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Application of structured total least squares for system identification and model reduction (2005)

Abstract
The following identification problem is considered: minimize the l2 norm of the difference between a given time series and an approximating one under the constraint that the approximating time series is a trajectory of a linear time invariant system of a fixed complexity. The complexity is measured by the input dimension and the maximum lag. The problem is known as the global total least squares and alternatively can be viewed as maximum likelihood identification in the errors-in-variables setup. Multiple time series and latent variables can be considered in the same setting. Special cases of the problem are autonomous system identification, noisy realization, and finite time optimal l2 model reduction. The identification problem is related to the structured total least squares problem. The paper presents an efficient software package that implements the theory in practice. The proposed method and software are tested on data sets from the database for the identification of systems DAISY.

Publication details
Download http://eprints.ecs.soton.ac.uk/13300/1/stls_appl_published.pdf
Publisher IEEE
Contributors Ljung, L.
Repository University of Southampton [School of Electronics and Computer Science] (United Kingdom)
Type Article, PeerReviewed
Relation http://eprints.ecs.soton.ac.uk/13300/

Cited publications (6)
THE ESTIMATION OF A SYSTEM PULSE TRANSFER FUNCTION IN THE PRESENCE OF NOISE, (1998)
Block-Toeplitz/Hankel structured total least squares (2005)
High-performance numerical algorithms and software for structured total least squares (2005)
Global total least squares modelling of multivariate time series (1995)
Consistency of the structured total least squares estimator in a multivariate errors-in-variables model (2005)
High-Performance Numerical Software for Control Systems Analysis and Design, and Subspace-Based System Identification (1998)