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Robust Control Barrier Functions for Sampled-Data Systems

Pradeep Sharma Oruganti, Parinaz Naghizadeh, Qadeer Ahmed

Year
2023
Citations
9

Abstract

This letter studies the problem of safe control of sampled-data systems under bounded disturbance and measurement errors with piecewise-constant controllers. To this end, we first propose the High-Order Doubly Robust Control Barrier Function (HO-DRCBF) for continuous-time systems where the safety enforcing constraint is of relative degree 1 or higher. We then extend this formulation to sampled-data systems with piecewise-constant controllers by bounding the evolution of the system state over the sampling period given a state estimate at the beginning of the sampling period. We demonstrate the proposed approach on a kinematic obstacle avoidance problem for wheeled robots using a unicycle model. We verify that with the proposed approach, the system does not violate the safety constraints while accounting for robustness against both bounded disturbance and measurement errors.

Keywords

PiecewiseBounding overwatchBounded functionControl theory (sociology)Robustness (evolution)Constraint (computer-aided design)Robust controlConstant (computer programming)Computer scienceObstacle avoidance

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