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NMPC for Racing Using a Singularity-Free Path-Parametric Model with Obstacle Avoidance

Daniel Kloeser, Tobias Schoels, Tommaso Sartor, Andrea Zanelli, Gianluca Prison, Moritz Diehl

2020IFAC-PapersOnLine53 citationsDOIOpen Access PDF

Abstract

This work presents the real-time control of 1:43 scale autonomous race cars using nonlinear model predictive control based on a singularity-free prediction model. This model allows the car to drive at both low and high speeds and in stop-and-go maneuvers. Additional constraints are imposed in the optimal control problem to ensure the validity of the model assumptions. Moreover, the control scheme is capable of avoiding obstacles online. The experimental results show that the proposed method converges to nearly time-optimal behavior by maximizing the progress on the track and achieves competitive lap time results.

Topics & Concepts

SingularityModel predictive controlControl theory (sociology)Obstacle avoidanceComputer sciencePath (computing)Parametric statisticsNonlinear systemControl (management)ObstacleNonlinear modelScheme (mathematics)Mathematical optimizationMathematicsArtificial intelligenceLawMobile robotMathematical analysisPolitical scienceRobotQuantum mechanicsProgramming languagePhysicsStatisticsVehicle Dynamics and Control SystemsReal-time simulation and control systemsElectric and Hybrid Vehicle Technologies