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Training Artificial Neural Network Using Hybrid Optimization Algorithm for Rainfall-Runoff Forecasting

机译:利用混合优化算法训练人工神经网络进行降雨径流预报

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In this paper, a hybrid optimization algorithm is proposed to train the initial connection weights and thresholds of artificial neural network (ANN) by incorporating Simulated Annealing algorithm (SA) into Genetic Algorithm (GA), and then the Back Propagation (BP) algorithm is applied to adjust the final weights and biases, namely HGASA-ANN. Finally, a numerical example of daily rainfall-runoff data is used to elucidate the forecasting performance of the proposed HGASA-ANN model. The GASA is employed to accelerate the training speed and helps to avoid premature convergence and permutation problems. The HGASA-NN can make use of not only strong global searching ability of the GASA, but also strong local searching ability of the BP algorithm. The forecasting results indicate that the proposed model yields more accurate forecasting results than the back-propagation neural network and pure GA training artificial neural network. Therefore, the HGASA-ANN model is a promising alternative for rainfall-runoff forecasting.
机译:本文提出一种混合优化算法,通过将模拟退火算法(SA)融合到遗传算法(GA)中来训练人工神经网络(ANN)的初始连接权重和阈值,然后进行反向传播(BP)算法。用于调整最终权重和偏差,即HGASA-ANN。最后,使用每日降雨径流数据的数值示例来阐明所提出的HGASA-ANN模型的预测性能。使用GASA可以加快训练速度,并有助于避免过早的收敛和排列问题。 HGASA-NN不仅可以利用GASA强大的全局搜索能力,而且可以利用BP算法强大的局部搜索能力。预测结果表明,与反向传播神经网络和纯GA训练人工神经网络相比,该模型产生的预测结果更为准确。因此,HGASA-ANN模型是降雨径流预测的有希望的替代方法。

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