Identification of positive real models in subspace identification by using regularization

In time-domain subspace methods for identifying linear-time invariant dynamical systems, the model matrices are typically estimated from least squares, based on estimated Kalman filter state sequences and the observed outputs and/or inputs. It is well known that for an infinite amount of data, this...

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Veröffentlicht in:IEEE transactions on automatic control 2003-10, Vol.48 (10), p.1843-1847
Hauptverfasser: Goethals, I., Van Gestel, T., Suykens, J., Van Dooren, P., De Moor, B.
Format: Artikel
Sprache:eng
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Zusammenfassung:In time-domain subspace methods for identifying linear-time invariant dynamical systems, the model matrices are typically estimated from least squares, based on estimated Kalman filter state sequences and the observed outputs and/or inputs. It is well known that for an infinite amount of data, this least squares estimate of the system matrices is unbiased, when the system order is correctly estimated. However, for a finite amount of data, the obtained model may not be positive real, in which case the algorithm is not able to identify a valid stochastic model. In this note, positive realness is imposed by adding a regularization term to a least squares cost function in the subspace identification algorithm. The regularization term is the trace of a matrix which involves the dynamic system matrix and the output matrix.
ISSN:0018-9286
1558-2523
DOI:10.1109/TAC.2003.817940