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遗传算法在发电机励磁系统参数辨识中的应用
引用本文:王晓伟,蒋平,王杨正,徐珂.遗传算法在发电机励磁系统参数辨识中的应用[J].江苏电机工程,2007,26(5):4-7.
作者姓名:王晓伟  蒋平  王杨正  徐珂
作者单位:1. 东南大学电气工程学院,江苏,南京,210096
2. 江苏省电力试验研究院有限公司,江苏,南京,210036
摘    要:提出了一种基于遗传算法的将发电机励磁系统原模型转换为仿真软件下标准模型的参数辨识方法,以原模型和标准模型的输出误差最小作为辨识目标,利用遗传算法不断优化调整标准模型中的参数,最终得到满足误差要求的励磁系统标准模型参数.与传统的励磁系统参数辨识方法相比较,该方法很好地解决了励磁系统非线性环节难以有效辨识的问题,方便可靠,精度高.实际发电机励磁系统参数辨识结果表明,该方法具有很好的效果.

关 键 词:励磁系统  参数辨识  遗传算法  原模型  标准模型
文章编号:1009-0665(2007)05-0004-03
修稿时间:2007年4月5日

Application of Genetic Algorithm in Parameter Identification of Generator Excitation Systems
WANG Xiao-wei,JIANG Ping,WANG Yang-zheng,XU Ke.Application of Genetic Algorithm in Parameter Identification of Generator Excitation Systems[J].Jiangsu Electrical Engineering,2007,26(5):4-7.
Authors:WANG Xiao-wei  JIANG Ping  WANG Yang-zheng  XU Ke
Abstract:A new method based on genetic algorithm for identifying parameters of generator excitation systems is introduced in this paper.This method is used to convert the original model of generator excitation system to the standard model of excitation system.By using genetic algorithm,with the minimal difference between the output of the original model and that of the standard model as the goal,the parameters of generator excitation system are adjusted constantly.Finally,the most suitable parameters of generator excitation system can be obtained.Compared to traditional identification methods,this method solves the problem that nonlinear parts of excitation system are difficult to identify,and the result is more accurate.The actual identification result shows that this method can obtain the accurate parameters of the standard model of generator excitation system.
Keywords:excitation system  parameter identification  genetic algorithm  original model  standard model
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