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遗传算法改进的BP神经网络对汛期三门峡水库泥沙冲淤量的计算
引用本文:刘媛媛,练继建. 遗传算法改进的BP神经网络对汛期三门峡水库泥沙冲淤量的计算[J]. 水力发电学报, 2005, 24(4): 110-113,88
作者姓名:刘媛媛  练继建
作者单位:天津大学建工学院,300072;天津大学建工学院,300072
基金项目:国家自然科学基金资助项目(59979020)
摘    要:本文针对BP神经网络收敛速度慢和易于陷入极小值的问题,采用将遗传算法全局寻优和BP神经网络局部寻优相结合的方法,提高了BP神经网络的计算精度和收敛速度。应用该模型和一般BP神经网络模型对汛期三门峡水库的泥沙冲淤量进行了计算和预测。数值结果对比发现,经遗传算法改进后的BP神经网络模型在降低计算和预测的平均误差的同时,迭代次数比一般BP神经网络模型也大大减少。因此适用于求解如计算水库泥沙冲淤量等非线性问题。

关 键 词:河流泥沙工程学  遗传算法  BP神经网络  水库泥沙冲淤量  三门峡水库
收稿时间:2004-04-20
修稿时间:2004-04-20

Calculation of sediment and scour of Sanmenxia reservoir in flood season by the BP neural network improved by GA
LIU Yuanyuan,LIAN Jijian. Calculation of sediment and scour of Sanmenxia reservoir in flood season by the BP neural network improved by GA[J]. Journal of Hydroelectric Engineering, 2005, 24(4): 110-113,88
Authors:LIU Yuanyuan  LIAN Jijian
Abstract:In this paper, the problems of slow convergence speed and being prone to converge to minimum are solved by combining the characteristics of global optimization of GA (Genetic Algorithm) with local optimization of BP neural network, the calculation accuracy and convergence rate of BP neural network are improved.The sediment and scour of Sanmenxia reservoir in flood season are calculated and predicted by this model and BP neural network. Compared with normal BP neural network, the numerical results of BP neural network improved by GA show that the average errors of calculation and prediction are diminished and the iterative numbers are much less than that of the normal BP neural network. Thus the BP neural network improved by GA is suitable to solve nonlinear problems such as calculation of sediment and scour of reservoirs.
Keywords:river sediment engineering  GA (Genetic Algorithm)  BP neural network  sediment and scour of reservoir  Sanmenxia reservoir  
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