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遗传算法在水轮发电机模糊神经网络励磁控制器设计中的应用研究
引用本文:王德意,罗兴锜,匡伯燕,杨汉如.遗传算法在水轮发电机模糊神经网络励磁控制器设计中的应用研究[J].水力发电学报,2004,23(6):24-28.
作者姓名:王德意  罗兴锜  匡伯燕  杨汉如
作者单位:1. 西安理工大学电力工程系,西安,710048
2. 安康市水利水电土木建筑勘测设计院,安康,725000
摘    要:本文在分析了模糊神经网络(FNN)控制器的工作原理及设计方法的基础上,提出了一种采用遗传算法优化设计水轮发电机模糊神经网络励磁控制器的方法。其基本过程是利用遗传算法得到初始模糊控制规则,并对初始规则进行过滤,在此基础上利用遗传算法结合模拟退火对得到的模糊神经网络进行训练。仿真结果表明与根据专家经验获得模糊规则和BP算法进行学习的常规FNN比较,采用遗传算法优化设计的模糊神经网络励磁控制器所构成的励磁系统具有更好的动态性能。

关 键 词:遗传算法  模糊神经网络  水轮发电机  励磁系统
修稿时间:2004年3月23日

Study on application of genetic algorithm in design of fuzzy neural network excitation controller of hydro-generator
WANG Deyi ,LUO Xingqi ,KUANG Boyan ,YANG Hanru.Study on application of genetic algorithm in design of fuzzy neural network excitation controller of hydro-generator[J].Journal of Hydroelectric Engineering,2004,23(6):24-28.
Authors:WANG Deyi  LUO Xingqi  KUANG Boyan  YANG Hanru
Affiliation:WANG Deyi 1,LUO Xingqi 1,KUANG Boyan 1,YANG Hanru 2
Abstract:Based on the analysis of the work theory and design method of the fuzzy neural network(FNN) controller,a new method based on genetic algorithm(GA) for design of fuzzy neural network(FNN) excitation controller of hydro generator is presented in this paper.The basic process is that at first the initial fuzzy rules are acquired and initial fuzzy rules are filtrated by genetic algorithm(GA),then the FNN is trained by genetic algorithm(GA) combining with simulated annealing(SA).The system emulation proves that comparing with the excitation control system acquired by the initial fuzzy rules from expert experience and FNN trained by the BP algorithm,the control system based on genetic algorithm has better dynamic performance.
Keywords:genetic algorithm  fuzzy neural network  hydropower generator  excitation system
本文献已被 CNKI 维普 万方数据 等数据库收录!
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