Xian Li
Beijing Jiaotong University
Haiying Li
Beijing Jiaotong University
Xinyue Xu
Beijing Jiaotong University
Departure time choice is critical for subway passengers to avoid congestion during morning peak hours. In this study, we propose a Bayesian network (BN) model to capture departure time choice based on data learning. Factors such as travel time saving, crowding, subway fare, and departure time change are considered in this model. K2 algorithm is then employed to learn the BN structure, and maximum likelihood estimation (MLE) is adopted to estimate model parameters, according to the data obtained by a stated preference (SP) survey. A real-world case study of Beijing subway is illustrated, which proves that the proposed model has higher prediction accuracy than typical discrete choice models. Another key finding indicates that subway fare discount higher than 20% will motivate some passengers to depart 15 to 20 minutes earlier and release the pressure of crowding during morning peak hours.
Xu X, Liu J, Li H, et al. Capacity-oriented passenger flow control under uncertain demand: Algorithm development and real-world case study. Transportation Research Part E: logistics and Transportation Review, 2016, 87:130-148.
Thorhauge M, Haustein S, Cherchi E. Accounting for the Theory of Planned Behaviour in departure time choice. Transportation Research Part F: Traffic Psychology and Behaviour, 2016, 38:94-105.
Habib, K. M. N., Day, N., & Miller, E. J. An investigation of commuting trip timing and mode choice in the greater Toronto area: application of a joint discrete-continuous model. Transportation Research Part A: Policy and Practice, 2009, 43(7), 639-653.
Hess S, Daly A, Rohr C, et al. On the development of time period and mode choice models for use in large scale modelling forecasting systems. Transportation Research Part A: Policy and Practice, 2007, 41(9): 802-826.
Bajwa S U, Bekhor S, Kuwahara M, et al. DISCRETE CHOICE MODELING OF COMBINED MODE AND DEPARTURE TIME. Trans
Guest Editor: Eleonora Papadimitriou, PhD
Editors: Marko Matulin, PhD, Dario Babić, PhD, Marko Ševrović, PhD
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