数学优化
非线性规划
凸优化
轨迹优化
线性化
最优化问题
弹道
模型预测控制
计算机科学
正多边形
非线性系统
最优控制
控制理论(社会学)
数学
控制(管理)
人工智能
物理
几何学
量子力学
天文
作者
Patrick Scheffe,Theodor Mario Henneken,Maximilian Kloock,Bassam Alrifaee
出处
期刊:IEEE transactions on intelligent vehicles
[Institute of Electrical and Electronics Engineers]
日期:2022-04-19
卷期号:8 (1): 661-672
被引量:25
标识
DOI:10.1109/tiv.2022.3168130
摘要
Optimization problems for trajectory planning in autonomous vehicle racing are characterized by their nonlinearity and nonconvexity. Instead of solving these optimization problems, usually a convex approximation is solved instead to achieve a high update rate. We present a real-time-capable model predictive control (MPC) trajectory planner based on a nonlinear single-track vehicle model and Pacejka’s magic tire formula for autonomous vehicle racing. After formulating the general nonconvex trajectory optimization problem, we form a convex approximation using sequential convex programming (SCP). The state of the art convexifies track constraints using sequential linearization (SL), which is a method of relaxing the constraints. Solutions to the relaxed optimization problem are not guaranteed to be feasible in the nonconvex optimization problem. We propose sequential convex restriction (SCR) as a method to convexify track constraints. SCR guarantees that resulting solutions are feasible in the nonconvex optimization problem. We show recursive feasibility of solutions to the restricted optimization problem. The MPC is evaluated on a scaled version of the Hockenheimring racing track in simulation. The results show that MPC using SCR yields faster lap times than MPC using SL, while still being real-time capable.
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