Risk-Averse Model Predictive Control for Racing in Adverse Conditions
Model predictive control (MPC) algorithms can be sensitive to model mismatch when used in challenging nonlinear control tasks. In particular, the performance of MPC for vehicle control at the limits of handling suffers when the underlying model overestimates the vehicle's capabilities. In this...
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Zusammenfassung: | Model predictive control (MPC) algorithms can be sensitive to model mismatch
when used in challenging nonlinear control tasks. In particular, the
performance of MPC for vehicle control at the limits of handling suffers when
the underlying model overestimates the vehicle's capabilities. In this work, we
propose a risk-averse MPC framework that explicitly accounts for uncertainty
over friction limits and tire parameters. Our approach leverages a sample-based
approximation of an optimal control problem with a conditional value at risk
(CVaR) constraint. This sample-based formulation enables planning with a set of
expressive vehicle dynamics models using different tire parameters. Moreover,
this formulation enables efficient numerical resolution via sequential
quadratic programming and GPU parallelization. Experiments on a Lexus LC 500
show that risk-averse MPC unlocks reliable performance, while a deterministic
baseline that plans using a single dynamics model may lose control of the
vehicle in adverse road conditions. |
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DOI: | 10.48550/arxiv.2410.17183 |