Performance Analysis of Clustering Based Genetic Algorithm

Athaur Rahman Najeeb, A. Aibinu, M. Nwohu, M. Salami, and H. Bello Salau
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引用次数: 2

Abstract

In this work, performance analysis of Clustering based Genetic Algorithm (CGA) proposed in the literature has been undertaken. The proposed CGA on which the performance analysis of this paper is based involve the use of two centroids based clustering technique as a new method of chromosomes selection at the reproduction stage in a typical Genetic Algorithm. Population Control and Polygamy mating techniques were introduced to improve the performance of the algorithm. Results obtained from the determination of optimal solutions to the: Sphere, Schwefel 2.4, Beale and another known optimization functions carried out in this work shows that the proposed CGA converges to global solutions within few iterations and can also be adopted for function optimization aside from the route optimization problem previously reported in Literature.
基于聚类的遗传算法性能分析
本文对文献中提出的基于聚类的遗传算法(CGA)进行了性能分析。本文性能分析所基于的CGA是将基于两个质心的聚类技术作为典型遗传算法中生殖阶段染色体选择的一种新方法。为了提高算法的性能,引入了人口控制和多配偶交配技术。本文对Sphere、Schwefel 2.4、Beale等已知优化函数的最优解求解结果表明,本文所提出的CGA在迭代次数较少的情况下收敛到全局解,除了文献中报道的路径优化问题外,也可用于函数优化。
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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