There has been significant progress in sensing, perception, and localization for automated driving, However, due to the wide spectrum of traffic/road structure scenarios and the long tail distribution of human driver behavior, it has remained an open challenge for an intelligent vehicle to always know how to make and execute the best decision on road given available sensing / perception / localization information. In this chapter, we talk about how artificial intelligence and more specifically, reinforcement learning, can take advantage of operational knowledge and safety reflex to make strategical and tactical decisions. We discuss some challenging problems related to the robustness of reinforcement learning solutions and their implications to the practical design of driving strategies for autonomous vehicles. We focus on automated driving on highway and the integration of reinforcement learning, vehicle motion control, and control barrier function, leading to a robust AI driving strategy that can learn and adapt safely.
翻译:在自动驾驶的感知、感知和地方化方面取得了显著进展,然而,由于交通/公路结构情况多种多样,而且人驾驶员行为有长尾分布,智能车辆始终了解如何根据现有感知/感知/定位信息,在道路上作出和执行最佳决定,这仍然是一项公开的挑战。在本章中,我们讨论了人工智能,更具体地说,强化学习如何利用操作知识和安全反应,作出战略性和战术性决定。我们讨论了与强化学习解决方案的稳健性及其对自主车辆驾驶战略实际设计的影响有关的一些具有挑战性的问题。我们侧重于在高速公路上自动驾驶和整合强化学习、车辆动作控制和控制屏障功能,从而形成一个能够安全学习和适应的强有力的AI驾驶战略。