Kernel-based identification with frequency domain side-information

Journal Article (2023)
Author(s)

Mohammad Khosravi (TU Delft - Team Tamas Keviczky)

Roy S. Smith (ETH Zürich)

Research Group
Team Tamas Keviczky
Copyright
© 2023 M. Khosravi, Roy S. Smith
DOI related publication
https://doi.org/10.1016/j.automatica.2022.110813
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 M. Khosravi, Roy S. Smith
Research Group
Team Tamas Keviczky
Volume number
150
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Abstract

This paper discusses the problem of system identification when frequency domain side-information is available. We mainly consider the case where the side-information is provided as the H-norm of the system being bounded by a given scalar. This framework allows considering different forms of frequency domain side-information, such as the dissipativity of the system. We propose a nonparametric identification approach for estimating the impulse response of the system under the given side-information. The estimation problem is formulated as a constrained optimization in a stable reproducing kernel Hilbert space, where suitable constraints are considered for incorporating the desired frequency domain features. The resulting optimization has an infinite-dimensional feasible set with an infinite number of constraints. We show that this problem is a well-defined convex program with a unique solution. We propose a heuristic that tightly approximates this unique solution. The proposed approach is equivalent to solving a finite-dimensional convex quadratically constrained quadratic program. The efficiency of the discussed method is verified by several numerical examples.