Performance analysis of a novel crossover technique on permutation encoded genetic algorithms

R. Lakshmi, K. Vivekanandan
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引用次数: 2

Abstract

The Performance of GA is mainly dependent on two factors are chromosome representation and the selection of relevant genetic operators such as selection, crossover and mutation. Many GA crossover operators have been invented by researchers because the performance of GA depends on an ability of these operators. Though there are several crossover techniques available, these are randomly removes the duplicate genes in a chromosome lead to more computation time to converge with optimal solution. Since most of them do not have stable model. Removing duplicate genes in a chromosome is a hectic process in GA. To overcome these difficulties, this paper uses a novel crossover called Fast Order Mapped Crossover (FOMX) which does not perform randomness and gene level comparison to find duplicate genes in individuals. To prove this technique, travelling salesperson problem (tsp) has chosen in order to find the optimal path of a tour. This technique is applied on different tsp instances and the obtained results are compared with the existing crossover techniques.
排列编码遗传算法中一种新的交叉技术的性能分析
遗传算法的性能主要取决于两个因素:染色体表示和相关遗传算子的选择,如选择、交叉和突变。由于遗传算法的性能取决于这些交叉算子的能力,研究人员发明了许多遗传算法的交叉算子。虽然有几种交叉技术可用,但这些技术都是随机去除染色体中的重复基因,导致更多的计算时间来收敛到最优解。因为它们大多没有稳定的模型。在遗传算法中,去除染色体上的重复基因是一个忙乱的过程。为了克服这些困难,本文使用了一种新的交叉称为快速顺序映射交叉(FOMX),它不执行随机性和基因水平比较来寻找个体中的重复基因。为了证明这一技术,选择了旅行推销员问题(tsp)来寻找最优的旅行路径。将该技术应用于不同的tsp实例,并与现有的交叉技术进行了比较。
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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