This paper presents an effective blind statistical identification technique for nonstationary nonlinear systems based on an information theoretical algorithm. This technique firstly extracts, from the output signals, the multivariate relationships in the Hilbert spaces by exploiting the separability properties of the signal outputs transformed by the Karhunen-Loeve transform (KLT). Then, the algorithm methodologically clusters the stochastic surfaces in the Hilbert spaces using the self-organizing maps (SOMs) and further develops their best statistical model under the fixed-rank condition. The resulting blind identification of the statistical system model is based on marginal probability density functions (PDFs), whose convergence to the st...
grantor: University of TorontoIn this thesis, the blind identifiability of linear subsyst...
A spectral density approach for the identification of linear systems is extended to nonlinear dynami...
Semi-blind deconvolution is the process of estimating the unknown input of a linear system, starting...
This paper presents an effective blind statistical identification technique for nonstationary nonlin...
In this paper an effective unsupervised statistical identification technique for nonstationary nonli...
This paper proposes an efficient methodology that is able to accurately recognize nondeterministic s...
System identification is of special interest in science and engineering. This article is concerned w...
International audienceThis paper presents an innovative approach to analyze the transitory response ...
This paper presents a generalization of a recognition algorithm that is able to classify non-determi...
Stochastic approximation methods for the identification of parameters of nonlinear systems without d...
It is known that an efficient approach for modal identification of a weakly nonlinear multidimension...
The objective of this paper is to present an identification procedure which is based on the use of a...
Udgivelsesdato: JuniWe propose two blind system identification methods that exploit the underlying d...
A spectral density approach for the identification of linear systems is extended to nonlinear dynamic...
Identification and Control of Non‐linear dynamical systems are challenging problems to the control e...
grantor: University of TorontoIn this thesis, the blind identifiability of linear subsyst...
A spectral density approach for the identification of linear systems is extended to nonlinear dynami...
Semi-blind deconvolution is the process of estimating the unknown input of a linear system, starting...
This paper presents an effective blind statistical identification technique for nonstationary nonlin...
In this paper an effective unsupervised statistical identification technique for nonstationary nonli...
This paper proposes an efficient methodology that is able to accurately recognize nondeterministic s...
System identification is of special interest in science and engineering. This article is concerned w...
International audienceThis paper presents an innovative approach to analyze the transitory response ...
This paper presents a generalization of a recognition algorithm that is able to classify non-determi...
Stochastic approximation methods for the identification of parameters of nonlinear systems without d...
It is known that an efficient approach for modal identification of a weakly nonlinear multidimension...
The objective of this paper is to present an identification procedure which is based on the use of a...
Udgivelsesdato: JuniWe propose two blind system identification methods that exploit the underlying d...
A spectral density approach for the identification of linear systems is extended to nonlinear dynamic...
Identification and Control of Non‐linear dynamical systems are challenging problems to the control e...
grantor: University of TorontoIn this thesis, the blind identifiability of linear subsyst...
A spectral density approach for the identification of linear systems is extended to nonlinear dynami...
Semi-blind deconvolution is the process of estimating the unknown input of a linear system, starting...