Publication | Open Access
Cautious NMPC with Gaussian Process Dynamics for Autonomous Miniature Race Cars
127
Citations
22
References
2018
Year
Unknown Venue
Artificial IntelligenceCautious NmpcEngineeringMachine LearningVehicle ControlLearning ControlGaussian Process DynamicsUncertainty QuantificationSystems EngineeringModel Predictive ControlRobot LearningModel-based Control TechniqueStochastic Dynamical SystemComputer ScienceConstraint SatisfactionFirst PrinciplesGaussian ProcessMonte Carlo MethodProcess ControlSparse Gp Approximation
This paper presents an adaptive high performance control method for autonomous miniature race cars. Racing dynamics are notoriously hard to model from first principles, which is addressed by means of a cautious nonlinear model predictive control (NMPC) approach that learns to improve its dynamics model from data and safely increases racing performance. The approach makes use of a Gaussian Process (GP) and takes residual model uncertainty into account through a chance constrained formulation. We present a sparse GP approximation with dynamically adjusting inducing inputs, enabling a real-time implementable controller. The formulation is demonstrated in simulations, which show significant improvement with respect to both lap time and constraint satisfaction compared to an NMPC without model learning.
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