馈源遗传算法在电力系统控制器设计中的应用

A. Phiri, K. Folly
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引用次数: 13

摘要

本文提出了一种较新的进化算法——增殖遗传算法(BGAs),用于电力系统稳定器参数的整定。遗传算法基于“适者生存”的概念,这是遗传算法的典型特征。GAs和BGAs的主要区别在于BGAs种群的进化是基于类似于人类育种者所使用的人工选择。然而,与GAs不同的是,BGAs中的染色体总是被表示为实数序列,而不是位或整数序列。bga特别适合于处理连续优化参数,是一种非常强大和通用的优化算法。本文提出的BGA-PSS在多种工况下进行了测试,并与基于遗传算法的PSS (GA-PSS)和传统PSS (CPSS)进行了性能比较。仿真结果表明,BGA-PSS的性能优于GA-PSS和CPSS。然而,BGA-PSS和GA-PSS都优于CPSS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Breeder GA to power system controller design
This paper presents the tuning of power system stabilizer (PSS) parameters using a relatively new evolution algorithm called Breeder Genetic Algorithms (BGAs). BGAs are based on the concept of ldquothe survival of the fittestrdquo typical to Genetic Algorithms (GAs). The main difference between GAs and BGAs is that the evolution of BGAspsila population is based on artificial selection similar to the one used by human breeders. However, unlike GAs, the chromosomes in BGAs are always represented as sequences of real numbers rather than sequences of bits or integers. BGAs are particularly suitable to deal with continuous optimization parameters and are a very powerful and versatile optimization algorithm. The proposed BGA-PSS presented in this paper was tested over a wide range of operating conditions and its performance compared with both the Genetic Algorithm based PSS (GA-PSS) and the Conventional PSS (CPSS). Simulation results show that the performance of the BGA-PSS is better than that of the GA-PSS and the CPSS. However, both the BGA-PSS and the GA-PSS outperform the CPSS.
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