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Improving the accuracy of estimation of eutrophication state index using a remote sensing data-driven method: A case study of Chaohu Lake, China


Bo Xiang
Jing-Wei Song
Xin-Yuan Wang
J Zhen

Abstract

Trophic Level Index (TLI) is oen used to assess the general eutrophication state of inland lakes in water science, technology, and engineering. In this paper, a data-driven inland-lake eutrophication assessment  method was proposed by using an articial neural network (ANN) to build relationships from remote sensing  data and in-situ TLI sampling. In order to train the net, Moderate Resolution Imaging Spectroradiometer  (MODIS, which has a revisit cycle of 4 times per day) data were combined with in-situ observations. Results  demonstrate that the TLI obtained directly from remote-sensing images using the data-driven method is more accurate than the TLI calculated from the water quality factors retrieved from remote-sensing images using a multivariate regression method. Spatially continuous and quasi-real time results were retrieved by using MODIS data. is method provides an ecient way to map the TLI spatial distribution in inland lakes, and provides a scheme for increased automation in TLI estimation.


Keywords: data driven, trophic level index, MODIS, articial neural network, inland lake


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eISSN: 1816-7950
print ISSN: 0378-4738