Stochastic theory of continuous-time state-space identification
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[1] Β. L. HO,et al. Editorial: Effective construction of linear state-variable models from input/output functions , 1966 .
[2] B. Anderson,et al. Spectral factorization of a finite-dimensional nonstationary matrix covariance , 1974 .
[3] B. Dickinson,et al. Canonical matrix fraction and state-space descriptions for deterministic and stochastic linear systems , 1974 .
[4] H. Akaike. Markovian Representation of Stochastic Processes by Canonical Variables , 1975 .
[5] R. Guidorzi. Canonical structures in the identification of multivariable systems , 1975, Autom..
[6] P. Faurre. Stochastic Realization Algorithms , 1976 .
[7] Sun-Yuan Kung,et al. A new identification and model reduction algorithm via singular value decomposition , 1978 .
[8] U. Desai,et al. A realization approach to stochastic model reduction and balanced stochastic realizations , 1982, 1982 21st IEEE Conference on Decision and Control.
[9] G. Picci,et al. Realization Theory for Multivariate Stationary Gaussian Processes , 1985 .
[10] Jer-Nan Juang,et al. An eigensystem realization algorithm for modal parameter identification and model reduction. [control systems design for large space structures] , 1985 .
[11] E. Hannan,et al. The statistical theory of linear systems , 1989 .
[12] Wallace E. Larimore,et al. Canonical variate analysis in identification, filtering, and adaptive control , 1990, 29th IEEE Conference on Decision and Control.
[13] D. S. Bayard,et al. An algorithm for state-space frequency domain identification without windowing distortions , 1992, [1992] Proceedings of the 31st IEEE Conference on Decision and Control.
[14] Patrick Dewilde,et al. Subspace model identification Part 1. The output-error state-space model identification class of algorithms , 1992 .
[15] M. Verhaegen. Subspace model identification Part 2. Analysis of the elementary output-error state-space model identification algorithm , 1992 .
[16] Rolf Johansson,et al. System modeling and identification , 1993 .
[17] Rolf Johansson,et al. Identification of continuous-time models , 1994, IEEE Trans. Signal Process..
[18] H. Akçay,et al. An efficient frequency domain state-space identification algorithm: robustness and stochastic analysis , 1994, Proceedings of 1994 33rd IEEE Conference on Decision and Control.
[19] Bart De Moor,et al. N4SID: Subspace algorithms for the identification of combined deterministic-stochastic systems , 1994, Autom..
[20] H. Akçay,et al. An efficient frequency domain state-space identification algorithm , 1994, Proceedings of 1994 33rd IEEE Conference on Decision and Control.
[21] T. Söderström,et al. An IV-Scheme for Estimating Continuous-Time Stochastic Models from Discrete-Time Data , 1994 .
[22] 莊哲男. Applied System Identification , 1994 .
[23] Michel Verhaegen,et al. Identification of the deterministic part of MIMO state space models given in innovations form from input-output data , 1994, Autom..
[24] Rolf Johansson,et al. An algorithm for continuous-time state space identification , 1995, Proceedings of 1995 34th IEEE Conference on Decision and Control.
[25] L. Ljung,et al. Subspace-based multivariable system identification from frequency response data , 1996, IEEE Trans. Autom. Control..
[26] M. Verhaegen,et al. Identification of continuous-time MIMO state space models from sampled data, in the presence of process and measurement noise , 1996, Proceedings of 35th IEEE Conference on Decision and Control.
[27] A. Hansson,et al. How to Solve Singular Discrete-Time Riccati Equations , 1996 .
[28] Rolf Johansson,et al. Stochastic theory of continuous-time state-space identification , 1997, Proceedings of the 36th IEEE Conference on Decision and Control.
[29] Michel Verhaegen,et al. Continuous-Time Identification of MIMO State-Space Models from Sampled Data , 1997 .