2020
DOI: 10.1177/0361198119900138
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Learning and Adaptation in Dynamic Transit Assignment Models for Congested Networks

Abstract: The distribution of passenger demand over the transit network is forecasted using transit assignment models which conventionally assume that passenger loads satisfy network equilibrium conditions. The approach taken in this study is to model transit path choice as a within-day dynamic process influenced by network state variation and real-time information. The iterative network loading process leading to steady-state conditions is performed by means of day-to-day learning implemented in an agent-based simulati… Show more

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Cited by 11 publications
(4 citation statements)
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“…In this model, passenger route choices and vehicle travel times are stochastic. The passenger assignment model includes within-day and day-to-day dynamics (Cats and West 2020). A random utility model determines the passenger's path choice decisions.…”
Section: Simulationmentioning
confidence: 99%
“…In this model, passenger route choices and vehicle travel times are stochastic. The passenger assignment model includes within-day and day-to-day dynamics (Cats and West 2020). A random utility model determines the passenger's path choice decisions.…”
Section: Simulationmentioning
confidence: 99%
“…Fourthly, the reliability-based transit assignment model is adopted as the lower level model. It would be interesting to examine the effect of using a different assignment model such as a schedule-based model (Tong and Wong 1999, Nuzzolo et al 2001, 2012, Poon et al 2004, Wilson and Nuzzolo 2013, Gentile et al 2016, Cats and West 2020, Xie et al 2021 or a personalised assignment model (Ceder andJiang 2019, 2020;Jiang and Ceder, 2021). More importantly, when a schedule-based transit assignment model is adopted.…”
Section: Sioux Falls Networkmentioning
confidence: 99%
“…The path may consist of multiple line segments, transfer connections between lines within stops and/or walking links between stops. The approach in the BusMezzo model is to define path i as a set of all the alternatives that imply the same chain of stops with equivalent link attributes (Cats, West, and Eliasson 2016;Cats and West 2020). Additionally, we relax the default dominancy and filtering rules, in order to increase the choice set size and include additional paths that might only become attractive with access to RTCI.…”
Section: Pt Agent-based Simulation Model Platformmentioning
confidence: 99%