The problem of identifying dynamic errors-in-variables models is of fundamental interest in many areas like process control, array signal processing, astronomical data reduction. In recent years, this field has received increased attention of the research community. In this thesis, some time domain and frequency domain approaches for identifying the errors-in-variables model is studied. The first chapter gives an overview of various methods for identifying dynamic errors-in-variables systems. Several approaches are classified and a qualitative comparison of different existing methods is also presented. The second chapter deals with instrumental variables based approaches. The least squares and the total least squares methods of solving the ...
This paper proposes a new method for identifying ARMA models in the presence of additive white noise...
none2siThe paper proposes a new frequency domain method for identifying linear dynamic errors-in-var...
This paper deals with the problem of identifying linear errors-in-variables (EIV) models corrupted b...
The problem of identifying dynamic errors-in-variables models is of fundamental interest in many are...
Identification of dynamic errors-in-variables systems, where both inputs and outputs are affected by...
none3A new method for identifying linear dynamic errors-in-variables (EIV) models, whose input and o...
The use of periodic excitation signals in identification experiments is advocated. With periodic exc...
A novel direct approach for identifying continuous-time linear dynamic errors-in-variables models is...
Abstract: Using instrumental variable methods to estimate the parameters of dynamic errors-in-variab...
Errors-in-variables models are statistical models in which not only dependent but also independent v...
In this paper, the problem of identifying linear discrete-time systems from noisy input and output d...
The paper proposes a new approach for identifying linear dynamic errors–in–variables (EIV) models, w...
We study the problem of system identification for the errors-in-variables (EIV) model, based on nois...
The problem of dynamic errors-in-variable identification is studied in this paper. We investigate as...
Identification of linear dynamic systems from input–output data has been a subject of study for seve...
This paper proposes a new method for identifying ARMA models in the presence of additive white noise...
none2siThe paper proposes a new frequency domain method for identifying linear dynamic errors-in-var...
This paper deals with the problem of identifying linear errors-in-variables (EIV) models corrupted b...
The problem of identifying dynamic errors-in-variables models is of fundamental interest in many are...
Identification of dynamic errors-in-variables systems, where both inputs and outputs are affected by...
none3A new method for identifying linear dynamic errors-in-variables (EIV) models, whose input and o...
The use of periodic excitation signals in identification experiments is advocated. With periodic exc...
A novel direct approach for identifying continuous-time linear dynamic errors-in-variables models is...
Abstract: Using instrumental variable methods to estimate the parameters of dynamic errors-in-variab...
Errors-in-variables models are statistical models in which not only dependent but also independent v...
In this paper, the problem of identifying linear discrete-time systems from noisy input and output d...
The paper proposes a new approach for identifying linear dynamic errors–in–variables (EIV) models, w...
We study the problem of system identification for the errors-in-variables (EIV) model, based on nois...
The problem of dynamic errors-in-variable identification is studied in this paper. We investigate as...
Identification of linear dynamic systems from input–output data has been a subject of study for seve...
This paper proposes a new method for identifying ARMA models in the presence of additive white noise...
none2siThe paper proposes a new frequency domain method for identifying linear dynamic errors-in-var...
This paper deals with the problem of identifying linear errors-in-variables (EIV) models corrupted b...