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Modified Fuzzy C-Means Clustering Approach to Solve the Capacitated Vehicle Routing Problem

机译:改进的模糊C型聚类方法来解决电容车辆路径问题

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Fuzzy C-Means clustering is among the most successful clustering techniques available in the literature. The capacitated vehicle routing problem (CVRP) is one of the most studied NP-hard problems. CVRP has attracted the attention of many researchers due to its importance within the supply chain management field. This study aims to develop a fuzzy c-means clustering heuristic to efficiently solve the CVRP with large numbers of customers by using cluster-first route-second method (CFRS). CFRS is a two-phase technique, where in the first phase customers are grouped into, and in the second phase each cluster is solved independently as a traveling salesman problem (TSP). This work is concerned the clustering phase of the CFRS. The second phase of the CFRS method is solved using traditional optimization software. A modified demand weighted fuzzy c-means clustering algorithm is developed to solve the clustering phase. Twentyfive instances are solved to evaluate the efficiency of the proposed algorithm. Some of them are large instances with more than 500 customers. Promising results in terms of accuracy and processing time are obtained.
机译:模糊C-Means聚类是文献中可用的最成功的聚类技术之一。电容式车辆路由问题(CVRP)是最受研究的NP硬问题之一。由于其在供应链管理领域的重要性,CVRP引起了许多研究人员的注意。本研究旨在开发模糊C-MEARE集群启发式,通过使用集群 - 第一路线 - 第二种方法(CFRS)有效地用大量客户解决CVRP。 CFRS是一种两相技术,其中在第一阶段客户中被分组到,在第二阶段中,每个群集都独立解决,作为旅行推销员问题(TSP)。这项工作涉及CFR的聚类阶段。使用传统优化软件解决了CFRS方法的第二阶段。开发了修改的需求加权模糊C-Means聚类算法以解决聚类阶段。解决了TwenteFive实例以评估所提出的算法的效率。其中一些是拥有500多个客户的大型实例。获得准确性和处理时间的有希望的结果。

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