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基于PSO算法的目标值前馈型二自由度PID控制器的优化设计
引用本文:王海稳,张井岗,曲俊海.基于PSO算法的目标值前馈型二自由度PID控制器的优化设计[J].智能系统学报,2006,1(2):58-61.
作者姓名:王海稳  张井岗  曲俊海
作者单位:1. 太原科技大学,电子信息工程学院,山西,太原,030024
2. 中国兵器工业集团,第207研究所,山西,太原,030006
基金项目:太原科技大学青年基金资助项目(2006103).
摘    要:微粒群优化算法是一种全局优化技术,算法简单、容易实现.其通过微粒间的相互作用发现复杂搜索空间中的最优区域.提出了将微粒群优化算法用于二自由度PID控制器参数的寻优设计中,并以工业过程中常见的对象为模型,进行了Matlab仿真试验,仿真结果表明系统同时具有了最优的目标值跟踪特性和干扰抑制特性,证明了PSO算法的有效性.

关 键 词:二自由度控制  PID控制  微粒群优化  参数优化
文章编号:1673-4785(2006)02-0058-04
收稿时间:2006-02-28
修稿时间:2006-02-28

Optimal design for two degree-of-freedom PID controller based on PSO algorithm
WANG Hai-wen,ZHANG Jing-gang,QU Jun-hai.Optimal design for two degree-of-freedom PID controller based on PSO algorithm[J].CAAL Transactions on Intelligent Systems,2006,1(2):58-61.
Authors:WANG Hai-wen  ZHANG Jing-gang  QU Jun-hai
Affiliation:1. College of Electronic and Information Engineering, Taiyuan University of Science and Technology, Taiyuan 030024, China; 2. The 207 Research Institute, China North Industries Group Corporation, Taiyuan 030006, China
Abstract:Particle swarm optimization(PSO)algorithm is a random global optimization technology.The algorithm is simple and easy to be implemented.Through interaction between particles,the algorithm canfind the optimal area in complicated searching space.A method is presented,for optimizing two-degree-of-freedom PID controller parameter by using PSO algorithm and then optimization algorithm is tested by simulation experiment in the common industrial model based on MATLAB.The simulation results show that the system is simultaneously both the characteristics of command tracking and disturbance rejection.The simulation verifies the effectiveness of the PSO algorithm.
Keywords:two degree-of-freedom control  PID control  particle swarm optimization  parameters optimization
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