Travelers' Day-to-Day Route Choice Behavior with Real-Time Information in a Congested Risky Network
Nonrecurring disruptions to traffic systems caused by incidents or adverse conditions can result in uncertain travel times. Real-time information allows travelers to adapt to actual traffic conditions. In a behavior experiment, subjects completed 120 "days" of repeated route choices in a hypothetical, competitive network submitted to random capacity reductions. One scenario provided subjects with real-time information regarding a probable incident and the other did not. A reinforcement learning model with two scale factors, a discounting rate of previous experience and a constant term, is estimated by minimizing the deviation between predicted and observed daily flows. The estimation combines brute force enumeration and a subsequent stochastic approximation method. The prediction over 120 runs has a root mean square error of 1.05 per day per route and a bias of 0.14 per route.
Year of publication: |
2014
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Authors: | LU, XUAN ; GAO, SONG ; BEN-ELIA, ERAN ; POTHERING, RYAN |
Published in: |
Mathematical Population Studies. - Taylor & Francis Journals, ISSN 0889-8480. - Vol. 21.2014, 4, p. 205-219
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Publisher: |
Taylor & Francis Journals |
Saved in:
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