Frequency Response Function Identification from Incomplete Data

A Wavelet-based Approach

Journal Article (2022)
Author(s)

Nic Dirkx (ASML, Eindhoven University of Technology)

Koen Tiels (Eindhoven University of Technology)

Tom Oomen (Eindhoven University of Technology, TU Delft - Team Jan-Willem van Wingerden)

Research Group
Team Jan-Willem van Wingerden
Copyright
© 2022 Nic Dirkx, Koen Tiels, T.A.E. Oomen
DOI related publication
https://doi.org/10.1016/j.ifacol.2022.11.222
More Info
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Publication Year
2022
Language
English
Copyright
© 2022 Nic Dirkx, Koen Tiels, T.A.E. Oomen
Research Group
Team Jan-Willem van Wingerden
Issue number
37
Volume number
55
Pages (from-to)
439-444
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Abstract

Frequency Response Function (FRF) identification plays a crucial role in the design, the control, and the analysis of complex dynamical systems, including thermal and motion systems. Especially for applications that require long measurements, missing data samples, e.g., due to interruptions in the data transmission or sensor failure, often occur. The aim of this paper is to accurately identify nonparametric FRF models of periodically excited systems from noisy output measurements with missing samples. The presented method employs a wavelet-based transformation to address the identification problem in the time-frequency plane. A simulation example confirms that the developed techniques produce accurate estimates, even when many samples are missing.