Traffic congestion is a major challenge in modern urban settings. The industry-wide development of autonomous and automated vehicles (AVs) motivates the question of how can AVs contribute to congestion reduction. Past research has shown that in small scale mixed traffic scenarios with both AVs and human-driven vehicles, a small fraction of AVs executing a controlled multiagent driving policy can mitigate congestion. In this paper, we scale up existing approaches and develop new multiagent driving policies for AVs in scenarios with greater complexity. We start by showing that a congestion metric used by past research is manipulable in open road network scenarios where vehicles dynamically join and leave the road. We then propose using a different metric that is robust to manipulation and reflects open network traffic efficiency. Next, we propose a modular transfer reinforcement learning approach, and use it to scale up a multiagent driving policy to outperform human-like traffic and existing approaches in a simulated realistic scenario, which is an order of magnitude larger than past scenarios (hundreds instead of tens of vehicles). Additionally, our modular transfer learning approach saves up to 80% of the training time in our experiments, by focusing its data collection on key locations in the network. Finally, we show for the first time a distributed multiagent policy that improves congestion over human-driven traffic. The distributed approach is more realistic and practical, as it relies solely on existing sensing and actuation capabilities, and does not require adding new communication infrastructure.
翻译:在现代城市环境中,交通堵塞是交通堵塞的一大挑战。全行业发展自主和自动化车辆(AV)促使人们了解AV如何有助于减少交通堵塞。过去的研究显示,在AV和人驱动车辆的小规模混合交通情况中,一小部分AV执行受控制的多剂驱动政策可以缓解交通堵塞。在本文中,我们扩大现有做法,制定新的多剂驱动政策,在复杂程度更高的情景下,为AV制定新的多剂驱动政策。我们首先显示,过去研究使用的交通堵塞指标在开放公路网络情景中是可以操纵的,在这些情景中,车辆动态地加入和离开公路。然后我们提议使用一种不同的标准,能够进行操纵并反映网络交通畅通效率。接下来,我们提出模块化增强模块化学习方法,在模块化多剂驱动政策中,在模拟现实化现实化的现实化现实化现实化现实化情景下,需要提高现有交通阻力。 最终,我们把新模块化的传输学习方法用于我们第一次实验的80 %的训练时间,通过将数据集中用于传播操作,并反映网络中的主要位置。最后,我们以现实化的交通阻力推向着网络的交通推向更高的方向,需要更精确地展示。