The transition from today's mostly human-driven traffic to a purely automated one will be a gradual evolution, with the effect that we will likely experience mixed traffic in the near future. Connected and automated vehicles can benefit human-driven ones and the whole traffic system in different ways, for example by improving collision avoidance and reducing traffic waves. Many studies have been carried out to improve intersection management, a significant bottleneck in traffic, with intelligent traffic signals or exclusively automated vehicles. However, the problem of how to improve mixed traffic at unsignalized intersections has received less attention. In this paper, we propose a novel approach to optimizing traffic flow at intersections in mixed traffic situations using deep reinforcement learning. Our reinforcement learning agent learns a policy for a centralized controller to let connected autonomous vehicles at unsignalized intersections give up their right of way and yield to other vehicles to optimize traffic flow. We implemented our approach and tested it in the traffic simulator SUMO based on simulated and real traffic data. The experimental evaluation demonstrates that our method significantly improves traffic flow through unsignalized intersections in mixed traffic settings and also provides better performance on a wide range of traffic situations compared to the state-of-the-art traffic signal controller for the corresponding signalized intersection.
翻译:从今天大多数人为的交通向纯粹自动化交通的过渡将是一个渐进的演变过程,其结果是,我们很可能在不远的将来经历混合交通。连接和自动化车辆可以以不同的方式造福人驱动的车辆和整个交通系统,例如通过改善避免碰撞和减少交通波。已经进行了许多研究以改进交叉管理、交通中的一大瓶颈、智能交通信号或完全自动化的车辆。然而,如何改善未信号化十字路口的混合交通的问题却没有得到更多的注意。在本文件中,我们建议采用一种新颖的方法,利用深度强化学习来优化混合交通情况交叉点的交通流量。我们的强化学习代理人学习一项政策,即中央控制器让连接的自主车辆在未信号化的十字路口放弃其通行权并让其他车辆优化交通流量。我们实施了我们的方法,并根据模拟和实际交通数据在交通模拟器中测试了我们的方法。实验性评估表明,我们的方法通过混合交通环境中未信号化的交叉路口大大改进了交通流量。此外,我们的强化学习机构还学习了在广泛的交通信号交叉点上提供更好的表现。