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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >A neural network model for estimating sea surface chlorophyll and sediments from thematic mapper imagery
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A neural network model for estimating sea surface chlorophyll and sediments from thematic mapper imagery

机译:通过专题测绘仪图像估算海表叶绿素和沉积物的神经网络模型

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Two important parameters used for monitoring coastal water quality are the concentrations of chlorophyll and suspended sediment in surface waters. Ocean color remote sensing provides a convenient method of determining these concentrations from upwelling radiances. In the open ocean, it is not difficult to derive empirical algorithms relating the received radiances to surface concentrations of chlorophyll. In tur-bid coastal waters, however, this is much more difficult due to the presence of high concentrations of suspended sediments and dissolved organic material, which overwhelm the spectral signal of chlorophyll. Neural networks have been proven successful in modeling a variety of geophysical transfer functions. Here, a neural network is employed to model the transfer function between the chlorophyll and sediment concentrations and the satellite-received radiances. It was found that a neural network with two hidden nodes, using the three visible Landsat Thematic Mapper bands as inputs, was able to model the transfer function to a much higher accuracy than,multiple regression analysis. The RMS errors for the neural network were <10%, while the errors for regression analysis were >25%. (C) Elsevier Science Inc., 1998. [References: 41]
机译:用于监测沿海水质的两个重要参数是地表水中叶绿素和悬浮沉积物的浓度。海洋颜色遥感提供了一种从上升流辐射确定这些浓度的便捷方法。在公海中,不难得出将接收到的辐射与叶绿素表面浓度相关的经验算法。但是,在混浊的沿海水域,由于存在高浓度的悬浮沉积物和溶解的有机物质,这使叶绿素的光谱信号不堪重负,因此要困难得多。已证明神经网络可以成功地对各种地球物理传递函数进行建模。在这里,采用神经网络对叶绿素和沉积物浓度与卫星接收的辐射之间的传递函数进行建模。结果发现,使用三个可见的Landsat Thematic Mapper带作为输入,具有两个隐藏节点的神经网络能够对传递函数进行建模,其准确性要高于多元回归分析。神经网络的RMS误差小于10%,而回归分析的误差则大于25%。 (C)Elsevier Science Inc.,1998年。[参考:41]

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