Multilayer Graph-Based Trajectory Planning for Race Vehicles in Dynamic Scenarios
May 18, 2020 Β· Declared Dead Β· π International Conference on Intelligent Transportation Systems
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Authors
Tim Stahl, Alexander Wischnewski, Johannes Betz, Markus Lienkamp
arXiv ID
2005.08664
Category
cs.RO: Robotics
Cross-listed
eess.SY
Citations
102
Venue
International Conference on Intelligent Transportation Systems
Last Checked
4 months ago
Abstract
Trajectory planning at high velocities and at the handling limits is a challenging task. In order to cope with the requirements of a race scenario, we propose a far-sighted two step, multi-layered graph-based trajectory planner, capable to run with speeds up to 212~km/h. The planner is designed to generate an action set of multiple drivable trajectories, allowing an adjacent behavior planner to pick the most appropriate action for the global state in the scene. This method serves objectives such as race line tracking, following, stopping, overtaking and a velocity profile which enables a handling of the vehicle at the limit of friction. Thereby, it provides a high update rate, a far planning horizon and solutions to non-convex scenarios. The capabilities of the proposed method are demonstrated in simulation and on a real race vehicle.
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