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Genetic Algorithm Performance with Different Selection Strategies in Solving TSP

机译:求解TSP的不同选择策略的遗传算法性能

摘要

A genetic algorithm (GA) has several genetic operators that can be modified to improve the performance of particular implementations. These operators include parent selection, crossover and mutation. Selection is one of the important operations in the GA process. There are several ways for selection. This paper presents the comparison of GA performance in solving travelling salesman problem (TSP) using different parent selection strategy. Several TSP instances were tested and the results show that tournament selection strategy outperformed proportional roulette wheel and rank-based roulette wheel selections, achieving best solution quality with low computing times. Results also reveal that tournament and proportional roulette wheel can be superior to the rank-based roulette wheel selection for smaller problems only and become susceptible to premature convergence as problem size increases.
机译:遗传算法(GA)具有多个遗传运算符,可以对其进行修改以提高特定实现的性能。这些运算符包括亲本选择,交叉和突变。选择是GA流程中的重要操作之一。有几种选择方式。本文介绍了使用不同的家长选择策略来解决旅行商问题(TSP)的GA绩效的比较。测试了多个TSP实例,结果表明,锦标赛选择策略优于比例轮盘赌和基于排名的轮盘赌选择,从而以较低的计算时间实现了最佳的解决方案质量。结果还显示,仅针对较小的问题,锦标赛轮盘和比例轮盘赌可以优于基于排名的轮盘赌,并且随着问题规模的增加,它们容易过早收敛。

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