Network science approach for identifying disruptive elements of an airline

Vinod Kumar Chauhan , Anna Ledwoch , Alexandra Brintrup , Manuel Herrera , Vaggelis Giannikas , Goran Stojkovic , Duncan Mcfarlane
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Abstract

Currently, flight delays are common and they propagate from an originating flight to connecting flights, leading to large disruptions in the overall schedule. These disruptions cause massive economic losses, affect airlines’ reputations, waste passengers’ time and money, and directly impact the environment. This study adopts a network science approach for solving the delay propagation problem by modeling and analyzing the flight schedules and historical operational data of an airline. We aim to determine the most disruptive airports, flights, flight-connections, and connection types in an airline network. Disruptive elements are influential or critical entities in an airline network. They are the elements that can either cause (airline schedules) or have caused (historical data) the largest disturbances in the network. An airline can improve its operations by avoiding delays caused by the most disruptive elements. The proposed network science approach for disruptive element analysis was validated using a case study of an operating airline. The analysis indicates that potential disruptive elements in a schedule of an airline are also actual disruptive elements in the historical data and they should be considered to improve operations. The airline network exhibits small-world effects and delays can propagate to any part of the network with a minimum of four delayed flights. Finally, we observed that passenger connections between flights are the most disruptive connection type. Therefore, the proposed methodology provides a tool for airlines to build robust flight schedules that reduce delays and propagation.

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识别航空公司干扰因素的网络科学方法
目前,航班延误很常见,它们从始发航班传播到中转航班,导致整个时间表大幅中断。这些干扰造成了巨大的经济损失,影响了航空公司的声誉,浪费了乘客的时间和金钱,并直接影响了环境。本研究采用网络科学方法,通过对航空公司的航班时刻表和历史运营数据进行建模和分析,来解决延误传播问题。我们的目标是确定航空公司网络中最具破坏性的机场、航班、航班连接和连接类型。破坏性元素是航空网络中有影响力或关键的实体。它们是可能导致(航空时刻表)或已导致(历史数据)网络中最大干扰的因素。航空公司可以通过避免最具破坏性的因素造成的延误来改善运营。通过对一家运营航空公司的案例研究,验证了所提出的用于破坏性元素分析的网络科学方法。分析表明,航空公司时间表中的潜在破坏性因素也是历史数据中的实际破坏性因素,应考虑这些因素来改善运营。航空公司网络表现出小世界效应,延误可以传播到网络的任何部分,至少有四个航班延误。最后,我们观察到,航班之间的乘客连接是最具破坏性的连接类型。因此,所提出的方法为航空公司提供了一种工具,可以建立稳健的航班时间表,减少延误和传播。
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