Adaptive inference for dynamic passenger route usage patterns in a metro network considering time-varying and heavy-tailed travel times
Document Type
Journal Article
Publication Date
2025
Subject Area
place - asia, place - urban, mode - subway/metro, ridership - demand, technology - passenger information
Keywords
Metro, passenger travel patterns
Abstract
Due to the dynamic changes in timetables, passenger demand, and passenger composition, the distribution of passengers within a metro system becomes quite complex. Many studies divide a day into intervals to account for the dynamics of travel time. However, the intervals used in these studies are insufficient to capture the gradual and fine-grained changes in passenger travel patterns. This study proposes an adaptive dynamic route inference model (ADRIM) that overcomes these limitations. In the ADRIM, we introduce a constrained Expectation Maximization algorithm (CEM) by confining the parameters of the mixture log-normal distribution model (MLND) within confidence intervals, thereby reducing anomalous estimations. We use the concept of Hidden Markov Models (HMMs) to achieve a parameter-adaptive characterization for the dynamics of route choice and travel time distributions for MLND through an iterative process. For a Nanjing metro case study, the proposed model exhibits superior performance in fitting the actual distribution of travel times and accurately captures the dynamic trends in route travel times. Besides, it is revealed that the maximum difference in expected travel times among multiple valid routes for the same origin–destination (OD) pair primarily falls within the interval [5 min, 15 min], and the distribution range of the maximum ratio is mainly between [1.1, 1.6]. The high consistency in passenger route choice proportions observed for two consecutive weeks, along with an analysis of route choice patterns under dynamic conditions, serves as strong evidence supporting the reliability and practical utility of the dynamic route inference model in understanding and managing metro passenger flows.
Rights
Permission to publish the abstract has been given by Elsevier, copyright remains with them.
Recommended Citation
Shi, Z., Shen, W., Schonfeld, P., Liu, Y., & Zhang, N. (2025). Adaptive inference for dynamic passenger route usage patterns in a metro network considering time-varying and heavy-tailed travel times. Transportation Research Part C: Emerging Technologies, 171, 105007.

Comments
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http://www.sciencedirect.com/science/journal/0968090X