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Smart city article details

Title Traffic Signal Control: A Double Q-Learning Approach
ID_Doc 58670
Authors Agafonov A.; Myasnikov V.
Year 2021
Published Proceedings of the 16th Conference on Computer Science and Intelligence Systems, FedCSIS 2021
DOI http://dx.doi.org/10.15439/2021F109
Abstract Currently, the use of information and communication technologies for solving economic, social, transportation, and other problems in the urban environment is usually considered within the "smart city"concept. Optimal traffic management and, in particular, traffic signal control is one of the key components of smart cities. In this paper, we investigate the reinforcement learning approach, namely, the double Q-learning approach, to solve the traffic signal control problem. Both the initial data on the connected vehicles distribution and the aggregated characteristics of traffic flows are used to describe the state of the reinforcement learning agent. Experimental studies of the proposed model were carried out on synthetic and real data using the CityFlow microscopic traffic simulator. © 2021 Polish Information Processing Society.
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