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首页> 外文期刊>Journal of Applied Remote Sensing >Water quality monitoring using Landsat Themate Mapper data with empirical algorithms in Chagan Lake, China
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Water quality monitoring using Landsat Themate Mapper data with empirical algorithms in Chagan Lake, China

机译:利用查茨湖的Landsat Themate Mapper数据和经验算法进行水质监测

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摘要

Lake Chagan represents a complex situation of major optical constituents and emergent spectral signals for remote sensing analysis of water quality in the Songnen Plain. As such it provides a good test of the combined radiometric correction methods developed for optical remote sensing data to monitor water quality. Landsat thematic mapper (TM) data and in situ water samples collected concurrently with satellite overpass were used for the analysis, in which four important water quality parameters are considered: chlorophyll-a, turbidity, total dissolved organic matter, and total phosphorus in surface water. Both empirical regressions and neural networks were established to analyze the relationship between the concentrations of these four water parameters and the satellite radiance signals. It is found that the neural network model performed at better accuracy than empirical regressions with TM visible and near-infrared bands as spectral variables. The relative root mean square error (RMSE) for the neural network was <10percent, while the RMSE for the regressions was less than 25percent in general. Future work is needed on establishing the dynamic characteristic of Chagan Lake water quality with TM or other optical remote sensing data. The algorithms developed in this study need to be further tested and refined with multidate imagery data.
机译:查干湖代表了主要光学成分和新兴光谱信号的复杂局面,用于松嫩平原水质的遥感分析。因此,它为开发用于光学遥感数据以监测水质的组合辐射校正方法提供了良好的测试。分析使用Landsat专题制图仪(TM)数据和与卫星立交桥同时采集的原位水样,其中考虑了四个重要的水质参数:叶绿素a,浊度,总溶解有机物和地表水中的总磷。建立了经验回归和神经网络,以分析这四个水参数的浓度与卫星辐射信号之间的关系。发现以TM可见波段和近红外波段作为光谱变量,神经网络模型的性能要优于经验回归。神经网络的相对均方根误差(RMSE)小于10%,而回归的RMSE一般小于25%。利用TM或其他光学遥感数据建立查干湖水质动态特征还需要进一步的工作。本研究中开发的算法需要使用多日期图像数据进行进一步测试和完善。

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