English

Data informativity: a new perspective on data-driven analysis and control

Optimization and Control 2020-01-14 v3 Dynamical Systems

Abstract

The use of persistently exciting data has recently been popularized in the context of data-driven analysis and control. Such data have been used to assess system theoretic properties and to construct control laws, without using a system model. Persistency of excitation is a strong condition that also allows unique identification of the underlying dynamical system from the data within a given model class. In this paper, we develop a new framework in order to work with data that are not necessarily persistently exciting. Within this framework, we investigate necessary and sufficient conditions on the informativity of data for several data-driven analysis and control problems. For certain analysis and design problems, our results reveal that persistency of excitation is not necessary. In fact, in these cases data-driven analysis/control is possible while the combination of (unique) system identification and model-based control is not. For certain other control problems, our results justify the use of persistently exciting data as data-driven control is possible only with data that are informative for system identification.

Keywords

Cite

@article{arxiv.1908.00468,
  title  = {Data informativity: a new perspective on data-driven analysis and control},
  author = {Henk J. van Waarde and Jaap Eising and Harry L. Trentelman and M. Kanat Camlibel},
  journal= {arXiv preprint arXiv:1908.00468},
  year   = {2020}
}

Comments

16 pages