From data to reduced-order models via moment matching

Azka M. Burohman, Bart Besselink, Jacquelien M. A. Scherpen, M. Kanat Camlibel*

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

A new method for data-driven interpolatory model reduction for discrete-time systems is presented in this paper. Using the so-called data informativity perspective, we define a framework that enables the computation of moments at given (possibly complex) interpolation points based on time-domain input–output data only, without explicitly identifying the high-order system. Instead, by characterizing the set of all systems explaining the data, necessary and sufficient conditions are provided under which all systems in this set share the same moment at a given interpolation point. Moreover, these conditions allow for explicitly computing these moments. Reduced-order models are then derived by employing a variation of the classical rational interpolation method. The condition to enforce moment matching model reduction with prescribed poles is also discussed as a means to obtain stable reduced-order models. An example of an electrical circuit illustrates this framework.

Original languageEnglish
Article number105965
Number of pages9
JournalSystems and Control Letters
Volume194
DOIs
Publication statusPublished - Dec-2024

Keywords

  • Data informativity
  • Data-driven model reduction
  • Interpolatory model reduction
  • Model reduction
  • Moment matching

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