, spectral responses, BRDF Ch. 6: masks and flags http://oceancolor.gsfc.nasa.gov/cgi/postlaunch_tech_memo.pl?22 SeaDAS Training ~ NASA Ocean Biology Processing Group

More Related