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A new bilevel formulation for the vehicle routing problem and a solution method using a genetic algorithm

机译:一种用于车辆路径问题的新双层公式以及使用遗传算法的求解方法

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摘要

The Vehicle Routing Problem (VRP) is one of the most well studied problems in operations research, both in real life problems and for scientific research purposes. During the last 50 years a number of different formulations have been proposed, together with an even greater number of algorithms for the solution of the problem. In this paper, the VRP is formulated as a problem of two decision levels. In the first level, the decision maker assigns customers to the vehicles checking the feasibility of the constructed routes (vehicle capacity constraints) and without taking into account the sequence by which the vehicles will visit the customers. In the second level, the decision maker finds the optimal routes of these assignments. The decision maker of the first level, once the cost of each routing has been calculated in the second level, estimates which assignment is the better one to choose. Based on this formulation, a bilevel genetic algorithm is proposed. In the first level of the proposed algorithm, a genetic algorithm is used for calculating the population of the most promising assignments of customers to vehicles. In the second level of the proposed algorithm, a Traveling Salesman Problem (TSP) is solved, independently for each member of the population and for each assignment to vehicles. The algorithm was tested on two sets of benchmark instances and gave very satisfactory results. In both sets of instances the average quality is less than 1%. More specifically in the set with the 14 classic instances proposed by Christofides, the quality is 0.479% and in the second set with the 20 large scale vehicle routing problems, the quality is 0.826%. The algorithm is ranked in the tenth place among the 36 most known and effectivernalgorithms in the literature for the first set of instances and in the sixth place among the 16 algorithms for the second set of instances. The computational time of the algorithm is decreased significantly compared to other heuristic and metaheuristic algorithms due to the fact that the Expanding Neighborhood Search Strategy is used.
机译:车辆路径问题(VRP)是运筹学中研究最深入的问题之一,无论是在现实生活中还是在科学研究目的中。在过去的50年中,已经提出了许多不同的公式,以及用于解决该问题的更多算法。在本文中,VRP被表述为两个决策级别的问题。在第一层中,决策者将客户分配给车辆,以检查所构建路线的可行性(车辆通行限制),而不考虑车辆拜访客户的顺序。在第二级,决策者找到这些分配的最佳路线。第一级的决策者在第二级计算出每个路由的成本后,便会估算哪个分配是更好的选择。在此基础上,提出了一种双层遗传算法。在提出的算法的第一级中,遗传算法用于计算最有希望的客户分配给车辆的数量。在提出的算法的第二级中,针对人口中的每个成员以及车辆的每个分配,独立地解决了旅行商问题(TSP)。该算法在两组基准实例上进行了测试,并给出了非常令人满意的结果。在这两种情况下,平均质量均低于1%。更具体地说,在Christofides提出的14个经典实例的集合中,质量为0.479%,而在第二个集合中的20个大规模车辆路径问题中,质量为0.826%。对于第一组实例,该算法在文献中36种最有效的算法中排名第十,对于第二组实例在16种算法中排名第六。由于使用了扩展邻域搜索策略,与其他启发式和元启发式算法相比,该算法的计算时间大大减少。

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