DocumentCode :
73537
Title :
Bio-Optical Inversion in Highly Turbid and Cyanobacteria-Dominated Waters
Author :
Mishra, Shivakant ; Mishra, Deepak R. ; ZhongPing Lee
Author_Institution :
Dow Agrosciences LLC, Indianapolis, IN, USA
Volume :
52
Issue :
1
fYear :
2014
fDate :
Jan. 2014
Firstpage :
375
Lastpage :
388
Abstract :
Phytoplankton pigment absorption data from algal-bloom-dominated waters are highly desirable to better understand the primary productivity and carbon uptake by algal biomass in a regional scale. However, retrieving phytoplankton pigment absorption coefficients, in turbid and hypereutrophic waters, from above-surface remote sensing reflectance (R_{rs}) is often challenging because of the optical complexity of the water body. In this paper, a quasi-analytical algorithm has been parameterized using in situ data to retrieve inherent optical properties from R_{rs}(\\lambda ) in highly turbid productive aquaculture ponds, where the phytoplankton absorption coefficient (3.44–37.67 \\hbox {m}^{-1} ) contributes > 54 % of the total absorption at 443 nm (4.99–47.21 \\hbox {m}^{-1} ). The model was validated using an independent data set by comparing the model-derived optical parameters with in situ measured values. The absolute percentage error (assuming no error in the in situ measurements) of the estimated total absorption coefficient a_{t}( \\lambda ) varied from 15.22 % to 24.13 % within 413–665 nm, and the overall average error was 19.87 % . Maximum and minimum errors occurred at 443 and 665 nm, respectively. Similarly, the percentage error for the phytoplankton absorption coeffi- ient a_{\\phi}(\\lambda ) varied from 15.9 % to 41.27 % within the 413–665-nm range, and the average error was 27.24 % . The spectral shape of modeled a_{\\phi}(\\lambda ) matched very well (R^{2} = 0.97) with the measured a_{\\phi}(\\lambda ) . A supplementary method was also developed to retrieve first-order estimates of colored detrital matter absorption coefficients a_{\\rm \\rm CDM}( \\lambda ) from subsurface remote sensing reflectance r_{rs}( \\lambda ) using an empirical approach. Results reveal that the retrieval accuracy of a_{\\phi}(\\lambda ) improved after incorporating the first-order estimates of a_{\\rm CDM}(\\lambda ) in the algorithm.
Keywords :
hydrological techniques; inverse problems; microorganisms; ocean chemistry; oceanographic techniques; remote sensing; turbidity; underwater optics; water quality; above surface remote sensing reflectance; algal bloom dominated waters; biooptical inversion; colored detrital matter absorption coefficients; cyanobacteria dominated waters; first order estimates; highly turbid waters; hypereutrophic waters; inherent optical properties; model derived optical parameters; phytoplankton pigment absorption coefficients; phytoplankton pigment absorption data; quasianalytical algorithm; regional scale algal biomass carbon uptake; regional scale algal biomass primary productivity; spectral shape; water body optical complexity; wavelength 413 nm to 665 nm; Absorption; Accuracy; Biomedical optical imaging; Data models; Mathematical model; Optical sensors; Sea measurements; Bio-optical inversion; case 2 water; cyanobacteria; phytoplankton pigment absorption; quasi-analytical algorithm (QAA); remote sensing; turbid productive water;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2013.2240462
Filename :
6471814
Link To Document :
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