London Heathrow Airport Uses Real-Time Analytics for Improving Operations

Xiaojia Guo, Y. Grushka-Cockayne, B. D. Reyck
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引用次数: 5

Abstract

Improving airport collaborative decision making is at the heart of airport operations centers (APOCs) recently established in several major European airports. In this paper, we describe a project commissioned by Eurocontrol, the organization in charge of the safety and seamless flow of European air traffic. The project’s goal was to examine the opportunities offered by the colocation and real-time data sharing in the APOC at London’s Heathrow airport, arguably the most advanced of its type in Europe. We developed and implemented a pilot study of a real-time data-sharing and collaborative decision-making process, selected to improve the efficiency of Heathrow’s operations. In this paper, we describe the process of how we chose the subject of the pilot, namely the improvement of transfer-passenger flows through the airport, and how we helped Heathrow move from its existing legacy system for managing passenger flows to an advanced machine learning–based approach using real-time inputs. The system, which is now in operation at Heathrow, can predict which passengers are likely to miss their connecting flights, reducing the likelihood that departures will incur delays while waiting for delayed passengers. This can be done by off-loading passengers in advance, by expediting passengers through the airport, or by modifying the departure times of aircraft in advance. By aggregating estimated passenger arrival time at various points throughout the airport, the system also improves passenger experiences at the immigration and security desks by enabling modifications to staffing levels in advance of expected surges in arrivals. The nine-stage framework we present here can support the development and implementation of other real-time, data-driven systems. To the best of our knowledge, the proposed system is the first to use machine learning to model passenger flows in an airport.
伦敦希思罗机场使用实时分析技术改善运营
改善机场协同决策是最近在欧洲几个主要机场建立的机场运营中心(apos)的核心。在本文中,我们描述了一个由欧洲控制组织委托的项目,该组织负责欧洲空中交通的安全和无缝流动。该项目的目标是研究伦敦希思罗机场APOC的托管和实时数据共享所提供的机会,该机场可以说是欧洲最先进的APOC。我们开发并实施了一项实时数据共享和协作决策过程的试点研究,旨在提高希思罗机场的运营效率。在本文中,我们描述了我们如何选择试点主题的过程,即改善通过机场的中转客流,以及我们如何帮助希思罗机场从现有的管理客流的遗留系统转变为使用实时输入的先进的基于机器学习的方法。该系统目前已在希思罗机场投入使用,它可以预测哪些乘客可能错过转机,从而减少在等待延误乘客时导致起飞延误的可能性。这可以通过提前让乘客下机、加速乘客通过机场或提前修改飞机起飞时间来实现。该系统将机场各地点的预计旅客到达时间汇总在一起,从而改善入境事务处和保安处的旅客体验,使旅客能够在预计到达人数激增之前调整人员编制。我们在这里提出的九阶段框架可以支持其他实时数据驱动系统的开发和实施。据我们所知,该系统是第一个使用机器学习来模拟机场客流的系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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