IOP algorithm OOXX, Anchorage, September 25, 2010 Some (basic) considerations on our capability to derive b bp from AOPs (R and K d ), in situ.

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IOP algorithm OOXX, Anchorage, September 25, 2010 Some (basic) considerations on our capability to derive b bp from AOPs (R and K d ), in situ and especially in clear waters An example using data from BOUSSOLE and Plumes & Blooms (Mediterranean Sea and Santa Barbara Channel) D. Antoine, LOV, Villefranche / mer

IOP algorithm OOXX, Anchorage, September 25, 2010 Relationships do exist between b bp and Chl (quite scattered, however) and We have very few in situ b bp measurements

IOP algorithm OOXX, Anchorage, September 25, 2010 A simple inversion procedure using K d and R as input (plus lookup tables of f’ and  d from RT computations) allows b bp to be retrieved quite well Morel, A., Gentili, B., Chami, M., and J. Ras (2006) Bio-optical properties of high chlorophyll Case 1 waters, and of yellow- substance- dominated Case 2 waters. Deep-Sea Research I, 53, There are still issues for validation in the range of low b bp (<~0.001 m -1 ), which corresponds to Chl ~0.3 mg m -3, i.e., ~50% of the ocean

IOP algorithm OOXX, Anchorage, September 25, 2010 What does this mean, however, when coming back to the b bp vs Chl relationship? The relationship is different, and differently at both wavelengths  problem for the spectral dependency..

IOP algorithm OOXX, Anchorage, September 25, 2010 We clearly need more data in the low-Chl domain (say below ~0.3 mg m -3 ) - ~half of the IOCCG dataset is for bbp>0.01 m -1, i.e., for Chl>5 mg m-3 - Much better for the NOMAD data set - Values < m -1 are underrepresented into both data sets, however (see Jeremy and Bryan slides N°13 and 14) We still need an overall error assessment, using simultaneous in-situ and satellite-derived b bp, R and K d (the satellite configuration is necessarily degraded because both R and K d are derived from nLw’s).

IOP algorithm OOXX, Anchorage, September 25, 2010 That’s all… see poster #63, session #3 Variability in optical particle backscattering in three contrasting bio-optical oceanic regimes David ANTOINE, David A. SIEGEL, Tihomir KOSTADINOV, Stéphane MARITORENA, Norm B. NELSON, Bernard GENTILI, Vincenzo VELLUCCI, Nathalie GUILLOCHEAU

IOP algorithm OOXX, Anchorage, September 25, 2010 IOPs from K d -R inversion Morel, A., Gentili, B., Chami, M., and J. Ras (2006) Bio-optical properties of high chlorophyll Case 1 waters, and of yellow-substance- dominated Case 2 waters. Deep-Sea Research I, 53, R( ) = f' b b ( ) / [a( ) + b b ( )] a( ) = K d ( )  d (,  s, Chl) x [1 – R( ) / f'(,  s, Chl)] b b ( ) = K d ( )  d (,  s, Chl) x [R( ) / f'(,  s, Chl)] K d ( ) = [a( ) + b b ( )] /  d (Gordon, 1989) LUTs are used for  d and f’ (Morel & Gentili, 2004) Then : b b,p ( ) = b b ( ) – b bw ( ) b bw ( ) computed followingTwardowski et al (2008), as a function of T and S