Connected automated driving has the potential to significantly improve urban traffic efficiency, e.g., by alleviating issues due to occlusion. Cooperative behavior planning can be employed to jointly optimize the motion of multiple vehicles. Most existing approaches to automatic intersection management, however, only consider fully automated traffic. In practice, mixed traffic, i.e., the simultaneous road usage by automated and human-driven vehicles, will be prevalent. The present work proposes to leverage reinforcement learning and a graph-based scene representation for cooperative multi-agent planning. We build upon our previous works that showed the applicability of such machine learning methods to fully automated traffic. The scene representation is extended for mixed traffic and considers uncertainty in the human drivers' intentions. In the simulation-based evaluation, we model measurement uncertainties through noise processes that are tuned using real-world data. The paper evaluates the proposed method against an enhanced first in - first out scheme, our baseline for mixed traffic management. With increasing share of automated vehicles, the learned planner significantly increases the vehicle throughput and reduces the delay due to interaction. Non-automated vehicles benefit virtually alike.
翻译:合作行为规划可以用来联合优化多辆车的机动性。但是,大多数现有的自动交叉管理方法只考虑完全自动化的交通。实际上,混合交通,即自动化和人力驱动的车辆同时使用公路,将十分普遍。目前的工作是利用强化学习和图形化场景演示来进行多试剂合作规划。我们以以前显示这种机器学习方法可适用于完全自动化交通的工程为基础。现场展示是为了混合交通,并考虑到人驾驶员的意图的不确定性。在模拟评价中,我们通过使用现实世界数据调整的噪音过程来模拟测量不确定因素。文件评估了拟议的方法与首先改进的、第一个改进的计划,即我们混合交通管理的基线。随着自动化车辆比例的增加,所学过的规划员大大增加了车辆的吞吐量,并减少了因互动而产生的延误。非自动车辆几乎同样有益。