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Assessing Biodiversity of Phytoplankton Communities from Optical Remote Sensing. Rick A. Reynolds, Dariusz Stramski, and Julia Uitz Scripps Institution of Oceanography University of California San Diego rreynolds@ucsd.edu.
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Assessing Biodiversity of Phytoplankton Communities from Optical Remote Sensing Rick A. Reynolds, Dariusz Stramski, and Julia Uitz Scripps Institution of Oceanography University of California San Diego rreynolds@ucsd.edu NASA Biodiversity and Ecological Forecasting Team Meeting - October 2011
Motivation for Hyperspectral Approach • Chla-based approaches • Describe general trends across various trophic regimes • But do not necessarily account for specific local conditions • New complementary approaches need to be developed • Explore the potential of hyperspectral optical measurement for discriminating different phytoplankton assemblages • Hyperspectral optical measurements have matured into powerful technologies in the field of remote sensing • Yet they remain largely unexplored for open ocean applications
Data and Methods • Pilot study • Small set of stations from Eastern Atlantic open ocean waters • HPLC pigments • Optical data • Measured hyperspectral IOPs • Measured multispectral Rrs(λ) • Modeled hyperspectral Rrs(λ) Polarstern ANT-23 cruise track (Torrecilla et al., 2011, RSE)
Data and Methods Similarity analysis (statistical indices) Evaluation of performance
Classification Based on Pigment Composition Cluster tree based on pigments A • Pigment-derived classification provides 5 clusters • Consistent with preliminary classification of stations based on 2 dominant marker pigments • For example cluster analysis discriminates • Station E dominated by Fuco (diatoms) and Hex (prymnesiophytes) • Stations C1-C4 dominated by DV-Chla (prochlorophytes) and Zea (cyanobacteria and prochlorophytes) (Torrecilla et al., 2011, RSE)
Classification Based on Phytoplankton Absorption Dendrogram based on 2nd derivative of aph(λ) • Cluster analysis of phytoplankton absorption spectra provides similar classification as pigments • Best results obtained when using 2nd derivative of phytoplankton absorption spectra • Next step is to determine how this result translates to Rrs(λ) (Torrecilla et al., 2011, RSE)
Classification Based on Ocean Reflectance Dendrogram based on 3 band ratios of Rrs(λ) A • Classification derived from 3 band ratios of Rrs traditionally used in ocean color does not provide good discrimination of stations • Classification derived from 2nd derivative of hyperspectral Rrs provides highest similarity with pigment analysis Dendrogram based on 2nd derivative of Rrs(λ) B (Torrecilla et al., 2011, RSE)
Conclusion • Derivative analysis of hyperspectral phytoplankton absorption and ocean reflectance provides similar classification as pigments • Initial results indicate significant potential of hyperspectral optical approach for • Discriminating different marine phytoplankton assemblages • Monitoring phytoplankton diversity in the ocean, especially under non-bloom conditions which are the most challenging
Work Completed for this Year • Estimation of total and class-specific primary production in the Mediterranean Sea (Uitz et al. in rev.) • Demonstration of hyperspectral optical approach (Torrecilla et al. 2011, RSE) • Completion of cruise covering a long south-to-north transect in the Atlantic • Collected a unique set of pigments and in situ hyperspectral optical data in a broad variety of oceanic regimes • Data being used to continue our investigations of hyperspectral optical approach Polarstern ANT-26 cruise track