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首页> 外文期刊>RAIRO operations research >A VARIABLE NEIGHBORHOOD SEARCH ALGORITHM WITH REINFORCEMENT LEARNING FOR A REAL-LIFE PERIODIC VEHICLE ROUTING PROBLEM WITH TIME WINDOWS AND OPEN ROUTES
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A VARIABLE NEIGHBORHOOD SEARCH ALGORITHM WITH REINFORCEMENT LEARNING FOR A REAL-LIFE PERIODIC VEHICLE ROUTING PROBLEM WITH TIME WINDOWS AND OPEN ROUTES

机译:具有增强学习的可变邻域搜索算法,具有时间窗口和开放路由的现实定期车辆路由问题

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摘要

This paper studies a real-life container transportation problem with a wide planning horizon divided into multiple shifts. The trucks in this problem do not return to depot after every single shift but at the end of every two shifts. The mathematical model of the problem is first established, but it is unrealistic to solve this large scale problem with exact search methods. Thus, a Variable Neighbourhood Search algorithm with Reinforcement Learning (VNS-RLS) is thus developed. An urgency level-based insertion heuristic is proposed to construct the initial solution. Reinforcement learning is then used to guide the search in the local search improvement phase. Our study shows that the Sampling scheme in single solution-based algorithms does not significantly improve the solution quality but can greatly reduce the rate of infeasible solutions explored during the search. Compared to the exact search and the state-of-the-art algorithms, the proposed VNS-RLS produces promising results.
机译:本文研究了一个现实的集装箱运输问题,具有广泛的规划地平线分为多班。 在这个问题中的卡车不会在每次班次后返回仓库,但在每两班班次结束时。 首先建立了问题的数学模型,但通过精确的搜索方法解决了这个大规模问题是不现实的。 因此,因此开发了具有增强学习(VNS-RLS)的可变邻域搜索算法。 提出了一种紧急级别的插入启发式来构建初始解决方案。 然后使用加强学习来指导本地搜索改进阶段的搜索。 我们的研究表明,单一解决方案的算法中的采样方案不会显着提高解决方案质量,但可以大大降低搜索期间探索的不可行解决的速度。 与确切的搜索和最先进的算法相比,所提出的VNS-RLS产生了有希望的结果。

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