Scalable Reinforcement Learning Framework for Traffic Signal Control Under Communication Delays

IF 5.3 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Open Journal of Vehicular Technology Pub Date : 2024-02-22 DOI:10.1109/OJVT.2024.3368693
Aoyu Pang;Maonan Wang;Yirong Chen;Man-On Pun;Michael Lepech
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Abstract

Vehicle-to-everything (V2X) technology is pivotal for enhancing road safety, traffic efficiency, and energy conservation through the communication of vehicles with their surrounding entities such as other vehicles, pedestrians, roadside infrastructure, and networks. Among these, traffic signal control (TSC) plays a significant role in roadside infrastructure for V2X. However, most existing works on TSC design assume that real-time traffic flow information is accessible, which does not hold in real-world deployment. This study proposes a two-stage framework to address this issue. In the first stage, a scene prediction module and a scene context encoder are utilized to process historical and current traffic data to generate preliminary traffic signal actions. In the second stage, an action refinement module, informed by human-defined traffic rules and real-time traffic metrics, adjusts the preliminary actions to account for the latency in observations. This modular design allows device deployment with varying computational resources while facilitating system customization, ensuring both adaptability and scalability, particularly in edge-computing environments. Through extensive simulations on the SUMO platform, the proposed framework demonstrates robustness and superior performance in diverse traffic scenarios under varying communication delays. The related code is available at https://github.com/Traffic-Alpha/TSC-DelayLight .
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通信延迟条件下交通信号控制的可扩展强化学习框架
通过车辆与周围实体(如其他车辆、行人、路边基础设施和网络)的通信,车对物(V2X)技术在提高道路安全、交通效率和节能方面发挥着关键作用。其中,交通信号控制(TSC)在 V2X 的路边基础设施中发挥着重要作用。然而,大多数现有的交通信号控制设计工作都假定可以获得实时交通流信息,这在实际部署中并不成立。本研究提出了一个两阶段框架来解决这一问题。在第一阶段,利用场景预测模块和场景上下文编码器处理历史和当前交通数据,生成初步的交通信号行动。在第二阶段,行动改进模块根据人类定义的交通规则和实时交通指标,调整初步行动,以考虑到观察中的延迟。这种模块化设计允许利用不同的计算资源部署设备,同时便于系统定制,确保了适应性和可扩展性,特别是在边缘计算环境中。通过在 SUMO 平台上进行大量仿真,所提出的框架在不同通信延迟条件下的各种流量场景中都表现出了稳健性和卓越的性能。相关代码见 https://github.com/Traffic-Alpha/TSC-DelayLight。
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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CiteScore
9.60
自引率
0.00%
发文量
25
审稿时长
10 weeks
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