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An Intelligent Traffic Signal Control System Based on Deep Reinforcement Learning

机译:基于深度强化学习的智能交通信号控制系统

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With the rapid growth of traffic demand, the urban traffic conditions are becoming more dynamic and uncertain. Traditional traffic control methods cannot cope with such complex traffic conditions, which cause traffic congestion and environmental pollution. In this paper, we propose an intelligent intersection traffic signal control method based on deep Qlearning network algorithm. The simulation experiment is carried out by using SUMO traffic simulation software. The performance of the proposed method is verified based on the traffic data from Pingxiang City, Jiangxi Province and it shows that the proposed method can effectively alleviate the aggregate delay of the early and late traffic peaks compared with fixed time.
机译:随着交通需求的快速增长,城市交通状况变得更加动态和不确定。传统的交通管制方法无法应对如此复杂的交通状况,而这种复杂的交通状况会导致交通拥堵和环境污染。本文提出了一种基于深度Qlearning网络算法的智能路口交通信号控制方法。仿真实验是使用SUMO交通仿真软件进行的。根据江西省萍乡市的交通数据验证了该方法的性能,结果表明,与固定时间相比,该方法可以有效地缓解交通高峰前后的总延误。

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