A cloud computing approach to superscale colored traveling salesman problems

Zhicheng Lin, Jun Li, Yongcui Li
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Abstract

The colored traveling salesman problem (CTSP) generalizes the well-known multiple traveling salesman problem by utilizing colors to describe the accessibility of cities to individual salesmen. Many centralized algorithms have been developed to solve CTSP instances. This work presents a distributed solving framework and method for CTSP for the first time. The framework consists of multiple container-based computing nodes that rely on specific cloud infrastructures to perform distributed optimization in a pipeline style. In the framework, we develop a distributed Delaunay-triangulation-based variable neighborhood search (DDVNS) algorithm for solving a CTSP case decomposed into many traveling salesman problems. DDVNS exploits a two-stage initialization to generate an initial solution for all TSPs. After that, Delaunay-triangulation-based variable neighborhood search (DVNS) is employed to find local optima. Furthermore, the obtained solutions are improved by reallocating multicolor cities and iterating the search progress, ultimately leading to a group of CTSP solutions. Finally, extensive experiments show that DDVNS outperforms the state-of-the-art centralized VNS algorithms in terms of search efficiency and solution quality. Notably, we can achieve the best solution in a superscale case with 16 salesmen and 160,000 cities within 15 minutes, breaking the best record of CTSPs.

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超大规模彩色旅行推销员问题的云计算方法
彩色旅行推销员问题(CTSP)是对著名的多重旅行推销员问题的概括,它利用颜色来描述城市对每个推销员的可达性。目前已开发出许多集中式算法来解决 CTSP 实例。本研究首次提出了 CTSP 的分布式求解框架和方法。该框架由多个基于容器的计算节点组成,这些节点依靠特定的云基础设施,以流水线方式执行分布式优化。在该框架中,我们开发了一种基于 Delaunay 三角测量的分布式变量邻域搜索(DDVNS)算法,用于解决分解为多个旅行推销员问题的 CTSP 案例。DDVNS 利用两阶段初始化为所有 TSP 生成初始解。然后,采用基于 Delaunay 三角剖分的变量邻域搜索(DVNS)来寻找局部最优解。此外,还通过重新分配多色城市和迭代搜索进度来改进所获得的解,最终得到一组 CTSP 解。最后,大量实验表明,DDVNS 在搜索效率和解决方案质量方面都优于最先进的集中式 VNS 算法。值得注意的是,我们能在 15 分钟内获得 16 个销售员和 160,000 个城市的超大规模案例的最佳解决方案,打破了 CTSP 的最佳记录。
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