Journal article

Transferable supervised learning model for public transport service load estimation

Tianwei Yin, Neema Nassir, Joseph Leong, Egemen Tanin, Majid Sarvi

Transportation | Springer Science and Business Media LLC | Published : 2023

Abstract

Detailed knowledge of service utilisation and passenger load profiles is the basis for the design, operation, and adjustment of a public transport service. The advancement in sensing technologies enable transit operators to monitor the variabilities in passenger flows continuously and consistently. There is a growing body of literature on using supervised learning models with direct passenger counts from historical observations. However, the incomplete, inaccurate, and biased data from automatic sensors pose challenges in this process. This paper proposes novel supervised learning models to estimate the onboard load profile of public transport services based on two main data sources: (1) lim..

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Grants

Funding Acknowledgements

This research is financially supported by the Victoria Department of Transport and Planning (DTP), Cubic Transportation Systems, and iMOVE Australia. The authors would like to express their gratitude to DTP, iMOVE, Cubic, and Yarra Trams for providing the AFC, AVL, APC data, as well as their insights and consultations.Open Access funding enabled and organized by CAUL and its Member Institutions.