基于RRT算法的自动驾驶车辆局部轨迹规划与控制方法

Stefano Feraco, Sara Luciani, A. Bonfitto, N. Amati, A. Tonoli
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引用次数: 20

摘要

提出了一种基于快速探索随机树算法的自动驾驶赛车局部轨迹规划与控制方法。本文旨在提供一种算法,允许在未知环境中计算计划轨迹,该环境具有不可跨越的障碍物,例如交通锥。所研究的方法利用感知管道,通过基于激光雷达的传感器和高性能图形处理单元来感知周围环境。考虑的车辆是一个四轮驱动的电动赛车原型,它被建模为一个3自由度的自行车模型。设计了横向和纵向车辆动力学的Stanley控制器来执行路径跟踪任务。利用车载感知传感器记录的真实数据对所提方法的性能进行了仿真评估。该算法可以成功地计算出不同驾驶场景下的可行轨迹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A local trajectory planning and control method for autonomous vehicles based on the RRT algorithm
This paper presents a local trajectory planning and control method based on the Rapidly-exploring Random Tree algorithm for autonomous racing vehicles. The paper aims to provide an algorithm allowing to compute the planned trajectory in an unknown environment, structured with non-crossable obstacles, such as traffic cones. The investigated method exploits a perception pipeline to sense the surrounding environment by means of a LIDAR-based sensor and a high-performance Graphic Processing Unit. The considered vehicle is a four-wheel drive electric racing prototype, which is modeled as a 3 Degree-of-Freedom bicycle model. A Stanley controller for both lateral and longitudinal vehicle dynamics is designed to perform the path tracking task. The performance of the proposed method is evaluated in simulation using real data recorded by on-board perception sensors. The algorithm can successfully compute a feasible trajectory in different driving scenarios.
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