Using smart card data to model public transport user profiles in light of the COVID-19 pandemic

Primer Autor
Choudhury, Charisma
Co-autores
Lizana, Maximiliano
Watling, David
Título
Using smart card data to model public transport user profiles in light of the COVID-19 pandemic
Editorial
ELSEVIER
Revista
TRAVEL BEHAVIOUR AND SOCIETY
Lenguaje
en
Resumen
The COVID-19 pandemic caused an unprecedented impact on public transport demand. Even though several studies have investigated the change in the use of public transport during the pandemic, most existing studies where large passive datasets have been considered focus on the drop in ridership at the aggregate level. To address this gap, this research aims to identify and model profiles of passengers considering their public transport recovery after the long-term lockdown in Santiago, Chile, during the early stage of the pandemic. The methodology proposed a three-stage approach associated with the analysis of smart card records. First, cardholder residential areas were identified to enrich the available data by integrating demographic information from the census. Then, a clustering analysis was applied to recognise distinctive classes of users based on their public transport usage change between the pre-pandemic and the post-lockdown phase. Finally, two different models were implemented to uncover the relationships between class membership and travellers' characteristics (i.e. travel history and demographic characteristics of their residential area). Results revealed a heterogeneous recovery of public transport usage among passengers, summarising them into two recognisable classes: those who mainly returned to their pre-pandemic patterns and those who adapted their mobility profiles. A statistically significant association of travel history with the mobility adaptation profile was found, as well as with aggregate socio-demographic attributes. These insights about the extent of heterogeneity and its drivers can help in the formulation of specific policies associated with public transport supply in the post-pandemic era.
Fecha Publicación
2023
Tipo de Recurso
artículo original
doi
10.1016/j.tbs.2023.100620
Formato Recurso
PDF
Palabras Claves
Public transport
COVID-19
Smart card data
Travel behaviour
Clustering
Machine learning
Ubicación del archivo
Categoría OCDE
Transporte
Materias
Transporte público
COVID-19
Datos de tarjetas inteligentes
Comportamiento de viaje
Agrupación
Aprendizaje automático
Identificador del recurso (Mandatado-único)
artículo original
Versión del recurso (Recomendado-único)
versión publicada
License
CC BY 4.0
Condición de la licencia (Recomendado-repetible)
CC BY 4.0
Derechos de acceso
acceso abierto
Access Rights
acceso abierto
Id de Web of Science
WOS:001036885000001
ISSN
2214-367X
Tipo de ruta
Verde# hibrido
Categoría WOS
Transporte
Referencia del Financiador (Mandatado si es aplicable-repetible)
DTPM
ANID
UKRI MRT020423/1
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