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Robust Control Barrier Functions for Nonlinear Control Systems with Uncertainty: A Duality-based Approach

M. Cohen, Călin Belta, Roberto Tron

20222022 IEEE 61st Conference on Decision and Control (CDC)20 citationsDOI

Abstract

This paper studies the design of controllers that guarantee stability and safety of nonlinear control affine systems with parametric uncertainty in both the drift and control vector fields. To this end, we introduce novel classes of robust control barrier functions (RCBF) and robust control Lyapunov functions (RCLF) that facilitate the synthesis of safety-critical controllers in the presence of parametric uncertainty using quadratic programming. Since the initial bounds on the system uncertainty may be highly conservative, we present a data-driven approach to reducing such bounds using input-output data collected online. In particular, we leverage an integral set-membership identification algorithm that iteratively shrinks the set of possible system parameters online and guarantees stability and safety during learning. The efficacy of the developed approach is illustrated via numerical examples.

Topics & Concepts

Robust controlParametric statisticsControl theory (sociology)Leverage (statistics)Nonlinear systemLyapunov functionComputer scienceQuadratic programmingMathematical optimizationQuadratic equationAffine transformationControl systemMathematicsControl (management)EngineeringArtificial intelligenceQuantum mechanicsGeometryElectrical engineeringPure mathematicsPhysicsStatisticsAdvanced Control Systems OptimizationControl Systems and IdentificationFault Detection and Control Systems
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