Hybrid particle swarm and neural network approach for streamflow forecasting

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Abstract

In this paper, an artificial neural network (ANN) based on hybrid algorithm combining particle swarm optimization (PSO) with back-propagation (BP) is proposed to forecast the daily streamflows in a catchment located in a semi-arid region in Morocco. The PSO algorithm has a rapid convergence during the initial stages of a global search, while the BP algorithm can achieve faster convergent speed around the global optimum. By combining the PSO with the BP, the hybrid algorithm referred to as BP-PSO algorithm is presented in this paper. To evaluate the performance of the hybrid algorithm, BP neural network is also involved for a comparison purposes. The results show that the neural network model evolved by PSO-BP algorithm has a good predictions and better convergence performances. © EDP Sciences, 2010.

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Sedki, A., & Ouazar, D. (2010). Hybrid particle swarm and neural network approach for streamflow forecasting. In Mathematical Modelling of Natural Phenomena (Vol. 5, pp. 132–138). https://doi.org/10.1051/mmnp/20105722

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