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Dynamic aircraft recovery problem - An operational decision support framework

机译:动态飞机回收问题-业务决策支持框架

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This paper presents a new approach for solving the recovery of the airline schedule when disruptions have occurred. The goal is to develop an operational tool that provides the airline with a solution in less than one minute. The proposed recovery model uses a heuristic that iteratively solves selections of the airline's fleet in order to quickly converge to a good solution. An initial solution is always presented in seconds, after which potential reductions of disruption cost are investigated. The schedule is modeled as a set of parallel time-space networks, using an integer linear programming. The model is solved dynamically; a recovery solution is found whenever a disruption occurs and subsequent disruptions are solved based on the previously found solution. Aircraft maintenance schedules and passenger itineraries are modeled, while crew concerns are indirectly taken into consideration to avoid major disruptions caused by the recovery solution. The approach presented in this paper can be applied on heterogeneous fleets and to both point-to-point and (multi) hub-and-spoke airlines. The performance of the selection heuristic is discussed using a case study on the network of an airline operating in the United States. This case study shows that the selection heuristic can find a globally optimal solution in 90% of the disruption instances tested, within 22 s on average. This corresponds to 4% of the time needed to compute the optimal solution using the entire fleet. (C) 2020 Elsevier Ltd. All rights reserved.
机译:本文提出了一种新的方法来解决发生故障时恢复航空公司时刻表的问题。目标是开发一种可在不到一分钟的时间内为航空公司提供解决方案的操作工具。提议的恢复模型使用启发式方法来迭代地解决航空公司机队的选择问题,以便快速收敛到一个好的解决方案。最初的解决方案总是以秒为单位,然后研究降低中断成本的可能性。使用整数线性规划将时间表建模为一组并行时空网络。该模型是动态求解的;只要发生中断,就会找到恢复解决方案,并根据先前找到的解决方案解决后续的中断。对飞机的维修时间表和旅客行程进行了建模,同时间接考虑了机组人员的顾虑,以避免由恢复解决方案造成的重大破坏。本文介绍的方法可以应用于异构机队,也可以应用于点对点和(多)轮辐型航空公司。使用在美国运营的航空公司网络上的案例研究来讨论选择启发式算法的性能。此案例研究表明,选择启发式方法可以在90%的测试中断实例(平均22 s内)内找到全局最佳解决方案。这相当于使用整个车队计算最佳解决方案所需时间的4%。 (C)2020 Elsevier Ltd.保留所有权利。

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