Forecasting Airport Transfer Passenger Flow Using Real-Time Data and Machine Learning

Xiaojia Guo, Y. Grushka-Cockayne, B. D. Reyck
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引用次数: 20

Abstract

Problem definition: Airports and airlines have been challenged to improve decision making by producing accurate forecasts in real time. We develop a two-phased predictive system that produces forecasts of transfer passenger flows at an airport. In the first phase, the system predicts the distribution of individual transfer passengers’ connection times. In the second phase, the system samples from the distribution of individual connection times and produces distributional forecasts for the number of passengers arriving at the immigration and security areas. Academic/practical relevance: To our knowledge, this work is the first to apply machine learning for predicting real-time distributional forecasts of journeys in an airport using passenger level data. Better forecasts of these journeys can help optimize passenger experience and improve airport resource deployment. Methodology: The predictive system developed is based on a regression tree combined with copula-based simulations. We generalize the tree method to predict distributions, moving beyond point forecasts. We also formulate a newsvendor-based resourcing problem to evaluate decisions made by applying the new predictive system. Results: We show that, when compared with benchmarks, our two-phased approach is more accurate in predicting both connection times and passenger flows. Our approach also has the potential to reduce resourcing costs at the immigration and transfer security areas. Managerial implications: Our predictive system can produce accurate forecasts frequently and in real time. With these forecasts, an airport’s operating team can make data-driven decisions, identify late passengers, and assist them to make their connections. The airport can also update its resourcing plans based on the prediction of passenger flows. Our predictive system can be generalized to other operations management domains, such as hospitals or theme parks, in which customer flows need to be accurately predicted.
利用实时数据和机器学习预测机场中转客流
问题定义:机场和航空公司面临着通过实时做出准确预测来改进决策的挑战。我们开发了一个两阶段的预测系统,可以对机场的中转客流进行预测。在第一阶段,系统预测个体换乘乘客的换乘时间分布。在第二阶段,系统从个别接驳时间的分布中抽取样本,并对到达入境及保安区域的旅客人数作出分布预测。学术/实践相关性:据我们所知,这项工作是第一次将机器学习应用于利用乘客水平数据预测机场旅行的实时分布预测。对这些行程作出更准确的预测,有助优化乘客体验及改善机场资源调配。方法:开发的预测系统是基于回归树结合基于copula的模拟。我们推广树的方法来预测分布,超越点预测。我们还制定了一个基于新闻供应商的资源问题来评估应用新的预测系统所做出的决策。结果:我们表明,与基准相比,我们的两阶段方法在预测连接时间和客流量方面更加准确。我们的方法也有可能减少移民和转移安全领域的资源成本。管理意义:我们的预测系统可以经常和实时地产生准确的预测。有了这些预测,机场的运营团队可以做出数据驱动的决策,识别迟到的乘客,并帮助他们转机。机场还可以根据客流预测更新其资源计划。我们的预测系统可以推广到其他运营管理领域,如医院或主题公园,在这些领域需要准确预测客流。
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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