Forecasting airport transfer passenger flow using real-time data and machine learning

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 distributio...

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Main Authors: GUO, Xiaojia, GRUSHKA-COCKAYNE, Yael, REYCK, Bert De
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Language:English
Published: Institutional Knowledge at Singapore Management University 2022
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Online Access:https://ink.library.smu.edu.sg/lkcsb_research/7628
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spelling sg-smu-ink.lkcsb_research-86272024-12-12T09:00:03Z Forecasting airport transfer passenger flow using real-time data and machine learning GUO, Xiaojia GRUSHKA-COCKAYNE, Yael REYCK, Bert De 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. 2022-11-12T08:00:00Z text https://ink.library.smu.edu.sg/lkcsb_research/7628 info:doi/10.1287/msom.2021.0975 Research Collection Lee Kong Chian School Of Business eng Institutional Knowledge at Singapore Management University quantile forecasts regression tree copula passenger flow management data-driven operations Numerical Analysis and Scientific Computing Operations and Supply Chain Management Transportation
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic quantile forecasts
regression tree
copula
passenger flow management
data-driven operations
Numerical Analysis and Scientific Computing
Operations and Supply Chain Management
Transportation
spellingShingle quantile forecasts
regression tree
copula
passenger flow management
data-driven operations
Numerical Analysis and Scientific Computing
Operations and Supply Chain Management
Transportation
GUO, Xiaojia
GRUSHKA-COCKAYNE, Yael
REYCK, Bert De
Forecasting airport transfer passenger flow using real-time data and machine learning
description 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.
format text
author GUO, Xiaojia
GRUSHKA-COCKAYNE, Yael
REYCK, Bert De
author_facet GUO, Xiaojia
GRUSHKA-COCKAYNE, Yael
REYCK, Bert De
author_sort GUO, Xiaojia
title Forecasting airport transfer passenger flow using real-time data and machine learning
title_short Forecasting airport transfer passenger flow using real-time data and machine learning
title_full Forecasting airport transfer passenger flow using real-time data and machine learning
title_fullStr Forecasting airport transfer passenger flow using real-time data and machine learning
title_full_unstemmed Forecasting airport transfer passenger flow using real-time data and machine learning
title_sort forecasting airport transfer passenger flow using real-time data and machine learning
publisher Institutional Knowledge at Singapore Management University
publishDate 2022
url https://ink.library.smu.edu.sg/lkcsb_research/7628
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