A wavelet-neural network hybrid modelling approach for estimating and predicting river monthly flows

  • Wei S
  • Yang H
  • Song J
  • et al.
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Abstract

A wavelet-neural network (WNN) hybrid modelling approach for monthly river flow estimation and prediction is developed. This approach integrates discrete wavelet multi-resolution decomposition and a back-propagation (BP) feed-forward multilayer perceptron (FFML) artificial neural network (ANN). The Levenberg-Marquardt (LM) algorithm and the Bayesian regularization (BR) algorithm were employed to perform the network modelling. Monthly flow data from three gauges in the Weihe River in China were used for network training and testing for 48-month-ahead prediction. The comparison of results of the WNN hybrid model with those of the single ANN model show that the former is able to significantly increase the prediction accuracy.Editor D. Koutsoyiannis; Associate editor H. AksoyCitation Wei, S., Yang, H., Song, J.X., Abbaspour, K., and Xu, Z.X., 2013. A wavelet-neural network hybrid modelling approach for estimating and predicting river monthly flows. Hydrological Sciences Journal, 58 (2), 374-389. © 2013 Copyright 2013 IAHS Press.

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Wei, S., Yang, H., Song, J., Abbaspour, K., & Xu, Z. (2013). A wavelet-neural network hybrid modelling approach for estimating and predicting river monthly flows. Hydrological Sciences Journal, 58(2), 374–389. https://doi.org/10.1080/02626667.2012.754102

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