Affiliation:
1. School of Mechanical and Automotive Engineering, Shanghai University of Engineering Science, Shanghai 201620, China
2. Shanghai Smart Vehicle Cooperating Innovation Center Co., Ltd., Shanghai 201805, China
Abstract
Urban autonomous vehicles on city roads are subject to various constraints when changing lanes, and commonly used trajectory planning methods struggle to describe these conditions accurately and directly. Therefore, generating accurate and adaptable trajectories is crucial for safer and more efficient trajectory planning. This study proposes an optimal control model for local path planning that integrates dynamic vehicle constraints and boundary conditions into the optimization problem’s constraint set. Using the lane-changing scenario as a basis, this study establishes environmental and collision avoidance constraints during driving and develops a performance metric that optimizes both time and turning angle. The study employs the Gauss pseudo-spectral method to continuously discretize the state and control variables, converting the optimal control problem into a nonlinear programming problem. Using numerical solutions, variable control and state trajectories that satisfy multiple constraint conditions while optimizing the performance metric are generated. The study employs two weights in the experiment to evaluate the method’s performance, and the findings demonstrate that the proposed method guarantees safe obstacle avoidance, is stable, and is computationally efficient at various interpolation points compared to the Legendre pseudo-spectral method (LPM) and the Shooting method.
Reference19 articles.
1. A human-like game theory-based controller for automatic lane changing;Yu;Transp. Res. Part C-Emerg. Technol.,2018
2. A dynamic automated lane change maneuver based on vehicle-to-vehicle communication;Luo;Transp. Res. Part C,2016
3. Liu, S., Atanasov, N., Mohta, K., Kumar, V., and Kumar, V. (2017, January 24–28). Search-based Motion Planning for Quadrotors using Linear Quadratic Minimum Time Control. Proceedings of the 2017 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), Vancouver, BC, Canada.
4. Werling, M., Ziegler, J., Kammel, S., and Thrun, S. (2010, January 23–27). Optimal Trajectory Generation for Dynamic Street Scenarios in a Frenet Frame. Proceedings of the 2010 IEEE International Conference on Robotics and Automation (ICRA), Cape Town, South Africa.
5. An Improved RRT Algorithm of Local Path Planning for Vehicle Collision Avoidance;Song;J. Hunan Univ.,2017