The rising popularity of driver-less cars has led to the research and development in the field of autonomous racing, and overtaking in autonomous racing is a challenging task. Vehicles have to detect and operate at the limits of dynamic handling and decisions in the car have to be made at high speeds and high acceleration. One of the most crucial parts in autonomous racing is path planning and decision making for an overtaking maneuver with a dynamic opponent vehicle. In this paper we present the evaluation of a track based offline policy learning approach for autonomous racing. We define specific track portions and conduct offline experiments to evaluate the probability of an overtaking maneuver based on speed and position of the ego vehicle. Based on these experiments we can define overtaking probability distributions for each of the track portions. Further, we propose a switching MPCC controller setup for incorporating the learnt policies to achieve a higher rate of overtaking maneuvers. By exhaustive simulations, we show that our proposed algorithm is able to increase the number of overtakes at different track portions.
翻译:无驾驶汽车越来越受欢迎,导致自主赛领域的研发工作,而超额参加自主赛是一项具有挑战性的任务。车辆必须在动态操作的限度内探测和运行,汽车的决定必须以高速和高速进行。自主赛中最重要的部分之一是机动车超载操作路径规划和决策。在本文中,我们介绍了对自主赛基于轨道的离线政策学习方法的评估。我们根据自我车的速度和位置界定了具体的轨道部分,并进行了离线实验,以评价超载操作的可能性。我们可以根据这些实验来界定每个轨道的超速概率分布。此外,我们提议采用转动MPCC控制器设置,以纳入所学的政策,从而实现更高的超速操作率。通过详尽的模拟,我们显示我们提议的算法能够增加不同轨道部分的超载次数。