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Using wavelet transform to improve generalization capability of feed forward neural networks in monthly runoff prediction

机译:利用小波变换提高前馈神经网络在月径流量预测中的泛化能力

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In the study presented, a hybrid model is proposed for monthly runoff prediction by using wavelet transform and feed forward neural networks. Discrete wavelet transform (DWT) and Levenberg-Marquardt optimization algorithm based feed forward neural networks (FFNN) are considered for the modeling study. The study region covers the basins of Medar River which is located at the Aegean region of Turkey. Meteorological data, which represent the study region, were decomposed into wavelet sub-time series by DWT. Ineffective sub-time series were eliminated by using Mallow Cpcoefficient based all possible regression method to prevent collinearity. Then, effective sub-time series components constituted the new inputs of FFNN. Some favorite evaluation measures, that is, determination coefficient (R2), adjusted determination coefficient (Adj.R2), Nash-Sutcliffe efficiency coefficient (NS), root mean squared error (RMSE), weighted mean absolute percentage error (WMAPE), were employed to assess modeling performances. The results determined in study indicate that the DWT based FFNN models (DWT-FFNN) are successful tools to model the monthly runoff series and can give good prediction performances than conventional methods.
机译:在提出的研究中,提出了一种混合模型,用于利用小波变换和前馈神经网络进行月径流量预测。建模研究考虑了基于离散小波变换(DWT)和基于Levenberg-Marquardt优化算法的前馈神经网络(FFNN)。研究区域覆盖了位于土耳其爱琴海地区的Medar河流域。 DWT将代表研究区域的气象数据分解为小波子时间序列。通过使用基于Mallow Cpcoefficient的所有可能的回归方法来消除无效的子时间序列,以防止共线性。然后,有效的子时间序列成分构成了FFNN的新输入。一些最喜欢的评估方法是确定系数(R2),调整后的确定系数(Adj.R2),纳什-苏克利夫效率系数(NS),均方根误差(RMSE),加权平均绝对百分比误差(WMAPE)。用于评估建模性能。在研究中确定的结果表明,基于DWT的FFNN模型(DWT-FFNN)是模拟月径流序列的成功工具,与常规方法相比,可以提供良好的预测性能。

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