MGA-TSP:旅行商问题的现代遗传算法

Q3 Engineering
Ahmad M. Manasrah, M. A. A. Betar, M. Awadallah, K. Nahar, Mohammed M. Abu Shquier, Ra'ed M. Al Khatib, Ahmad Bany Doumi
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引用次数: 0

摘要

本文提出了一种求解旅行商问题(MGA-TSP)的改进算法——现代遗传算法。目前,用于求解TSP问题的最成功的进化算法是遗传算法。GA的主要障碍版权所有©2019 Inderscience Enterprises Ltd. 216 R.M. Al-Khatib等人正在建立其初始人口。因此,本文利用3个邻域结构(逆、插入和交换)以及2-opt来构建强初始种群。此外,遗传算法在生成过程中的主要算子(即交叉和突变)也针对TSP进行了增强。因此,本文提出的MGA-TSP采用了强大的交叉算子EAX来增强其收敛性。为了验证目的,我们使用了TSP数据集,范围从150到33,810个城市。首先,研究了各相邻结构对MGA-TSP性能的影响。综上所述,MGA-TSP的效果最好。用于比较评价。在几乎所有使用的TSP实例中,MGA-TSP能够优于六种比较方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MGA-TSP: Modernized Genetic Algorithm for the Traveling Salesman Problem
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 Copyright © 2019 Inderscience Enterprises Ltd. 216 R.M. Al-Khatib et al. 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.
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来源期刊
CiteScore
1.20
自引率
0.00%
发文量
27
期刊介绍: IJRIS is an interdisciplinary forum that publishes original and significant work related to intelligent systems based on all kinds of formal and informal reasoning. Intelligent systems imply any systems that can do systematised reasoning, including automated and heuristic reasoning.
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