From Data to Reduced-order Models via Generalized Balanced Truncation

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Abstract

This paper proposes a data-driven model reduction approach on the basis of noisy data with a known noise model. Firstly, the concept of data reduction is introduced. In particular, we show that the set of reduced-order models obtained by applying a Petrov-Galerkin projection to all systems explaining the data characterized in a large-dimensional quadratic matrix inequality (QMI) can again be characterized in a lower-dimensional QMI. Next, we develop a data-driven generalized balanced truncation method that relies on two steps. First, we provide necessary and sufficient conditions such that systems explaining the data have common generalized Gramians. Second, these common generalized Gramians are used to construct matrices that allow to characterize a class of reduced-order models via generalized balanced truncation in terms of a lower-dimensional QMI by applying the data reduction concept. Additionally, we present alternative procedures to compute a priori and a posteriori upper bounds with respect to the true system generating the data. Finally, the proposed techniques are illustrated by means of application to an example of a system of a cart with a double-pendulum.

Original languageEnglish
Pages (from-to)6160-6175
Number of pages16
JournalIEEE Transactions on Automatic Control
Volume68
Issue number10
Early online date23-Jan-2023
DOIs
Publication statusPublished - Oct-2023

Keywords

  • Reduced order systems
  • Data models
  • Noise measurement
  • linear matrix inequalities
  • Symmetric matrices
  • Upper bound
  • Data-driven model reduction
  • data informativity
  • generalized balancing
  • error bounds

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