Forecasting airport transfer passenger flow using realtime data and machine learning
Problem definition: In collaboration with Heathrow airport, we develop a predictive system that generates quantile forecasts of transfer passengers’ connection times. Sampling from the distribution of individual passengers’ connection times, the system also produces quantile forecasts for the number...
Saved in:
Main Authors: | , , |
---|---|
Format: | text |
Language: | English |
Published: |
Institutional Knowledge at Singapore Management University
2023
|
Subjects: | |
Online Access: | https://ink.library.smu.edu.sg/lkcsb_research/6768 https://ink.library.smu.edu.sg/context/lkcsb_research/article/7736/viewcontent/19_040_89360426_c7a9_4aac_95e1_a3a3db276dc8.pdf |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Singapore Management University |
Language: | English |
id |
sg-smu-ink.lkcsb_research-7736 |
---|---|
record_format |
dspace |
spelling |
sg-smu-ink.lkcsb_research-77362023-05-29T04:51:15Z Forecasting airport transfer passenger flow using realtime data and machine learning GUO, Xiaojia GRUSHKA-COCKAYNE, Yael DE REYCK, Bert Problem definition: In collaboration with Heathrow airport, we develop a predictive system that generates quantile forecasts of transfer passengers’ connection times. Sampling from the distribution of individual passengers’ connection times, the system also produces quantile forecasts for the number of passengers arriving at the immigration and security areas. Academic/Practical relevance: Airports and airlines have been challenged to improve decision-making by producing accurate forecasts in real time. Our work is the first to apply machine learning for predicting real-time quantile forecasts in the airport. We focus on passengers’ connecting journeys, which have only been studied by few researchers. Better forecasts of these journeys can help optimize passenger experience and improve airport resource deployment. Methodology: The predictive model developed is based on a regression tree combined with copula-based simulations. We generalize the tree method to predict complete distributions, moving beyond point forecasts. To derive insights from the tree, we introduce the concept of a stable tree that can be summarized by its key variables’ splits. Results: We identify seven key factors that impact passengers’ connection times, dividing passengers into 16 passenger segments. We find that adding correlations among the connection times of passengers arriving on the same flight can improve the forecasts of arrivals at the immigration and security areas. When compared to several benchmarks, our model is shown to be more accurate in both point forecasting and quantile forecasting. Managerial implications: Our predictive system can produce accurate forecasts, frequently, and in realtime. With these forecasts, an airport’s operating team can make data-driven decisions, identify late connecting passengers and assist them to make their connections. The airport can also update its resourcing plans based on the prediction of passenger arrivals. Our approach can be generalized to other domains, such as rail or hospital passenger flow 2023-03-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/lkcsb_research/6768 info:doi/10.1287/msom.2021.0981 https://ink.library.smu.edu.sg/context/lkcsb_research/article/7736/viewcontent/19_040_89360426_c7a9_4aac_95e1_a3a3db276dc8.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ 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 Operations and Supply Chain Management Sales and Merchandising |
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 Operations and Supply Chain Management Sales and Merchandising |
spellingShingle |
quantile forecasts regression tree copula passenger flow management data-driven operations Operations and Supply Chain Management Sales and Merchandising GUO, Xiaojia GRUSHKA-COCKAYNE, Yael DE REYCK, Bert Forecasting airport transfer passenger flow using realtime data and machine learning |
description |
Problem definition: In collaboration with Heathrow airport, we develop a predictive system that generates quantile forecasts of transfer passengers’ connection times. Sampling from the distribution of individual passengers’ connection times, the system also produces quantile forecasts for the number of passengers arriving at the immigration and security areas. Academic/Practical relevance: Airports and airlines have been challenged to improve decision-making by producing accurate forecasts in real time. Our work is the first to apply machine learning for predicting real-time quantile forecasts in the airport. We focus on passengers’ connecting journeys, which have only been studied by few researchers. Better forecasts of these journeys can help optimize passenger experience and improve airport resource deployment. Methodology: The predictive model developed is based on a regression tree combined with copula-based simulations. We generalize the tree method to predict complete distributions, moving beyond point forecasts. To derive insights from the tree, we introduce the concept of a stable tree that can be summarized by its key variables’ splits. Results: We identify seven key factors that impact passengers’ connection times, dividing passengers into 16 passenger segments. We find that adding correlations among the connection times of passengers arriving on the same flight can improve the forecasts of arrivals at the immigration and security areas. When compared to several benchmarks, our model is shown to be more accurate in both point forecasting and quantile forecasting. Managerial implications: Our predictive system can produce accurate forecasts, frequently, and in realtime. With these forecasts, an airport’s operating team can make data-driven decisions, identify late connecting passengers and assist them to make their connections. The airport can also update its resourcing plans based on the prediction of passenger arrivals. Our approach can be generalized to other domains, such as rail or hospital passenger flow |
format |
text |
author |
GUO, Xiaojia GRUSHKA-COCKAYNE, Yael DE REYCK, Bert |
author_facet |
GUO, Xiaojia GRUSHKA-COCKAYNE, Yael DE REYCK, Bert |
author_sort |
GUO, Xiaojia |
title |
Forecasting airport transfer passenger flow using realtime data and machine learning |
title_short |
Forecasting airport transfer passenger flow using realtime data and machine learning |
title_full |
Forecasting airport transfer passenger flow using realtime data and machine learning |
title_fullStr |
Forecasting airport transfer passenger flow using realtime data and machine learning |
title_full_unstemmed |
Forecasting airport transfer passenger flow using realtime data and machine learning |
title_sort |
forecasting airport transfer passenger flow using realtime data and machine learning |
publisher |
Institutional Knowledge at Singapore Management University |
publishDate |
2023 |
url |
https://ink.library.smu.edu.sg/lkcsb_research/6768 https://ink.library.smu.edu.sg/context/lkcsb_research/article/7736/viewcontent/19_040_89360426_c7a9_4aac_95e1_a3a3db276dc8.pdf |
_version_ |
1770576533826568192 |