Minimize Traffic Congestion with Emergency Facilitation using Deep Reinforcement Learning

In intelligent traffic light control, matrices derived from real-time traffic data are paramount for efficiency and performance. The rewards and state representations in previous studies could mislead a Reinforcement Learning agent in some cases. This paper examines the effectiveness of considering...

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Bibliographic Details
Published in2021 21st International Conference on Advances in ICT for Emerging Regions (ICter) pp. 55 - 62
Main Authors Kodagoda, Dulmina, Perera, Dushani, Seneviratne, Gihan, Kumarasinghe, Prabhash
Format Conference Proceeding
LanguageEnglish
Published IEEE 02.12.2021
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Summary:In intelligent traffic light control, matrices derived from real-time traffic data are paramount for efficiency and performance. The rewards and state representations in previous studies could mislead a Reinforcement Learning agent in some cases. This paper examines the effectiveness of considering the Standard Deviation of vehicle's Waiting Time (SDWT) on Deep Reinforcement Learning based traffic congestion control with emergency facilitation. The proposed method was self-evaluated by only considering average waiting time under both synthetic and Toronto real-world dataset. It has demonstrated that the proposed method was able to gain a significant impact on performance by considering the SDWT. Moreover, the proposed method was able to reach zero waiting time for emergency vehicles.
ISSN:2472-7598
DOI:10.1109/ICter53630.2021.9774792