4.7 Article

Multi-Commodity Traffic Signal Control and Routing With Connected Vehicles

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2020.3041436

Keywords

Routing; Real-time systems; Connected vehicles; Computational modeling; Mathematical model; Roads; Turning; Traffic signal control; multi-commodity routing; connected vehicles; store-and-forward model; rolling horizon

Funding

  1. U.S. Department of Energy Vehicle Technologies Office under the Systems and Modeling for Accelerated Research in Transportation Mobility Laboratory Consortium, an initiative of the Energy Efficient Mobility Systems Program
  2. Brazilian Agency for Higher Education (CAPES), under Project PrInt CAPES-UFSC Automation 4.0
  3. National Council for Scientific and Technological Development (CNPq)

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This study develops a real-time traffic management policy that integrates traffic signal control and multi-commodity routing of connected vehicles in networks with multiple destinations. By exchanging information, vehicles are able to optimize signal timings and specific routing information to improve traffic efficiency throughout the network.
A real-time traffic management policy that integrates traffic signal control and multi-commodity routing of connected vehicles in networks with multiple destinations is developed. The proposed policy is based on a multi-commodity formulation of the store-and-forward model and assumes all vehicles are able to exchange information with the infrastructure. Vehicles share information about their current location and final destination. Based on this information, the strategy determines both optimized signal timings at every intersection and vehicle-specific routing information at every link of the network. The control actions, i.e., signal times and routing information, are updated at every cycle and delivered by a finite horizon optimal control problem cast into a rolling horizon framework. The underlying optimization problem is convex, and thus the method is suitable for real-time operation in large networks. The method is validated via a micro-simulation study in networks with up to twenty intersections and, in all simulations, outperforms a real-time traffic-responsive signal control strategy that is based on a single-commodity store-and-forward model. The scalable computation effort for increasing network sizes and prediction horizon confirms the computational efficiency of the method.

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