Spider Monkey Optimization to Solve Traveling Salesman Problem

Safial Islam Ayon, M. Akhand, S. A. Shahriyar, N. Siddique
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引用次数: 9

Abstract

Traveling Salesman Problem (TSP) is the most well-known combinatorial optimization real-world problem. TSP is also very popular to check proficiency in any newly developed optimization method. In addition, the optimization methods, which are developed for other tasks (e. g., numerical optimization), also test their proficiency in TSP. This study investigates a new technique to solve TSP based on a recently developed optimization technique stimulated through the foraging conduct of spider monkeys. Standard Spider Monkey Optimization (SMO) is established for numerical optimization which has six phases and each one has a different purpose. In this study, SMO is modified and updated to solve TSP; and Swap Operators (SOs), and Swap Sequence (SS) are considered to adapt SMO for TSP. In the proposed method, each spider monkey is considered as a TSP solution and SS is considered to update the solution. SS is an arrangement of several SOs in which each one holds two particular positions of a solution that might be swapped to make a new solution. All SOs of a SS is applied on a specific tour maintaining order and thus ramifications of the SS change the TSP tour into another one. The SOs are generated using the experience of a specific spider monkey as well as the experience of other members (local leader, global leader, or randomly selected spider monkey) of the group. The proposed strategy has been examined on a huge number of benchmark TSPs and final consequences are compared to other prominent methods. SMO shows 11 best result out of 15 benchmark TSP problem compare to Ant Colony Optimization (ACO) and Velocity Tentative PSO (VTPSO). Experimental consequences show that the proposed strategy is a decent technique to solve TSP.
蜘蛛猴优化求解旅行商问题
旅行商问题(TSP)是最著名的组合优化问题。TSP也非常流行用于检查任何新开发的优化方法的熟练程度。此外,为其他任务(如数值优化)开发的优化方法也测试了他们对TSP的熟练程度。本文研究了一种基于蜘蛛猴觅食行为刺激的优化技术来求解TSP的新方法。建立了标准蜘蛛猴优化(SMO)的数值优化方法,该方法分为六个阶段,每个阶段都有不同的目的。在本研究中,SMO被修正和更新以求解TSP;并考虑了交换算子(so)和交换序列(SS),使SMO适应TSP。在该方法中,将每个蜘蛛猴视为一个TSP解,并考虑SS来更新该解。SS是由若干个so组成的一种排列方式,其中每个so持有一个解的两个特定位置,这些位置可以交换形成一个新的解。SS的所有SOs都应用于维持秩序的特定巡回,因此SS的分支将TSP巡回改变为另一个巡回。SOs是使用特定蜘蛛猴的经验以及群体中其他成员(当地领导者,全球领导者或随机选择的蜘蛛猴)的经验生成的。所提出的策略已经在大量的基准tsp上进行了检验,并将最终结果与其他突出的方法进行了比较。与蚁群优化(ACO)和速度暂定粒子群优化(VTPSO)相比,SMO在15个基准TSP问题中显示出11个最佳结果。实验结果表明,该策略是一种较好的解决TSP问题的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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