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Regularized Back-Propagation Neural Network for Rainfall-Runoff Modeling

机译:正则反向传播神经网络用于降雨径流建模

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In this study, we applied regularized back-propagation neural network (BPNN), which made use of a performance function different from normal BPNN, to predict daily flow. On the other hand, Broyden-Fletcher-Goldfarb-Shanno (BFGS) -algorithm-based BPNN was also used to compare its prediction performance with that of regularized BPNN. From 1979 to 1998, precipitation and stream flow data in Xitiaoxi watershed for 20 years were collected. All these data were divided into 2 sets: one was the training set (1979-1988), and the other was the testing set (1989-1998). The mean absolute error (MAE), mean square error (MSE) and coefficient of efficiency (CE) were used to evaluate the performance of these two algorithms. The results indicated that regularized BPNN could enhance generalization ability and avoid over fitting effectively, and it outperformed BFGS-algorithm-based BPNN during training and testing stages. From this study, it could be found that regularized BPN is appropriate for rainfall-runoff modeling due to its simple structure and high accuracy.
机译:在这项研究中,我们应用了正则反向传播神经网络(BPNN),该网络利用了与正常BPNN不同的性能函数来预测每日流量。另一方面,还使用基于Broyden-Fletcher-Goldfarb-Shanno(BFGS)算法的BPNN将其预测性能与正则化BPNN进行了比较。从1979年到1998年,收集了西条溪流域20年的降水和流量数据。所有这些数据分为两组:一组是训练集(1979-1988年),另一组是测试集(1989-1998年)。平均绝对误差(MAE),均方误差(MSE)和效率系数(CE)用于评估这两种算法的性能。结果表明,在训练和测试阶段,正则化的BPNN可以增强泛化能力,有效地避免过度拟合,并且优于基于BFGS算法的BPNN。从这项研究中,可以发现正规化的BPN由于其结构简单,精度高而适合于降雨径流模拟。

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