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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Delaunay-Triangulation-Based Variable Neighborhood Search to Solve Large-Scale General Colored Traveling Salesman Problems
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Delaunay-Triangulation-Based Variable Neighborhood Search to Solve Large-Scale General Colored Traveling Salesman Problems

机译:基于Delaunay-三角测量的可变邻域搜索,以解决大规模的一般彩色旅行推销员问题

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A colored traveling salesman problem (CTSP) is a generalization of the well-known multiple traveling salesman problem. It utilizes colors to differentiate the accessibility of its cities to its salesmen. In our prior work, CTSPs are formulated over graphs associated with a city-color matrix. This work redefines a general colored traveling salesman problem (GCTSP) in the framework of hypergraphs and reveals several important properties of GCTSP. In GCTSP, the setting of city colors is richer than that in CTSPs. As results, it can be used to model and address various complex scheduling problems. Then, a Delaunay-triangulation-based Variable Neighborhood Search (DVNS) algorithm is developed to solve large-scale GCTSPs. At the beginning stage of DVNS, a divide and conquer algorithm is exploited to prepare a Delaunay candidate set for lean insertion. Next, the incumbent solution is perturbed by utilizing greedy multi-insertion and exchange mutation to obtain a variety of neighborhoods. Subsequently, 2-opt and 3-opt are used for local search in turn. Extensive experiments are conducted for many large scale GCTSP cases among which two maximal ones are up to 33000+ cities for 4 salesmen and 240 salesmen given 11000+ cities, respectively. The results show that the proposed method outperforms the existing four genetic algorithms and two VNS methods in terms of search ability and convergence rate.
机译:彩色的旅行推销员问题(CTSP)是众所周知的多次旅行推销员问题的概括。它利用颜色来区分其城市的可达性到其推销员。在我们之前的工作中,CTSP在与城市彩色矩阵相关的图表上配制。这项工作在超图框架中重新定义了一般着色的推销员问题(GCTSP),并揭示了GCTSP的几个重要属性。在GCTSP中,城市颜色的设置比CTSPS更丰富。结果,它可以用于模拟和解决各种复杂调度问题。然后,开发了一种基于DELAUNAY-三角测量的可变邻域搜索(DVN)算法以解决大规模的GCTSPS。在DVN的开始阶段,利用分割和征服算法以准备用于瘦插入的Delaunay候选集。接下来,通过利用贪婪的多插入和交换突变来获得各种邻域,现有的解决方案是扰动的。随后,2-opt和3-opt依次用于本地搜索。对于许多大规模的GCTSP案例进行了广泛的实验,其中两个最大数量高达33000多个城市,分别为11000多个城市提供了4个销售人员和240名销售人员。结果表明,该方法在搜索能力和收敛速率方面优于现有的四种遗传算法和两个VNS方法。

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