Samenvatting

This paper presents a kernel-based learning approach for black-box nonlinear state-space models with a focus on enforcing model stability. Specifically, we aim to enforce a stability notion called convergence which guarantees that, for any bounded input from a user-defined class, the model responses converge to a unique steady-state solution that remains within a positively invariant set that is user-defined and bounded. Such a form of model stability provides robustness of the learned models to new inputs unseen during the training phase. The problem is cast as a convex optimization problem with convex constraints that enforce the targeted convergence property. The benefits of the approach are illustrated by a simulation example.
Originele taal-2Engels
Titel2023 62nd IEEE Conference on Decision and Control, CDC 2023
UitgeverijInstitute of Electrical and Electronics Engineers
Pagina's2897-2902
Aantal pagina's6
ISBN van elektronische versie979-8-3503-0124-3
DOI's
StatusGepubliceerd - 19 jan. 2024
Evenement2023 62nd IEEE Conference on Decision and Control (CDC) - Singapore, Singapore, Singapore, Singapore
Duur: 13 dec. 202315 dec. 2023
Congresnummer: 62

Congres

Congres2023 62nd IEEE Conference on Decision and Control (CDC)
Verkorte titelCDC 2023
Land/RegioSingapore
StadSingapore
Periode13/12/2315/12/23

Financiering

This research was partially supported by the Engineering and Physical Sciences Research Council (grant number: EP/W005557/1) and by the Eötvös Loránd Research Network (grant number: SA-77/2021).

FinanciersFinanciernummer
Engineering and Physical Sciences Research CouncilEP/W005557/1, SA-77/2021

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