Informativity conditions for data-driven control based on input-state data and polyhedral cross-covariance noise bounds

Tom R.V. Steentjes (Corresponding author), Mircea Lazar (Corresponding author), Paul M.J. Van den Hof (Corresponding author)

Onderzoeksoutput: Bijdrage aan tijdschriftCongresartikelpeer review

1 Citaat (Scopus)
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Samenvatting

Modeling and control of dynamical systems rely on measured data, which contains information about the system. Finite data measurements typically lead to a set of system models that are unfalsified, i.e., that explain the data. The problem of data-informativity for stabilization or control with quadratic performance is concerned with the existence of a controller that stabilizes all unfalsified systems or achieves a desired quadratic performance. Recent results in the literature provide informativity conditions for control based on input-state data and ellipsoidal noise bounds, such as energy or magnitude bounds. In this paper, we consider informativity of input-state data for control where noise bounds are defined through the cross-covariance of the noise with respect to an instrumental variable; bounds that were introduced originally as a noise characterization in parameter bounding identification. The considered cross-covariance bounds are defined by a finite number of hyperplanes, which induce a (possibly unbounded) polyhedral set of unfalsified systems. We provide informativity conditions for input-state data with polyhedral cross-covariance bounds for stabilization and H2/Hcontrol through vertex/half-space representations of the polyhedral set of unfalsified systems.

Originele taal-2Engels
Pagina's (van-tot)329-334
Aantal pagina's6
TijdschriftIFAC-PapersOnLine
Volume55
Nummer van het tijdschrift30
DOI's
StatusGepubliceerd - 2022
Evenement25th International Symposium on Mathematical Theory of Networks and Systems, MTNS 2022 - Bayreuthl, Duitsland
Duur: 12 sep. 202216 sep. 2022
Congresnummer: 25

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