Graduate School of Automotive Engineering, Kookmin University, Seoul 02707, Korea.
Research and Development Division, Hyundai Motor Company, Gyeonggi-do 18280, Korea.
Sensors (Basel). 2020 Dec 8;20(24):7022. doi: 10.3390/s20247022.
In truck platooning, the leading vehicle is driven manually, and the following vehicles run by autonomous driving, with the short inter-vehicle distance between trucks. To successfully perform platooning in various situations, each truck must maintain dynamic stability, and furthermore, the whole system must maintain string stability. Due to the short front-view range, however, the following vehicles' path planning capabilities become significantly impaired. In addition, in platooning with articulated cargo trucks, the off-tracking phenomenon occurring on a curved road makes it hard for the following vehicle to track the trajectory of the preceding truck. In addition, without knowledge of the global coordinate system, it is difficult to correlate the local coordinate systems that each truck relies on for sensing environment and dynamic signals. In this paper, in order to solve these problems, a path planning algorithm for platooning of articulated cargo trucks has been developed. Using the Kalman filter, V2V (Vehicle-to-Vehicle) communication, and a novel update-and-conversion method, each following vehicle can accurately compute the trajectory of the leading vehicle's front part for using it as a target path. The path planning algorithm of this paper was validated by simulations on severe driving scenarios and by tests on an actual road. The results demonstrated that the algorithm could provide lateral string stability and robustness for truck platooning.
在卡车队列行驶中,领头车辆由人工驾驶,后续车辆则采用自动驾驶,车辆之间的间距很短。为了在各种情况下成功地进行队列行驶,每辆卡车都必须保持动态稳定性,而且整个系统必须保持串列稳定性。然而,由于前视距离很短,后续车辆的路径规划能力会显著降低。此外,在铰接式货运卡车的队列行驶中,在曲线路段会出现脱轨现象,使得后续车辆难以跟踪领头卡车的轨迹。此外,由于缺乏全局坐标系的知识,很难将每辆卡车用于感知环境和动态信号的本地坐标系关联起来。在本文中,为了解决这些问题,开发了一种铰接式货运卡车队列行驶的路径规划算法。该算法使用卡尔曼滤波器、车对车(V2V)通信和一种新颖的更新和转换方法,每个后续车辆都可以准确地计算领头车辆前部的轨迹,将其作为目标路径。本文的路径规划算法通过在恶劣驾驶场景下的仿真和实际道路上的测试进行了验证。结果表明,该算法可为卡车队列行驶提供横向串列稳定性和鲁棒性。