Revisiting Traveling Salesman Problem (TSP): Analysis of GA and SA based Solutions

Darius Bethel, H. Sevil
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Abstract

The purpose of this study to analyze genetic algorithm (GA) and simulated an-nealing (SA) based approaches applied to well-known Traveling Salesman Prob-lem (TSP). As a NP-Hard problem, the goal of TSP is to find the shortest route possible to travel all the cities, given a set of cities and distances between cities. In order to solve the problem and achieve the optimal solution, all permutations need to be checked, which gets exponentially large as more cities are added. Our aim in this study is to provide comprehensive analysis of TSP solutions based on two methods, GA and SA, in order to find a near optimal solution for TSP. The re-sults of the simulations show that although the SA executed with faster comple-tion times comparing to GA, it took more iterations to find a solution. Additional-ly, GA solutions are significantly more accurate than SA solutions, where GA found a solution in relatively less iterations. The original contribution of this study is that GA based solution as well as SA based solution are developed to perform comprehensive parameter analysis. Further, a quantifiable comparison is provided for the results from each parameter analysis of GA and SA in terms of performance of solving TSP.
重访旅行商问题(TSP):基于GA和SA的解法分析
本研究的目的是分析遗传算法(GA)和基于模拟逼近(SA)的方法在著名的旅行推销员问题(TSP)中的应用。作为NP-Hard问题,TSP的目标是在给定一组城市和城市之间的距离的情况下,找到穿越所有城市的最短路线。为了解决问题并获得最优解,需要检查所有的排列,随着城市的增加,排列会呈指数级增长。本研究的目的是基于遗传算法(GA)和遗传算法(SA)两种方法对TSP解进行综合分析,以找到TSP的近最优解。仿真结果表明,与遗传算法相比,遗传算法的完成时间更快,但需要更多的迭代才能找到解。此外,遗传算法解决方案明显比SA解决方案更准确,在SA解决方案中,遗传算法在相对较少的迭代中找到了解决方案。本研究的原始贡献在于开发了基于遗传算法的解和基于SA的解来进行综合参数分析。进一步,对遗传算法和遗传算法的各参数分析结果在求解TSP方面的性能进行了可量化的比较。
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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