Traffic signal control for smart cities using reinforcement learning
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WEB OF SCIENCE

63
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107

초록

Traffic congestion is increasing globally, and this problem needs to be addressed by the traffic management system. Traffic signal control (TSC) is an effective method among various traffic management systems. In a dynamically changing and interconnected traffic environment, the currently model-based TSCs are not adaptive. In addition, with the rise of smart cities and IoT, there is a need for efficient TSCs that can handle large and complex data. To address this issue, this study proposes a TSC system to maximize the number of vehicles crossing an intersection and balances the signals between roads by using Q-learning (QL). The proposed system has a flexible structure that can be modified to suit the changes in the original structure of the intersection.

키워드

Smart cityQ-learningTraffic signal controlTraffic congestion
제목
Traffic signal control for smart cities using reinforcement learning
저자
Joo, HyunjinAhmed, Syed HassanLim, Yujin
DOI
10.1016/j.comcom.2020.03.005
발행일
2020-03
유형
Article
저널명
Computer Communications
154
페이지
324 ~ 330