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Estimating chlorophyll-A concentration in the Caspian Sea from MODIS images using artificial neural networks

机译:利用人工神经网络估算了从MODIS图像中的叶绿素-A浓度

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Nowadays, due to various pollution sources, it is essential for environmental scientists to monitor water quality. Phytoplanktons form the end of the food chain in water bodies and are one of the most important biological indicators in water pollution studies. Chlorophyll-A, a green pigment, is found in all phytoplankton. Chlorophyll-A concentration indicates phytoplankton biomass directly. Therefore, Chlorophyll-A is an indirect indicator of pollutants, including phosphorus and nitrogen, and their refinement and control are important. The present study, Moderate Resolution Imaging Spectroradiometer (MODIS) satellite images were used to estimate the chlorophyll-A concentration in southern coastal waters in the Caspian Sea. For this purpose, Multi-layer perceptron neural networks (NNs) were applied which contained three and four feed-forward layers. The best three-layer NN has 15 neurons in its hidden layer and the best four-layer one has 5 in each. The three- and four- layer networks both resulted in similar root mean square errors (RMSE), 0.1(mu g/l.), however, the four-layer NNs proved superior in terms of R-2 and also required less training data. Accordingly, a four-layer feed-forward NN with 5 neurons in each hidden layer, is the best network structure for estimating Chlorophyll-A concentration in the southern coastal waters of the Caspian Sea.
机译:如今,由于各种污染源,环境科学家必须监控水质。浮游植物在水体中形成食物链的末端,是水污染研究中最重要的生物指标之一。叶绿素-A,绿色颜料在所有浮游植物中都存在。叶绿素-A浓度直接表明浮游植物生物量。因此,叶绿素-A是污染物的间接指示剂,包括磷和氮,它们的细化和控制很重要。本研究采用适度分辨率成像光谱辐射计(MODIS)卫星图像来估算里海南部沿海水域中的叶绿素-A浓度。为此目的,应用了包含三个和四个前馈层的多层的Perceptron神经网络(NNS)。最好的三层NN在其隐藏层中有15个神经元,每个神经元在每个内部有5个。三层网络均导致类似的根均方误差(RMSE),0.1(MU G / L.),然而,四层NNS在R-2方面证明优越,并且还需要较少的训练数据。因此,在每个隐藏层中具有5个神经元的四层前馈NN,是用于估算里海南部沿海水中叶绿素浓度的最佳网络结构。

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