The problem of dynamic errors-in-variable identification is studied in this paper. We investigate asymptotic convergence properties of the previous bias-eliminating algorithms. We first derive an error dynamic equation for the bias-eliminating parameter estimates. We then show that the asymptotic convergence of the bias-eliminating algorithms is basically determined by the eigenvalue of the largest magnitude of a system matrix in the estimation error dynamic equation. Moreover, the bias-eliminating algorithms possess desired convergence when all the eigenvalues of the system matrix in the estimation error dynamic equation fall strictly inside the unit circle. Given possible divergence of the iteration-type bias-eliminating algorithms under ...
The least squares parametric system identification algorithm is analyzed assuming that the noise is ...
The problem of identifying dynamic errors-in-variables models is of fundamental interest in many are...
A novel direct approach for identifying continuous-time linear dynamic errors-in-variables models is...
This paper considers the problem of dynamic errors-in-variables identification. Convergence properti...
Identification of dynamic errors-in-variables systems, where both inputs and outputs are affected by...
The bias-eliminating least squares (BELS) method is one of the consistent estimators for identifying...
This paper studies the convergence of the least-squares identification algorithm with a variable for...
none1noThis paper proposes a bias-eliminating least-squares (BELS) approach for identifying linear d...
This paper studies the convergences of the least-squares identification algorithm with variable forg...
The bias-eliminating least squares (BELS) method is one of the consistent estimators for identifying...
This note considers the bias-eliminating least squares (BELS) method for identifying the errors-in-v...
This paper considers the problem of identifying linear systems, where the input is observed in white...
The basic least squares method for identifying linear systems has been extensively studied. Conditio...
In this paper a modified identification algorithm for linear systems with noisy input-output data is...
Key Wools--Error analysis; identification; least squares estimation. Al~trad--The least squares para...
The least squares parametric system identification algorithm is analyzed assuming that the noise is ...
The problem of identifying dynamic errors-in-variables models is of fundamental interest in many are...
A novel direct approach for identifying continuous-time linear dynamic errors-in-variables models is...
This paper considers the problem of dynamic errors-in-variables identification. Convergence properti...
Identification of dynamic errors-in-variables systems, where both inputs and outputs are affected by...
The bias-eliminating least squares (BELS) method is one of the consistent estimators for identifying...
This paper studies the convergence of the least-squares identification algorithm with a variable for...
none1noThis paper proposes a bias-eliminating least-squares (BELS) approach for identifying linear d...
This paper studies the convergences of the least-squares identification algorithm with variable forg...
The bias-eliminating least squares (BELS) method is one of the consistent estimators for identifying...
This note considers the bias-eliminating least squares (BELS) method for identifying the errors-in-v...
This paper considers the problem of identifying linear systems, where the input is observed in white...
The basic least squares method for identifying linear systems has been extensively studied. Conditio...
In this paper a modified identification algorithm for linear systems with noisy input-output data is...
Key Wools--Error analysis; identification; least squares estimation. Al~trad--The least squares para...
The least squares parametric system identification algorithm is analyzed assuming that the noise is ...
The problem of identifying dynamic errors-in-variables models is of fundamental interest in many are...
A novel direct approach for identifying continuous-time linear dynamic errors-in-variables models is...