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Dual time-frequency domain system identification

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journal contribution
posted on 2025-05-08, 17:41 authored by Juan C. Agüero, Wei Tang, Juan I. Yuz, Ramón A. Delgado, Graham GoodwinGraham Goodwin
In this paper we obtain the maximum likelihood estimate of the parameters of discrete-time linear models by using a dual time–frequency domain approach. We propose a formulation that considers a (reduced-rank) linear transformation of the available data. Such a transformation may correspond to different options: selection of time-domain data, transformation to the frequency domain, or selection of frequency-domain data obtained from time-domain samples. We use the proposed approach to identify multivariate systems represented in state–space form by using the Expectation–Maximisation algorithm. We illustrate the benefits of the approach via numerical examples.

Funding

ARC

History

Journal title

Automatica

Volume

48

Issue

12

Pagination

3031-3041

Publisher

Pergamon

Language

  • en, English

College/Research Centre

Faculty of Engineering and Built Environment

School

School of Electrical Engineering and Computer Science

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