A predictive safety filter for learning-based control of constrained nonlinear dynamical systems
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Date
2021-07Type
- Journal Article
Citations
Cited 15 times in
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Cited 19 times in
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Abstract
The transfer of reinforcement learning (RL) techniques into real-world applications is challenged by safety requirements in the presence of physical limitations. Most RL methods, in particular the most popular algorithms, do not support explicit consideration of state and input constraints. In this paper, we address this problem for nonlinear systems with continuous state and input spaces by introducing a predictive safety filter, which is able to turn a constrained dynamical system into an unconstrained safe system and to which any RL algorithm can be applied ‘out-of-the-box’. The predictive safety filter receives the proposed control input and decides, based on the current system state, if it can be safely applied to the real system, or if it has to be modified otherwise. Safety is thereby established by a continuously updated safety policy, which is based on a model predictive control formulation using a data-driven system model and considering state and input dependent uncertainties. Show more
Publication status
publishedExternal links
Journal / series
AutomaticaVolume
Pages / Article No.
Publisher
ElsevierSubject
Safe learning-based control; Control of constrained systems; Robust control of nonlinear systems; Data-based controlOrganisational unit
09563 - Zeilinger, Melanie / Zeilinger, Melanie
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Show all metadata
Citations
Cited 15 times in
Web of Science
Cited 19 times in
Scopus
ETH Bibliography
yes
Altmetrics