Flight, aircraft, and crew integrated recovery policies for airlines - A deep reinforcement learning approach

IF 6.3 2区 工程技术 Q1 ECONOMICS Transport Policy Pub Date : 2024-11-17 DOI:10.1016/j.tranpol.2024.11.011
Qi Wang , Jianing Mao , Xin Wen , Stein W. Wallace , Muhammet Deveci
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Abstract

Airline schedules are easily affected by disruptions, leading to flight delays or (and) cancellations, causing significant financial losses to airline companies and inconvenience for passengers. When making recovery decisions, airlines need to simultaneously consider various entities, including flights, aircraft, and crew. This paper examines the integrated recovery policies for airlines to help re-schedule flights, re-route aircraft, and reassign crew members. To realize quick responses upon the occurrence of disruptions, an attention-based end-to-end deep reinforcement learning approach is proposed to learn a parameterized stochastic policy for the integrated airline recovery problem. Numerical experiments based on randomly generated disruption instances demonstrate that the proposed method outperforms the existing approaches and is applicable in realistic situations. The key insights obtained from our analyses are summarized as follows: (1) traditionally, among all disruption sources, it is most challenging and time-consuming to determine the recovery policies in reaction to aircraft delays and airport closures. However, the new approach developed in this study overcomes this difficulty and can provide high-quality recovery policies for aircraft delays and airport closures quickly. Thus, our work is especially valuable for airports and regions that suffer from frequent flight delays and closures, and can significantly improve their operational efficiency and service quality; (2) when traditional approaches are applied, the adoption of the well-known schedule robustness enhancement strategy ‘crew follow aircraft’ generally leads to high operations costs. Differently, our proposed approach can apply this strategy without encountering a significant cost growth. Therefore, airlines can fully leverage this strategy to gain additional advantages; (3) our developed new approach demonstrates high generality to accommodate various disruptions, which can benefit airlines and airports in the highly-volatile environment with various unpredictable events.
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航空公司的航班、飞机和机组人员综合恢复政策--一种深度强化学习方法
航班时刻很容易受到干扰的影响,导致航班延误或(和)取消,给航空公司造成重大经济损失,给乘客带来不便。在做出恢复决策时,航空公司需要同时考虑航班、飞机和机组人员等多个实体。本文探讨了航空公司的综合恢复政策,以帮助航空公司重新安排航班、调整飞机航线和重新分配机组人员。为了在中断发生时实现快速响应,本文提出了一种基于注意力的端到端深度强化学习方法,用于学习综合航空公司恢复问题的参数化随机策略。基于随机生成的中断实例的数值实验表明,所提出的方法优于现有方法,并且适用于现实情况。从我们的分析中获得的主要启示总结如下:(1) 传统上,在所有干扰源中,确定应对飞机延误和机场关闭的恢复策略最具挑战性,也最耗时。然而,本研究开发的新方法克服了这一困难,能够快速提供高质量的飞机延误和机场关闭恢复策略。因此,我们的工作对航班延误和关闭频繁的机场和地区尤其有价值,可以显著提高其运营效率和服务质量;(2)在应用传统方法时,采用众所周知的 "机组跟随飞机 "的航班稳健性增强策略通常会导致高昂的运营成本。与此不同的是,我们提出的方法在应用这一策略时不会出现成本大幅增长的情况。因此,航空公司可以充分利用这一策略来获得额外的优势;(3)我们开发的新方法具有很强的通用性,可以适应各种干扰,这有利于航空公司和机场在高度不稳定的环境中应对各种不可预测的事件。
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来源期刊
Transport Policy
Transport Policy Multiple-
CiteScore
12.10
自引率
10.30%
发文量
282
期刊介绍: Transport Policy is an international journal aimed at bridging the gap between theory and practice in transport. Its subject areas reflect the concerns of policymakers in government, industry, voluntary organisations and the public at large, providing independent, original and rigorous analysis to understand how policy decisions have been taken, monitor their effects, and suggest how they may be improved. The journal treats the transport sector comprehensively, and in the context of other sectors including energy, housing, industry and planning. All modes are covered: land, sea and air; road and rail; public and private; motorised and non-motorised; passenger and freight.
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