4.7 Article

Remote estimation of chlorophyll concentration in hyper-eutrophic aquatic systems: Model tuning and accuracy optimization

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AQUACULTURE
卷 256, 期 1-4, 页码 272-286

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ELSEVIER
DOI: 10.1016/j.aquaculture.2006.02.038

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aquaculture; channel catfish; chlorophyll; cyanobacteria; remote sensing; turbidity

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Accurate assessment of phytoplankton chlorophyll a (chl a) concentration by remote sensing is challenging in turbid hypereutrophic waters. This paper assessed methods to resolve this problem. A hand-held spectroradiometer was used to measure subsurface spectral reflectance (R) in the visible and near infrared range of the spectrum. Water samples were collected concurrently and contained variable chlorophyll a concentration (chl a from 107 to more than 3000 mg/m(3)) and turbidity (from 11 to 423 NTU) levels. The conceptual three-band model [R-1(lambda(1)) - R-1(lambda(2))] x R(lambda(3)) and its special case, the two-band model R(lambda(3))/R(lambda(1)), were spectrally tuned in accord with optical properties of the media to optimize spectral bands (lambda(1), lambda(2), and lambda(3)) for accurate chlorophyll a estimation. Strong linear relationships were established between analytically measured chl a and both the three-band [R-(1)(650) R-1(71 0)] x R(740) and the reflectance ratio model R(714)/R(650). The three-band model accounted for 7% more variation of chl a concentration than the ratio model (78 vs. 71%). Assessment of the model accuracy in dense algal blooms is hampered by the spatial and temporal inhomogeneity of algal distributions-in these waters, non-random algal distributions accounted for more than 20% spatial and up to 8% temporal variation in chlorophyll a concentration. The findings underlined the rationale behind the conceptual model and demonstrated the robustness of the algorithm for chl a retrieval in very turbid, hyper-eutrophic waters. Published by Elsevier B.V.

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