Automated synthesis of optimal controller using multi-objective genetic programming for two-mass-spring system

I. Gholaminezhad, A. Jamali, Hirad Assimi
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引用次数: 10

Abstract

There are much research effort in the literature using genetic programming as an efficient tool for design of controllers for industrial systems. In this paper, multi-objective uniform-diversity genetic programming (MUGP) is used for automated synthesis of both structure and parameter tuning of optimal controllers as a many-objective optimization problem. In the proposed evolutionary design methodology, each candidate controller illustrated by a transfer function, whose optimal structure and parameters, obtained based on performance optimization of each candidate controller. The performance indices of each controller are treated as separate objective functions, and thus solved using the multi-objective method of this work. A two-mass-spring system is considered to show the efficiency of the proposed method using performance optimization of open loop and closed loop control system characteristics. The results show that the proposed method is a computationally efficient framework compared to other methods in the literature for automatically designing both structure and parameter tuning of optimal controllers.
基于多目标遗传规划的二质量弹簧系统最优控制器自动合成
文献中对遗传规划作为工业系统控制器设计的有效工具进行了大量的研究。本文将多目标均匀多样性遗传规划(MUGP)作为多目标优化问题,用于最优控制器的结构和参数整定的自动综合。在该进化设计方法中,每个候选控制器由一个传递函数表示,该传递函数的最优结构和参数是基于每个候选控制器的性能优化得到的。将各控制器的性能指标作为独立的目标函数,采用本文的多目标方法进行求解。以一个双质量弹簧系统为例,通过对开环和闭环控制系统特性进行性能优化,验证了所提方法的有效性。结果表明,与文献中其他方法相比,所提出的方法是一种计算效率高的框架,可以自动设计最优控制器的结构和参数整定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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