none2siThis paper deals with the identification of errors-in-variables (EIV) models corrupted by additive and uncorrelated white Gaussian noises when the noise-free input is an arbitrary signal, not required to be periodic. In particular, a frequency domain maximum likelihood (ML) estimator is proposed and analyzed in some detail. As some other EIV estimators, this method assumes that the ratio of the noise variances is known. The estimation problem is formulated in the frequency domain. It is shown that the parameter estimates are consistent. An explicit algorithm for computing the asymptotic covariance matrix of the parameter estimates is derived. The possibility to effectively use lowpass filtered data by using only part of the frequency...
Identification of dynamic errors-in-variables systems, where both inputs and outputs are affected by...
This paper deals with the blind identification of the variances of the additive noises in a two-chan...
The paper proposes a new approach for identifying linear dynamic errors–in–variables (EIV) models, w...
This report deals with the identification of errors–in–variables (EIV) models corrupted by additive...
This paper deals with the identification of errors–in–variables (EIV) models corrupted by additive a...
This work deals with the identification of errors-in-variables models corrupted by white and uncorre...
none1noThis paper proposes a bias-eliminating least-squares (BELS) approach for identifying linear d...
This paper deals with the problem of identifying linear errors-in-variables (EIV) models corrupted b...
In this paper we develop a novel identification algorithm for Errors-in-Variables systems (represent...
none2noAbstract: The identification of Errors-in-variables (EIV) models refers to systems where the ...
none2siThe paper proposes a new frequency domain method for identifying linear dynamic errors-in-var...
This paper deals with the identification of Errors-in-Variables (EIV) models corrupted by additive ...
We study the problem of system identification for the errors-in-variables (EIV) model, based on nois...
A novel direct approach for identifying continuous-time linear dynamic errors-in-variables models is...
System identification is an established field in the area of system analysis and control. It aims at...
Identification of dynamic errors-in-variables systems, where both inputs and outputs are affected by...
This paper deals with the blind identification of the variances of the additive noises in a two-chan...
The paper proposes a new approach for identifying linear dynamic errors–in–variables (EIV) models, w...
This report deals with the identification of errors–in–variables (EIV) models corrupted by additive...
This paper deals with the identification of errors–in–variables (EIV) models corrupted by additive a...
This work deals with the identification of errors-in-variables models corrupted by white and uncorre...
none1noThis paper proposes a bias-eliminating least-squares (BELS) approach for identifying linear d...
This paper deals with the problem of identifying linear errors-in-variables (EIV) models corrupted b...
In this paper we develop a novel identification algorithm for Errors-in-Variables systems (represent...
none2noAbstract: The identification of Errors-in-variables (EIV) models refers to systems where the ...
none2siThe paper proposes a new frequency domain method for identifying linear dynamic errors-in-var...
This paper deals with the identification of Errors-in-Variables (EIV) models corrupted by additive ...
We study the problem of system identification for the errors-in-variables (EIV) model, based on nois...
A novel direct approach for identifying continuous-time linear dynamic errors-in-variables models is...
System identification is an established field in the area of system analysis and control. It aims at...
Identification of dynamic errors-in-variables systems, where both inputs and outputs are affected by...
This paper deals with the blind identification of the variances of the additive noises in a two-chan...
The paper proposes a new approach for identifying linear dynamic errors–in–variables (EIV) models, w...