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MGA-TSP: modernised genetic algorithm for the travelling salesman problem

机译:MGA-TSP:解决旅行商问题的现代化遗传算法

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This paper proposes a new enhanced algorithm called modernised genetic algorithm for solving the travelling salesman problem (MGA-TSP). Recently, the most successful evolutionary algorithm used for TSP problem, is GA algorithm. The main obstacles for GA is building its initial population. Therefore, in this paper, three neighbourhood structures ( inverse , insert , and swap ) along with 2- opt is utilised to build strong initial population. Additionally, the main operators (i.e., crossover and mutation) of GA during the generation process are also enhanced for TSP. Therefore, powerful crossover operator called EAX is utilised in the proposed MGA-TSP to enhance its convergence. For validation purpose, we used TSP datasets, range from 150 to 33,810 cities. Initially, the impact of each neighbouring structure on the performance of MGA-TSP is studied. In conclusion, MGA-TSP achieved the best results. For comparative evaluation. MGA-TSP is able to outperform six comparative methods in almost all TSP instances used.
机译:本文提出了一种新的改进算法,称为现代遗传算法,用于解决旅行商问题(MGA-TSP)。最近,用于TSP问题的最成功的进化算法是GA算法。通用航空的主要障碍是建立初始人口。因此,在本文中,利用三个邻域结构(反向,插入和交换)以及2-opt来构建强大的初始种群。此外,对于TSP,GA在生成过程中的主要运算符(即交叉和突变)也得到了增强。因此,在建议的MGA-TSP中使用了称为EAX的强大交叉算子来增强其收敛性。为了进行验证,我们使用了TSP数据集,范围从150到33,810个城市。最初,研究了每个相邻结构对MGA-TSP性能的影响。总之,MGA-TSP获得了最佳结果。进行比较评估。在几乎所有使用的TSP实例中,MGA-TSP都能胜过六种比较方法。

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