作者
Duowei Li, Jianping Wu, Ming Xu, Ziheng Wang, Kezhen Hu
发表日期
2020
期刊
Journal of Advanced Transportation
卷号
2020
期号
1
页码范围
6505893
出版商
Hindawi
简介
Controlling traffic signals to alleviate increasing traffic pressure is a concept that has received public attention for a long time. However, existing systems and methodologies for controlling traffic signals are insufficient for addressing the problem. To this end, we build a truly adaptive traffic signal control model in a traffic microsimulator, i.e., “Simulation of Urban Mobility” (SUMO), using the technology of modern deep reinforcement learning. The model is proposed based on a deep Q‐network algorithm that precisely represents the elements associated with the problem: agents, environments, and actions. The real‐time state of traffic, including the number of vehicles and the average speed, at one or more intersections is used as an input to the model. To reduce the average waiting time, the agents provide an optimal traffic signal phase and duration that should be implemented in both single‐intersection cases and …
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