This paper considers the parameter estimation problem for Hammerstein multi-input multioutput finite impulse response (FIR-MA) systems. Filtered by the noise transfer function, the FIR-MA model is transformed into a controlled autoregressive model. The key-term variable separation principle is used to derive a data filtering based recursive least squares algorithm. The numerical examples confirm that the proposed algorithm can estimate parameters more accurately and has a higher computational efficiency compared with the recursive least squares algorithm
A new coupled structure identification of Multi-Input Multi-Output (MIMO) Hammerstein models with se...
Different from the output-input representation based identification methods of two-block Hammerstein...
Recursive algorithms for parameter estimation of Wiener-Hammerstein (W-H)models are developed. These...
This paper considers the parameter estimation problems of Hammerstein finite impulse response moving...
This paper studies identification problems of two-input single-output controlled autoregressive movi...
This paper discusses the parameter estimation problems of multi-input output-error autoregressive (O...
Generally, memoryless polynomial nonlinear model for nonlinear part and finite impulse response (FIR...
This paper deals with the problem of estimating the parameters of Hammerstein systems based on recur...
This paper studies the parameter estimation problems of Hammerstein output error autoregressive (OEA...
This paper studies the parameter estimation problem of Hammerstein output error autoregressive (OEAR...
AbstractThis paper considers the identification problem for Hammerstein output error moving average ...
This paper studies the identification of Hammerstein finite impulse response moving average (H-FIR-M...
In literature, various linear and nonlinear model structures are defined to identify the systems. Li...
Abstract: In this paper the instrumental variable and recursive least square algorithm for identific...
This paper uses the filtering technique, transforms a pseudo-linear auto-regressive system into an i...
A new coupled structure identification of Multi-Input Multi-Output (MIMO) Hammerstein models with se...
Different from the output-input representation based identification methods of two-block Hammerstein...
Recursive algorithms for parameter estimation of Wiener-Hammerstein (W-H)models are developed. These...
This paper considers the parameter estimation problems of Hammerstein finite impulse response moving...
This paper studies identification problems of two-input single-output controlled autoregressive movi...
This paper discusses the parameter estimation problems of multi-input output-error autoregressive (O...
Generally, memoryless polynomial nonlinear model for nonlinear part and finite impulse response (FIR...
This paper deals with the problem of estimating the parameters of Hammerstein systems based on recur...
This paper studies the parameter estimation problems of Hammerstein output error autoregressive (OEA...
This paper studies the parameter estimation problem of Hammerstein output error autoregressive (OEAR...
AbstractThis paper considers the identification problem for Hammerstein output error moving average ...
This paper studies the identification of Hammerstein finite impulse response moving average (H-FIR-M...
In literature, various linear and nonlinear model structures are defined to identify the systems. Li...
Abstract: In this paper the instrumental variable and recursive least square algorithm for identific...
This paper uses the filtering technique, transforms a pseudo-linear auto-regressive system into an i...
A new coupled structure identification of Multi-Input Multi-Output (MIMO) Hammerstein models with se...
Different from the output-input representation based identification methods of two-block Hammerstein...
Recursive algorithms for parameter estimation of Wiener-Hammerstein (W-H)models are developed. These...