Author:
Folsom Larkin,Park Hyoshin,Pandey Venktesh
Abstract
This research focuses on reducing traffic congestion using the competing strategies between informed and uninformed drivers. Under a mixed information framework, a navigation app provides within-day route suggestions to informed drivers using predicted information about the time-varying route habits of uninformed drivers. The informed users detour from initially proposed routes to minimize network congestion after traffic disruptions, pushing the system toward optimal equilibrium, while uninformed drivers make day-to-day decisions which push the system toward user equilibrium. Simulations considering varying fractions of informed drivers show that congestion is reduced during abrupt phase transition before reaching equilibrium by approximately 59.2% when 20% of drivers are informed, and is nearly eliminated when 80% of drivers are informed, which could be achieved through connected vehicle technologies. Shared memory multi-core parallelization improved the computational efficiency.
Funder
National Science Foundation
North Carolina Department of Transportation
Jet Propulsion Laboratory
Subject
General Earth and Planetary Sciences,General Environmental Science
Cited by
1 articles.
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1. Advancing Temporal Multimodal Learning with Physics Informed Regularization;2023 57th Annual Conference on Information Sciences and Systems (CISS);2023-03-22