Predictive control barrier functions: Enhanced safety mechanisms for learning-based control
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Date
2023-05Type
- Journal Article
Abstract
While learning-based control techniques often outperform classical controller designs, safety requirements limit the acceptance of such methods in many applications. Recent developments address this issue through so-called predictive safety filters, which assess if a proposed learning-based control input can lead to constraint violations and modifies it if necessary to ensure safety for all future time steps. The theoretical guarantees of such predictive safety filters rely on the model assumptions and minor deviations can lead to failure of the filter putting the system at risk. This paper introduces an auxiliary soft-constrained predictive control problem that is always feasible at each time step and asymptotically stabilizes the feasible set of the original safety filter, thereby providing a recovery mechanism in safety-critical situations. This is achieved by a simple constraint tightening in combination with a terminal control barrier function. By extending discrete-time control barrier function theory, we establish that the proposed auxiliary problem provides a ‘predictive’ control barrier function. The resulting algorithm is demonstrated using numerical examples. Show more
Publication status
publishedExternal links
Journal / series
IEEE Transactions on Automatic ControlVolume
Pages / Article No.
Publisher
IEEESubject
Constrained control; NL predictive control; Intelligent systems; SafetyOrganisational unit
09563 - Zeilinger, Melanie / Zeilinger, Melanie
Funding
157601 - Safety and Performance for Human in the Loop Control (SNF)
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