Reinforcement Learning-based Signal Control Strategies to Improve Travel Efficiency at Urban Intersection

Z. Ge
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引用次数: 4

Abstract

Aiming at reducing urban traffic congestion and overcoming the defects of traditional timing control methods, two real-time signal control strategies based on Q-learning (QL) and Deep Q-learning network (DQN) algorithms were proposed and compared respectively. An algorithm framework was constructed with radar and video detector data as input and optimal intersection control strategy as output. Based on a traffic simulation platform, a typical urban intersection in Nanjing was simulated and the control effect of the methods were tested. The results show that the proposed two intelligent control strategies can actively respond to various traffic states, converge in a short training time and find the optimal control strategy. The two control strategies can effectively reduce the travel time by more than 20% and the stop delay by more than 30%. DQN-based control strategy is more effective than QL-based control strategy.
基于强化学习的城市交叉口信号控制策略提高出行效率
为了减少城市交通拥堵,克服传统定时控制方法的缺陷,提出了两种基于Q-learning (QL)和Deep Q-learning network (DQN)算法的实时信号控制策略,并进行了比较。以雷达和视频探测器数据为输入,以最优交叉口控制策略为输出,构建了算法框架。基于交通仿真平台,对南京市一个典型城市十字路口进行了仿真,验证了方法的控制效果。结果表明,所提出的两种智能控制策略能够主动响应各种交通状态,在较短的训练时间内收敛并找到最优控制策略。这两种控制策略均可有效减少20%以上的行驶时间和30%以上的停车延迟。基于dqn的控制策略比基于ql的控制策略更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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