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连续参数小波神经网络的递阶遗传训练方法
引用本文:周辉仁,郑丕谔,王海龙.连续参数小波神经网络的递阶遗传训练方法[J].系统工程与电子技术,2008,30(8).
作者姓名:周辉仁  郑丕谔  王海龙
作者单位:天津大学系统工程研究所,天津,300072
摘    要:提出递阶遗传训练方法用于训练连续参数小波神经网络的参数及其结构.现有的连续参数小波网络训练方法大多只能训练网络的参数,包括平移参数、伸缩参数和权值,而网络的结构得预先用某种方法确定.应用递阶遗传算法能够把网络的结构和参数同时通过训练确定.利用混沌时间序列数据进行仿真,结果证明该模型具有较高的预测精度,提出的方法是可行的.

关 键 词:连续参数小波  神经网络  递阶遗传算法  混沌时间序列预测

Hierarchical genetic algorithm-based training of wavelet neural networks with continuous parameters
ZHOU Hui-ren,ZHENG Pie,WANG Hai-long.Hierarchical genetic algorithm-based training of wavelet neural networks with continuous parameters[J].System Engineering and Electronics,2008,30(8).
Authors:ZHOU Hui-ren  ZHENG Pie  WANG Hai-long
Abstract:A hierarchical genetic algorithm is proposed to train the parameters and structure of wavelet neural networks with continuous parameters.Existing training methods for wavelet neural networks with continuous parameters are usually confined to parameters,including connection weights,expansion parameters and movement parameters,while their structures have to be predetermined through some method.In contrast,the configuration and related parameters of wavelet neural networks with continuous parameters can be determined simultaneously by using the hierarchical genetic algorithm.A case-study,based on the chaotic time series data,illustrates the effectiveness of the proposed algorithm.
Keywords:continuous wavelet  neural network  hierarchical genetic algorithm  chaotic time series forecast
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