Enhancing Urban Intersection Efficiency: Utilizing Visible Light Communication and Learning-Driven Control for Improved Traffic Signal Performance

Vehicles Pub Date : 2024-04-04 DOI:10.3390/vehicles6020031
M. Vieira, M. Vieira, Gonçalo Galvão, P. Louro, Mário Véstias, P. Vieira
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Abstract

This paper introduces an approach to enhance the efficiency of urban intersections by integrating Visible Light Communication (VLC) into a multi-intersection traffic control system. The main objectives include the reduction in waiting times for vehicles and pedestrians, the improvement of overall traffic safety, and the accommodation of diverse traffic movements during multiple signal phases. The proposed system utilizes VLC to facilitate communication among interconnected vehicles and infrastructure. This is achieved by utilizing streetlights, headlamps, and traffic signals for transmitting information. By integrating VLC localization services with learning-driven traffic signal control, the multi-intersection traffic management system is established. A reinforcement learning scheme, based on VLC queuing/request/response behaviors, is utilized to schedule traffic signals effectively. Agents placed at each intersection control traffic lights by incorporating information from VLC-ready cars, including their positions, destinations, and intended routes. The agents devise optimal strategies to improve traffic flow and engage in communication to optimize the collective traffic performance. An assessment of the multi-intersection scenario through the SUMO urban mobility simulator reveals considerable benefits. The system successfully reduces both waiting and travel times. The reinforcement learning approach effectively schedules traffic signals, and the results highlight the decentralized and scalable nature of the proposed method, especially in multi-intersection scenarios. The discussion emphasizes the possibility of applying reinforcement learning in everyday traffic scenarios, showcasing the potential for the dynamic identification of control actions and improved traffic management.
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提高城市交叉口效率:利用可见光通信和学习驱动控制提高交通信号性能
本文介绍了一种通过将可见光通信(VLC)集成到多交叉口交通控制系统中来提高城市交叉口效率的方法。其主要目标包括减少车辆和行人的等待时间,提高整体交通安全,以及在多个信号阶段满足不同的交通流。拟议的系统利用 VLC 促进相互连接的车辆和基础设施之间的通信。这是通过利用路灯、大灯和交通信号来传输信息实现的。通过将 VLC 定位服务与学习驱动型交通信号控制相结合,建立了多交叉路口交通管理系统。该系统利用基于 VLC 队列/请求/响应行为的强化学习方案来有效调度交通信号。放置在每个交叉路口的代理通过整合 VLC 准备就绪的汽车的信息(包括其位置、目的地和预定路线)来控制交通信号灯。代理设计出改善交通流量的最佳策略,并进行交流以优化集体交通性能。通过 SUMO 城市交通模拟器对多交叉路口场景进行的评估显示,该系统具有相当大的优势。该系统成功地减少了等待时间和旅行时间。强化学习方法有效地调度了交通信号,结果凸显了所提方法的分散性和可扩展性,尤其是在多交叉口场景中。讨论强调了在日常交通场景中应用强化学习的可能性,展示了动态识别控制行动和改进交通管理的潜力。
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