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Application of a generalized additive model (GAM) for estimating chlorophyll-a concentration from MODIS data in the Bohai and Yellow Seas, China

机译:广义加性模型(GAM)在中国渤海和黄海MODIS数据估算叶绿素a浓度中的应用

摘要

In optically complex waters, it is important to evaluate the accuracy of the standard satellite chlorophyll-a (chl-a) concentration algorithms, and to develop accurate algorithms for monitoring the dynamics of chl-a concentration. In this study, the Moderate Resolution Imaging Spectroradiometer (MODIS) satellite remote-sensing reflectance and concurrent in situ measured chl-a (20102013) were used to evaluate the standard OC3M algorithm (ocean chlorophyll-a three-band algorithm for MODIS) and Graver-Siegel-Maritorena model version 1 (GSM01) algorithm for estimating chl-a concentration in the Bohai and Yellow Seas (BYS). The results showed that the chl-a algorithms of OC3M and GSM01 with global default parameters presented poor performance in the BYS (the mean absolute percentage difference (MAPD) and coefficient of determination (R-2) of OC3M are 222.27% and 0.25, respectively; the MAPD and R-2 of GSM01 are 118.08% and 0.07, respectively). A novel statistical algorithm based on the generalized additive model (GAM) was developed, with the aim of improving the satellite-derived chl-a accuracy. The GAM algorithm was established using the in situ measured chl-a concentration as the output variable, and the MODIS above water remote-sensing reflectance (visible bands at 412, 443, 469, 488, 531, 547, 555, 645, 667, and 678 nm) and bathymetry (water depth) as input variables. The MAPD and R-2 calculated between the GAM and the in situ chl-a concentration are 39.96% and 0.67, respectively. The results suggest that the GAM algorithm can yield a superior performance in deriving chl-a concentrations relative to the standard OC3M and GSM01 algorithms in the BYS.
机译:在光学复杂的水中,重要的是评估标准卫星叶绿素a(chl-a)浓度算法的准确性,并开发用于监视chl-a浓度动态的精确算法。在这项研究中,中分辨率成像光谱仪(MODIS)卫星遥感反射率和同时原位测量的chl-a(20102013)用于评估标准OC3M算法(用于MODIS的海洋叶绿素-三波段算法)和Graver -Siegel-Maritorena模型版本1(GSM01)算法,用于估算渤海和黄海(BYS)中的chl-a浓度。结果表明,具有全局默认参数的OC3M和GSM01的chl-a算法在BYS中表现较差(OC3M的平均绝对百分比差(MAPD)和确定系数(R-2)分别为222.27%和0.25) ; GSM01的MAPD和R-2分别为118.08%和0.07)。提出了一种基于广义加性模型(GAM)的统计算法,旨在提高卫星衍生的chl-a精度。 GAM算法是使用现场测得的chl-a浓度作为输出变量,以及高于水遥感反射率的MODIS(在412、443、469、488、531、547、555、555、645、667,和678 nm)和测深法(水深)作为输入变量。在GAM和原位chl-a浓度之间计算得出的MAPD和R-2分别为39.96%和0.67。结果表明,相对于BYS中的标准OC3M和GSM01算法,GAM算法在推导chl-a浓度方面可产生更高的性能。

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