基于路径规划与跟踪的自主代客泊车算法

Yutao Shi, Ping Wang, Xinhong Wang
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引用次数: 0

摘要

自动代客泊车(AVP)是未来自动驾驶的热门应用场景。对于AVP路径规划,原有的混合A-star ($\mathrm{A}^{*}$)算法存在搜索成本大、搜索方向错误、产生不合理停车路径等问题。为了解决这些问题并生成更好的路径,提出了一种针对典型AVP场景的路径规划方法。该方法将路径规划分为全局部分和局部部分。基于图搜索和状态格算法规划全局路径。然后对$\ mathm {A}^{*}$混合算法和reed - shepp曲线进行修改,完成局部路径规划,最终生成可由车辆执行的完整路径。然后,设计了一种基于模型预测控制(MPC)的路径跟踪控制器,克服了传统比例积分导数(PID)控制存在超调和难以精确控制的缺点。最后,利用MATLAB和车载仿真软件CarSim进行仿真,验证了路径规划与跟踪方法的可行性。结果表明,该方法提高了停车规划的效率和合理性,停车过程跟踪误差小。
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An Autonomous Valet Parking Algorithm for Path Planning and Tracking
Autonomous valet parking (AVP) is a popular application scenario for autonomous driving in the future. For AVP path planning, the original hybrid A-star ($\mathrm{A}^{*}$) algorithm has problems of large search costs, searching towards wrong directions and generating unreasonable parking paths. To solve these problems and generate a better path, a path planning method is proposed for typical AVP scenarios. The method divides path planning into global part and local part. The global path is planned based on graph search and state lattice algorithm. Then the hybrid $\mathrm{A}^{*}$ algorithm and Reeds-Shepp curve are modified to complete the local path planning, and finally a complete path that can be executed by the vehicle is generated. Then, a controller for path tracking based on model predictive control (MPC) is designed to overcome the shortcomings of traditional proportional integral derivative (PID) control such as overshoot and difficulty in precise control. Finally, the feasibility of the path planning and tracking method is verified by simulation using MATLAB and the vehicle simulation software CarSim. The results show that the planning efficiency and rationality are improved by implementing the proposed method, and the parking process can be done well with a small tracking error.
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