An Ant Colony Algorithm Assisted by Graph Neural Networks for Solving Vehicle Routing Problems

Xiangyu Wang, Yaochu Jin
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Abstract

Vehicle routing problems have attracted increasing attention because of the rapid development of transportation. Companies want to reduce the cost by lowering the number of vehicles and the total distances, which can be considered as a combinatorial optimization problem. The ant colony algorithm shows great potential in solving vehicle routing problems. However, it suffers from a low convergence speed due to the randomly initialized pheromone, which may cause a waste of computational resources in the early search process. To address this problem, a graph neural network is pre-trained to provide prior knowledge to initialize the pheromone in the ant colony algorithm, which can boost the convergence process. In addition, some classic local research methods are applied to balance the exploration and exploitation of the evolutionary process.
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图神经网络辅助蚁群算法求解车辆路径问题
随着交通运输的快速发展,车辆路径问题越来越受到人们的关注。公司希望通过减少车辆数量和总距离来降低成本,这可以看作是一个组合优化问题。蚁群算法在求解车辆路径问题方面显示出巨大的潜力。但由于信息素是随机初始化的,收敛速度较慢,在早期的搜索过程中可能会造成计算资源的浪费。为了解决这一问题,对图神经网络进行预训练,为蚁群算法中的信息素初始化提供先验知识,从而加快收敛过程。此外,还运用了一些经典的本地研究方法来平衡对进化过程的探索和开发。
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