Neural Networks for Vehicle Routing Problem

László Kovács, Ali Jlidi
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Abstract

The Vehicle Routing Problem is about optimizing the routes of vehicles to meet the needs of customers at specific locations. The route graph consists of depots on several levels and customer positions. Several optimization methods have been developed over the years, most of which are based on some type of classic heuristic: genetic algorithm, simulated annealing, tabu search, ant colony optimization, firefly algorithm. Recent developments in machine learning provide a new toolset, the rich family of neural networks, for tackling complex problems. The main area of application of neural networks is the area of classification and regression. Route optimization can be viewed as a new challenge for neural networks. The article first presents an analysis of the applicability of neural network tools, then a novel graphical neural network model is presented in detail. The efficiency analysis based on test experiments shows the applicability of the proposed NN architecture.
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用于车辆路由问题的神经网络
车辆路线问题是关于优化车辆路线以满足特定地点客户需求的问题。路线图由多个层次的配送点和客户位置组成。多年来,人们开发了多种优化方法,其中大多数都基于某种经典的启发式算法:遗传算法、模拟退火、塔布搜索、蚁群优化、萤火虫算法。机器学习的最新发展为解决复杂问题提供了一个新的工具集,即丰富的神经网络家族。神经网络的主要应用领域是分类和回归。路线优化可视为神经网络面临的新挑战。文章首先分析了神经网络工具的适用性,然后详细介绍了一种新型图形神经网络模型。基于测试实验的效率分析表明了所提出的神经网络架构的适用性。
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