Ren Hongbin, Niu Yaqi, Li Yunong, Yang Lin, Gao Hongliang
State Key Laboratory of Mechanical Transmission for Advanced Equipments, Chongqing University, Chongqing 400044, China.
School of Mechanical Engineering, Beijing Institute of Technology, Beijing 100081, China.
Sensors (Basel). 2024 Dec 27;25(1):112. doi: 10.3390/s25010112.
In this paper, we propose an optimal parking path planning method based on numerical solving, which leverages the concept of the distance between convex sets. The obstacle avoidance constraints were transformed into continuous, smooth nonlinear constraints using the Lagrange dual function. This approach enables the determination of a globally optimal parking path while satisfying vehicular kinematic constraints. To address the inefficiency typically associated with numerical solving, a warm start strategy was employed for the optimization variables: first, the Hybrid A* algorithm was utilized to generate the initial path values; next, a velocity planning problem was formulated to obtain initial velocity values; and finally, converted convex optimization problems were used to compute the initial dual variables. The optimality of the proposed method was validated through a real car test with ACADO as a solver in three typical parking scenarios. The results demonstrate that the proposed method achieved smoother parking paths in real time.
在本文中,我们提出了一种基于数值求解的最优停车路径规划方法,该方法利用了凸集之间距离的概念。通过拉格朗日对偶函数将避障约束转化为连续、平滑的非线性约束。这种方法能够在满足车辆运动学约束的同时确定全局最优停车路径。为了解决数值求解通常存在的低效率问题,对优化变量采用了热启动策略:首先,利用混合A*算法生成初始路径值;其次,制定速度规划问题以获得初始速度值;最后,使用转换后的凸优化问题来计算初始对偶变量。以ACADO作为求解器,在三种典型停车场景下通过实车测试验证了所提方法的最优性。结果表明,所提方法能够实时实现更平滑的停车路径。