首页> 外文期刊>Journal of the American Water Resources Association >LAKE WATER QUALITY ASSESSMENT FROM LANDSAT THEMATIC MAPPER DATA USING NEURAL NETWORK: AN APPROACH TO OPTIMAL BAND COMBINATION SELECTION
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LAKE WATER QUALITY ASSESSMENT FROM LANDSAT THEMATIC MAPPER DATA USING NEURAL NETWORK: AN APPROACH TO OPTIMAL BAND COMBINATION SELECTION

机译:基于神经网络的LANDSAT专题制图数据湖泊水质评估:最优波段组合选择方法

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摘要

The concern about water quality in inland water bodies such as lakes and reservoirs has been increasing. Owing to the complexity associated with field collection of water quality samples and subsequent laboratory analyses, scientists and researchers have employed remote sensing techniques for water quality information retrieval. Due to the limitations of linear regression methods, many researchers have employed the artificial neural network (ANN) technique to decorrelate satellite data in order to assess water quality. In this paper, we propose a method that establishes the output sensitivity toward changes in the individual input reflectance channels while modeling water quality from remote sensing data collected by Landsat thematic mapper (TM). From the sensitivity, a hypothesis about the importance Of each band can be made and used as a guideline to select appropriate input variables (band combination) for ANN models based on the principle of parsimony for water quality retrieval. The approach is illustrated through a case study of Beaver Reservoir in Arkansas, USA. The results of the case study are highly promising and validate the input selection procedure outlined in this paper. The results indicate that this approach could significantly reduce the effort and computational time required to develop an ANN water quality model.
机译:对内陆水域(如湖泊和水库)水质的关注日益增加。由于与现场收集水质样品和随后的实验室分析相关的复杂性,科学家和研究人员已采用遥感技术检索水质信息。由于线性回归方法的局限性,许多研究人员已采用人工神经网络(ANN)技术对卫星数据进行解相关以评估水质。在本文中,我们提出了一种方法,该方法可以根据Landsat专题测绘仪(TM)收集的遥感数据对水质进行建模,同时建立针对各个输入反射率通道变化的输出灵敏​​度。从敏感性出发,可以得出关于每个频带重要性的假设,并以此作为指导,根据简约性原理为水质检索选择适合的ANN模型输入变量(频带组合)。通过美国阿肯色州海狸水库的案例研究说明了该方法。案例研究的结果很有希望,并验证了本文概述的输入选择程序。结果表明,该方法可以大大减少开发ANN水质模型所需的工作量和计算时间。

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