不确定需求下的鲁棒战术乘员调度

Christian Rählmann, Felix Wagener, U. W. Thonemann
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引用次数: 1

摘要

我们分析了一个战术货运铁路班组调度问题,当火车司机必须在操作前几周被告知他们的职责的开始和结束时间和地点。在通知火车司机和开始运营之间,由于取消、新的预订和火车改道,旅行需求会发生变化,这可能导致火车司机在一个地点的能力和需求之间的不匹配。我们分析了一种将不确定的旅行需求作为场景的方法,这样,机组人员时间表的开始和结束时间和位置对于旅行需求的偏差是可恢复的。我们开发了一种列生成解决方法,该方法动态地聚合到任务的行程,并将子问题分解为更小的,计算上可处理的实例。我们的模型确定了覆盖许多场景的任务框架,创建了可恢复的健壮的机组时间表。我们在欧洲主要货运铁路运营商的三个真实数据集上测试了我们的模型。我们的结果表明,我们的时间表比名义解决方案具有更强的可恢复鲁棒性,导致列车驾驶员能力和需求之间的不匹配较小。
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Robust Tactical Crew Scheduling Under Uncertain Demand
We analyze a tactical freight railway crew scheduling problem, when train drivers must be informed several weeks before operations about the start and end times and locations of their duties. Between informing the train drivers and start of operations, trip demand changes due to cancellations, new bookings, and reroutings of trains, which might result in mismatches between train driver capacity at a location and demand. We analyze an approach that incorporates uncertain trip demand as scenarios, such that the start and end times and locations of the duties of a crew schedule are recoverable robust against deviations in trip demand. We develop a column generation solution method that dynamically aggregates trips to duties and decomposes the subproblems into smaller, computationally tractable instances. Our model determines duty frames that cover duties in many scenarios, creating recoverable robust crew schedules. We test our model on three real data sets of a major European freight railway operator. Our results show that our schedules are considerably more recoverable robust than those of the nominal solution, resulting in smaller mismatches between train driver capacity and demand.
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