An efficient hybrid genetic algorithm for solving truncated travelling salesman problem

IF 1.4 Q3 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Decision Science Letters Pub Date : 2022-01-01 DOI:10.5267/j.dsl.2022.6.003
S. Purusotham, T. J. Kumar, T. Vimala, K.J. Ghanshyam
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Abstract

This paper considers a practical truncated traveling salesman problem (TTSP), in which the salesman is only required to cover a subset of out of given cities (rather than covering all the given cities as in conventional travelling salesman problem (TSP)) with minimal traversal distance. Thus, every feasible solution tour contains exactly cities including the starting city. However, extensive research on TSP has been received and various efficient solution techniques including exact, heuristic, and metaheuristic algorithms are devoted, a very limited attention has been given to TTSP models because of its solution structure. The TTSP model comprises two types of problems including city selection i.e. as a salesman's trip need not include all the cities, the challenge is to identify which combination of cities are to be visited and which sequence of cities will constitute minimal traversal distance. A hybrid genetic algorithm (GA) comprising sophisticated mutation operators is developed to tackle this problem efficiently. Comparative computational findings suggest that the proposed GA has capability to outperform existing approaches in terms of TTSP results. In addition, the proposed GA report improved results and will serve as a basis for forthcoming TTSP studies.
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求解截断旅行商问题的一种高效混合遗传算法
本文研究了一个实际的截断旅行商问题(TTSP),其中推销员只需要以最小的遍历距离覆盖给定城市中的一个子集(而不是像传统的旅行商问题(TSP)那样覆盖所有给定城市)。因此,每个可行的解决方案之旅都包含确切的城市,包括起始城市。然而,由于对TSP的广泛研究和各种有效的求解技术,包括精确、启发式和元启发式算法,由于其解结构,对TTSP模型的关注非常有限。TTSP模型包括两种类型的问题,包括城市选择,即由于销售人员的旅行不需要包括所有的城市,挑战是确定要访问的城市组合以及哪个城市序列将构成最小的穿越距离。为了有效地解决这一问题,提出了一种包含复杂变异算子的混合遗传算法。比较计算结果表明,就TTSP结果而言,所提出的遗传算法具有优于现有方法的能力。此外,拟议的总干事报告改进了结果,并将作为即将进行的TTSP研究的基础。
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来源期刊
Decision Science Letters
Decision Science Letters Decision Sciences-Decision Sciences (all)
CiteScore
3.40
自引率
5.30%
发文量
49
审稿时长
20 weeks
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