Litcius/Paper detail

Efficient Spatiotemporal Graph Search for Local Trajectory Planning on Oval Race Tracks

Matthias Rowold, Levent Ögretmen, Tobias Kerbl, Boris Lohmann

2022Actuators21 citationsDOIOpen Access PDF

Abstract

Autonomous racing has increasingly become a research subject as it provides insights into dynamic, high-speed situations. One crucial aspect of handling these situations, especially in the presence of dynamic obstacles, is the generation of a collision-free trajectory that represents a safe behavior and is also competitive in the case of racing. We propose a local planning approach that generates such trajectories for a racing car on an oval race track by searching a spatiotemporal graph. A considerable challenge of search-based methods in a spatiotemporal domain is the curse of dimensionality. Therefore, we propose how a previously presented graph structure that is based on intervals instead of discrete values can be searched more efficiently without losing optimality by using a uniform-cost search strategy. We extend the search method to make it anytime-capable so that it can provide a suboptimal trajectory even if the search has to be terminated early. The graph-based planning approach allows us to apply a flexible cost function so that our approach can operate fully autonomously on an oval race track, including the pit lane. We present a cost function for oval racing and explain how the terms contribute to the desired behaviors. This is supported by results with a full-scale prototype.

Topics & Concepts

GraphComputer scienceCurse of dimensionalityTrajectoryDomain (mathematical analysis)Artificial intelligenceFunction (biology)Arms raceMathematical optimizationTheoretical computer scienceMathematicsEconomic historyEvolutionary biologyPhysicsBiologyAstronomyHistoryMathematical analysisRobotic Path Planning AlgorithmsArtificial Intelligence in GamesAutonomous Vehicle Technology and Safety