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Rainfall-runoff modeling using principal component analysis and neural network

机译:基于主成分分析和神经网络的降雨径流模拟

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The predictive accuracy of a Rainfall-Runoff Neural Network (RRNN) model depends largely on the suitability of its structure. Unfortunately, the procedures for selecting an appropriate structure for the RRNN have not been thoroughly examined. Inclusion of too many input neurons in the RRNN may complicate its structure, and thereby decrease its generalization performance. The objective of this study is to evaluate the potential of a Principal Component Analysis (PCA) method, i.e. by extracting the principal components from lagged input hydrometeorological data, in improving the predictive accuracy of the RRNN. The Darong River watershed located in Guangxi Province of China, with a drainage area of 722 km~2, has been selected to demonstrate the PCA method for modeling the hourly Rainfall - Runoff (RR) relationship. Comparative tests on the forecasting accuracy were conducted among the RRNNs configured with both basin-averaged and spatially distributed rainfall information. Experimental results revealed that, when calibrating the RRNNs with spatially distributed rainfall, the RRNNs using the PCA as an input data-preprocessing tool were found to provide a generally better representation of the RR relationship for the Darong River watershed. However, variable results were observed if the neural networks had been calibrated with basin-averaged rainfall.
机译:降雨径流神经网络(RRNN)模型的预测准确性在很大程度上取决于其结构的适用性。不幸的是,为RRNN选择合适的结构的程序尚未得到彻底检查。 RRNN中包含过多的输入神经元可能会使其结构复杂化,从而降低其泛化性能。这项研究的目的是评估主成分分析(PCA)方法的潜力,即通过从滞后的输入水文气象数据中提取主成分来提高RRNN的预测准确性。选择了位于中国广西省的大榕江流域,流域面积为722 km〜2,以证明PCA方法可以模拟小时降雨与径流(RR)关系。在配置了流域平均和空间分布降雨信息的RRNN之间,对预报准确性进行了对比测试。实验结果表明,当用空间分布的降雨校准RRNN时,发现使用PCA作为输入数据预处理工具的RRNN可以更好地表示大荣河流域的RR关系。但是,如果用流域平均降雨量对神经网络进行了校准,则会观察到各种结果。

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