论文标题
COTV:交通信号灯和连接的自动驾驶汽车的合作控制,使用深度强化学习
CoTV: Cooperative Control for Traffic Light Signals and Connected Autonomous Vehicles using Deep Reinforcement Learning
论文作者
论文摘要
仅减少旅行时间的目标不足以支持未来智能运输系统的开发。为了与联合国可持续发展目标(UN-SDG)保持一致,还应考虑进一步减少燃料和排放,交通安全的改善以及基础设施部署和维护的便利。与关注交通信号信号(改善交叉点吞吐量)或车辆速度(以稳定交通稳定)中控制控制的现有工作不同,本文介绍了一个称为COTV的多代理深钢筋学习(DRL)系统,该系统合作控制了交通交通灯信号和连接的自动驾驶汽车(CAV)。因此,我们的COTV可以很好地平衡减少旅行时间,燃料和排放的实现。同时,仅与仅与一个接近每条传入道路上交通信号灯控制器的CAV合作,COTV也可以易于部署。这使交通信号灯控制器和CAV之间更有效地协调,从而导致在传统上很难融合的大规模多机构场景下训练COTV的融合。我们提供了COTV的详细系统设计,并在一项模拟研究中使用SUMO在各种网格地图和现实的城市场景和混合自动交通的情况下证明了其有效性。
The target of reducing travel time only is insufficient to support the development of future smart transportation systems. To align with the United Nations Sustainable Development Goals (UN-SDG), a further reduction of fuel and emissions, improvements of traffic safety, and the ease of infrastructure deployment and maintenance should also be considered. Different from existing work focusing on the optimization of the control in either traffic light signal (to improve the intersection throughput), or vehicle speed (to stabilize the traffic), this paper presents a multi-agent Deep Reinforcement Learning (DRL) system called CoTV, which Cooperatively controls both Traffic light signals and Connected Autonomous Vehicles (CAV). Therefore, our CoTV can well balance the achievement of the reduction of travel time, fuel, and emissions. In the meantime, CoTV can also be easy to deploy by cooperating with only one CAV that is the nearest to the traffic light controller on each incoming road. This enables more efficient coordination between traffic light controllers and CAV, thus leading to the convergence of training CoTV under the large-scale multi-agent scenario that is traditionally difficult to converge. We give the detailed system design of CoTV and demonstrate its effectiveness in a simulation study using SUMO under various grid maps and realistic urban scenarios with mixed-autonomy traffic.