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Discrete wavelet transform coupled with ANN for daily discharge forecasting into Tres Marias reservoir

机译:离散小波变换与ANN结合,用于Tres Marias水库的日流量预测

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This paper proposes the use of discrete wavelet transform (DWT) to remove the high-frequency components (details) of an original signal, because the noises generally present in time series (e.g. streamflow records) may influence the prediction quality. Cleaner signals could then be used as inputs to an artificial neural network (ANN) in order to improve the model performance of daily discharge forecasting. Wavelet analysis provides useful decompositions of original time series in high and low frequency components. The present application uses the Coiflet wavelets to decompose hydrological data, as there have been few reports in the literature. Finally, the proposed technique is tested using the inflow records to the Tres Marias reservoir in Sao Francisco River basin, Brazil. This transformed signal is used as input for an ANN model to forecast inflows seven days ahead, and the error RMSE decreased by more than 50% (i.e. from 454.2828 to 200.0483).
机译:本文提出使用离散小波变换(DWT)来去除原始信号的高频分量(细节),因为通常以时间序列(例如流记录)出现的噪声可能会影响预测质量。然后,可以将更清洁的信号用作人工神经网络(ANN)的输入,以改善每日排放量预测的模型性能。小波分析提供了高频和低频分量中原始时间序列的有用分解。本申请使用Coiflet小波分解水文数据,因为在文献中报道很少。最后,使用流入巴西圣弗朗西斯科河盆地的Tres Marias水库的入水记录对提出的技术进行了测试。该转换后的信号用作ANN模型的输入,以预测未来7天的流量,并且误差RMSE降低了50%以上(即从454.2828降至200.0483)。

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