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首页> 外文期刊>OASIcs : OpenAccess Series in Informatics >A Rolling Horizon Heuristic with Optimality Guarantee for an On-Demand Vehicle Scheduling Problem
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A Rolling Horizon Heuristic with Optimality Guarantee for an On-Demand Vehicle Scheduling Problem

机译:一种滚动的地平线启发式,具有可靠的车辆调度问题的最优保障

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We consider a basic vehicle scheduling problem that arises in the context of travel demand models: Given demanded vehicle trips, what is the minimal number of vehicles needed to fulfill the demand? In this paper, we model the vehicle scheduling problem as a network flow problem. Since instances arising in the context of travel demand models are often so big that the network flow model becomes intractable, we propose using a rolling horizon heuristic to split huge problem instances into smaller subproblems and solve them independently to optimality. By letting the horizons of the subproblems overlap, it is possible to look ahead to the demand of the next subproblem. We prove that composing the solutions of the subproblems yields an optimal solution to the whole problem if the overlap of the horizons is sufficiently large. Our experiments show that this approach is not only suitable for solving extremely large instances that are intractable as a whole, but it is also possible to decrease the solution time for large instances compared to a comprehensive approach.
机译:我们考虑在旅行需求模型的背景下出现的基本车辆调度问题:达到要求的车程,满足需求所需的车辆数量最少的速度是多少?在本文中,我们将车辆调度问题模拟为网络流问题。由于在旅行需求模型的背景下产生的实例通常如此大,即网络流模型变得棘手,我们建议使用滚动的地平线启发式将巨大的问题实例分成较小的子问题并独立解决它们以优化而解决它们。通过让子问题重叠的地平线重叠,可以展望下一个子问题的需求。我们证明,如果地平线重叠足够大,则构成子问题的解决方案会给整个问题产生最佳的解决方案。我们的实验表明,这种方法不仅适用于解决整体棘手的极大的实例,而且与综合方法相比,还可以降低大型实例的解决时间。

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