Learning reduced-order models of quadratic control systems from input-output data

Ion Victor Gosea, Dimitrios S. Karachalios, Athanasios C. Antoulas

In this paper, we address an extension of the Loewner framework for learning quadratic control systems from input-output data. The proposed method first constructs a reduced-order linear model from measurements of the classical transfer function. Then, this surrogate model is enhanced by incorporating a term that depends quadratically on the state. More precisely, we employ an iterative procedure based on least squares fitting that takes into account measured or computed data. Here, data represent transfer function values inferred from higher harmonics of the observed output, when the control input is purely oscillatory.

Knowledge Graph

arrow_drop_up

Comments

Sign up or login to leave a comment