基于循环变异自组织遗传算法的PID控制器优化

Z. Jinhua, Zhuang Jian, Duan Haifeng, Wang Sun-an
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引用次数: 5

摘要

提出了一种带有循环突变的自组织遗传算法(SOGACM),并将其用于PID控制器参数的优化。首先给出了优势选择算子和循环突变策略。前者增强了优势个体在进化过程中的作用。后者则根据进化世代和进化周期周期性地改变突变概率。突变概率较小,交叉算子在较长时间内起主导作用。在某一特定时间,突变的概率迅速增加。SOGACM随后基于上述两种操作符构建。算法性能分析表明,循环突变自组织遗传算法具有自组织特性,具有良好的全局搜索性能。PID控制器优化实验的仿真结果表明,采用SOGACM优化方法可以计算出一组合适的PID参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PID Controller Optimization Based on the Self-Organization Genetic Algorithm with Cyclic Mutation
This paper proposed a self-organization genetic algorithm with cyclic mutation (SOGACM) and used it to optimize PID controller parameters. A dominant selection operator and a cyclic mutation strategy were given firstly. The former enhances the action of the dominant individuals in the evolutionary process. And the later changes mutation probability periodically in accordance with evolution generation and the period. Moreover mutation probability keeps smaller and crossover operator plays a dominant role in a relatively long period of time. At certain particular time, the probability of mutation increases quickly. The SOGACM was then constructed based on the two operators mentioned above. The analysis of algorithm performance shows the self-organization genetic algorithm with cyclic mutation possesses self-organization property, and has a good global search performance. The simulation results of PID controller optimization experiment indicate that a suitable set of PID parameters could be calculated by SOGACM optimization method.
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