Author/Authors
Biao Huang، نويسنده , , Steven X. Ding and S. Joe Qin، نويسنده ,
DocumentNumber
1384635
Title Of Article
Closed-loop subspace identification: an orthogonal projection approach
شماره ركورد
11275
Latin Abstract
In this paper, a closed-loop subspace identification approach through an orthogonal projection and subsequent singular value
decomposition is proposed. As a by-product of this development, it explains why some existing subspace methods may deliver a bias
in the presence of the feedback control and suggests a remedy to eliminate the bias. Furthermore, as the proposed method is a
projection based method, it can simultaneously provide extended observability matrix, lower triangular block-Toeplitz matrix, and
Kalman filtered state sequences. Therefore, using this method, the system state space matrices can be recovered either from the
extended observability matrix/the block-Toeplitz matrix or from the Kalman filter state sequences.
From Page
53
NaturalLanguageKeyword
closed-loop identification , Singular valuedecomposition , PCA , Subspace PCA , Projection , Subspace identification , Instrument variable method
JournalTitle
Studia Iranica
To Page
66
To Page
66
Link To Document