Algorithm development for predicting biodiversity based on phytoplankton absorption

2013 
Abstract Ocean color remote sensing has provided the scientific community with unprecedented global coverage of chlorophyll a, an indicator of phytoplankton biomass. Together, satellite-derived chlorophyll a and knowledge of Phytoplankton Functional Types (PFTs) will improve our limited understanding of marine ecosystem responses to physiochemical climate drivers involved in carbon cycle dynamics and linkages. Using cruise data from the Gulf of Maine and the Middle Atlantic Bight ( N =269 pairs of HPLC and phytoplankton absorption samples), two modeling approaches were utilized to predict phytoplankton absorption and pigments. Algorithm I predicts the chlorophyll-specific absorption coefficient ( a p h ⁎ (m 2  mg chl a −1 )) using inputs of temperature, light, and chlorophyll a. Modeled r 2 values (400–700 nm) ranged from 0.79 to 0.99 when compared to in situ observations with ∼25% lower r 2 values in the UV region. Algorithm II-a utilizes matrix inversion analysis to predict a p h (m −1 , 400–700 nm) and r 2 values ranged from 0.89 to 0.99. The prediction of phytoplankton pigments with Algorithm II-b produced r 2 values that ranged from 0.40 to 0.93. When used in combination, Algorithm I, and Algorithm II-a are able to use satellite products of SST, PAR, and chlorophyll a (Algorithm I) to predict pigment concentrations and ratios to describe the phytoplankton community. The results of this study demonstrate that the spatial variation in modeled pigment ratios differ significantly from the 10-year SeaWiFS average chlorophyll a data set. Contiguous observations of chlorophyll a and phytoplankton biodiversity will elucidate ecosystem responses with unprecedented complexity.
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