A Multi-Objective Minimum Matrix Search Algorithm Applied to Large-Scale Bi-Objective TSP

M. M. Smith, Yun-Shiow Chen
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引用次数: 1

Abstract

The well-known NP-hard traveling salesman problem (TSP) primarily considers distance as its single objective. However, applications modeled from real world systems repeatedly involve more than one objective giving rise to multi-objective optimization. Fusing ideas of dimension reduction, decomposition approaches, and genetic algorithms, this paper presents a multiobjective minimum matrix search algorithm (MOMMS) for the heuristic resolution of the bi-objective TSP (bTSP). The MOMMS uses dimension reduction to obtain a reduce matrix network that is used to obtain or to approximate the set of efficient solutions. The reduce matrix network aids in the decomposition of a multiobjective combinatorial optimization (MOCO) problem into a single objective combinatorial optimization problem. Moreover, using the reduce matrix network MOMMS introduces a population generator that creates an initial population composed of an approximation to the extreme supported efficient solutions. The MOMMS does not use any numerical parameter. Also, MOMMS uses family competitive metamorphosis and short-term memory selection to maintain population diversity in MOCO problems. The proposed algorithm showed respectable results in testing on well-known benchmark problems of the bTSP. Comparisons are performed with the results of state-of-the-art algorithms from the literature. Moreover, the MOMMS is tested on largescale instances of the bTSP. The computational study shows that the proposed algorithm is able to solve large-scale instances in reasonable time. Therefore, the MOMMS is a competitive tool for solving the bTSP.
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用于大规模双目标TSP的多目标最小矩阵搜索算法
众所周知的NP-hard旅行商问题(TSP)主要将距离作为其唯一目标。然而,从现实世界系统中建模的应用程序反复涉及多个目标,从而产生多目标优化。结合降维、分解和遗传算法的思想,提出了一种用于双目标TSP启发式求解的多目标最小矩阵搜索算法(MOMMS)。MOMMS使用降维来获得一个约简矩阵网络,该网络用于获得或近似有效解集。约简矩阵网络有助于将多目标组合优化问题分解为单目标组合优化问题。此外,使用约简矩阵网络,MOMMS引入了一个种群生成器,该生成器创建一个由极端支持有效解的近似值组成的初始种群。MOMMS不使用任何数值参数。在MOCO问题中,MOMMS利用家族竞争变态和短期记忆选择来维持种群多样性。该算法在著名的bTSP基准问题上得到了良好的测试结果。比较是从文献中执行的最先进的算法的结果。此外,MOMMS在bTSP的大规模实例上进行了测试。计算研究表明,该算法能够在合理的时间内求解大规模实例。因此,MOMMS是解决bTSP的一个有竞争力的工具。
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