Predictive stability filters for nonlinear dynamical systems affected by disturbances

Jan 20, 2024ยท
Alexandre Didier
Alexandre Didier
,
Andrea Zanelli
,
Kim P. Wabersich
,
Melanie N. Zeilinger
ยท 0 min read
Abstract
Predictive safety filters provide a way of projecting potentially unsafe inputs, proposed, e.g. by a human or learning-based controller, onto the set of inputs that guarantee recursive state and input constraint satisfaction by leveraging model predictive control techniques. In this paper, we extend this framework such that in addition, robust asymptotic stability of the closed-loop system can be guaranteed by enforcing a decrease of an implicit Lyapunov function which is constructed using a predicted system trajectory. Differently from previous results, we show robust asymptotic stability with respect to a predefined disturbance set on an extended state consisting of the system state and a warmstart input sequence. The proposed strategy is applied to an automotive lane keeping example in simulation.
Type
Publication
arXiv preprint arXiv:2401.11183