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Self-learning adaptive traffic signal control for real-time safety optimization

机译:自动学习自适应交通信号控制,用于实时安全优化

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Adaptive traffic signal control (ATSC) is a promising technique to improve the efficiency of signalized intersections, especially in the era of connected vehicles (CVs) when real-time information on vehicle positions and trajectories is available. Numerous ATSC algorithms have been proposed to accommodate real-time traffic conditions and optimize traffic efficiency. The common objective of these algorithms is to minimize total delay, decrease queue length, or maximize vehicle throughput. Despite their positive impacts on traffic mobility, the existing ATSC algorithms do not consider optimizing traffic safety. This is most likely due to the lack of tools to evaluate safety in real time. However, recent research has developed various real-time safety models for signalized intersections. These models can be used to evaluate safety in real time using dynamic traffic parameters, such as traffic volume, shock wave characteristics, and platoon ratio. Evaluating safety in real time can enable developing ATSC strategies for real-time safety optimization. In this paper, we present a novel self-learning ATSC algorithm to optimize the safety of signalized intersections. The algorithm was developed using the Reinforcement Learning (RL) approach and was trained using the simulation platform VISSIM. The trained algorithm was then validated using real-world traffic data obtained from two signalized intersections in the city of Surrey, British Columbia. Compared to the traditional actuated signal control system, the proposed algorithm reduces traffic conflicts by approximately 40 %. Moreover, the proposed ATSC algorithm was tested under various market penetration rates (MPRs) of CVs. The results showed that 90 % and 50 % of the algorithm's safety benefits can be achieved at MPR values of 50 % and 30 %, respectively. To the best of the authors' knowledge, this is the first self-learning ATSC algorithm that optimizes traffic safety in real time.
机译:自适应交通信号控制(ATSC)是提高信号交叉点的效率的有希望的技术,特别是当车辆位置和轨迹的实时信息时,在连接的车辆(CVS)的时代。已经提出了许多ATSC算法以适应实时交通条件并优化流量效率。这些算法的共同目标是最小化总延迟,减少队列长度或最大化车辆吞吐量。尽管对交通流动性产生了积极影响,但现有的ATSC算法不考虑优化交通安全。这很可能是由于缺乏实时评估安全的工具。然而,最近的研究已经为信号交叉口制定了各种实时安全模型。这些型号可用于使用动态流量参数实时评估安全性,例如交通量,冲击波特性和排率。在实时评估安全性可以实现ATSC策略进行实时安全优化。在本文中,我们提出了一种新颖的自学习ATSC算法,以优化信号交叉口的安全性。该算法是使用钢筋学习(RL)方法开发的,并使用模拟平台Vissim训练。然后使用从不列颠哥伦比亚省萨里市的两个信号交叉口获得的真实世界的交通数据验证了训练算法。与传统的致动信号控制系统相比,所提出的算法减少了大约40%的流量冲突。此外,在CVS的各种市场渗透率(MPRS)下测试了所提出的ATSC算法。结果表明,90%和50%的算法的安全益处可分别实现50%和30%的MPR值。据作者所知,这是第一个自学习ATSC算法,实时优化交通安全。

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