人工神经网络在基于EOS/MODIS遥感影像的分布式降水估计中的应用

Qiuwen Zhang, Cheng Wang, Zhong Liu, F. Shinohara, T. Yamaoka
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引用次数: 0

摘要

以从EOS/MODIS卫星遥感影像中提取的气象因子为输入层,相应的观测降水为输出层,学习并训练一个反向传播(BP)人工神经网络。作为试验和应用,对华中地区清江流域的分布降水进行了估算。结果表明,基于EOS/MODIS的BP神经网络估算的降水与分布在流域内的各雨量站的实测降水基本一致。结果表明,将EOS/MODIS与人工神经网络相结合,为估算流域分布降水提供了一种新的有效方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Artificial Neural Network to Distributed Precipitation Estimation Based on EOS/MODIS Remotely Sensed Imagery
With the meteorological factors extracted from EOS/MODIS satellite remotely sensed imagery and the corresponding observed precipitation being the input layer and output layer respectively, a back propagation(BP) artificial neural network(ANN) is learned and trained. As the test and application, the distributed precipitations in Qingjiang river basin located in central China are estimated. It is concluded that the precipitations estimated by the BP ANN based on EOS/MODIS are nearly equal to the observed ones at the rainfall stations distributed in the river basin. It is revealed that the integration of EOS/MODIS and ANN provides a new effective way to estimate the distributed precipitation in river basin.
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