The identification difficulties for a dual-rate Hammerstein system lie in two aspects. First, the identification model of the system contains the products of the parameters of the nonlinear block and the linear block, and a standard least squares method cannot be directly applied to the model; second, the traditional single-rate discrete-time Hammerstein model cannot be used as the identification model for the dual-rate sampled system. In order to solve these problems, by combining the polynomial transformation technique with the key variable separation technique, this paper converts the Hammerstein system into a dual-rate linear regression model about all parameters (linear-in-parameter model) and proposes a recursive least squares algorit...
Different from the output-input representation based identification methods of two-block Hammerstein...
Different from the output-input representation based identification methods of two-block Hammerstein...
Standard Hammerstein-Wiener models consist of a linear subsystem sandwiched by two memoryless nonlin...
The identification difficulties for a dual-rate Hammerstein system lie in two aspects. First, the id...
Generally, memoryless polynomial nonlinear model for nonlinear part and finite impulse response (FIR...
Generally, memoryless polynomial nonlinear model for nonlinear part and finite impulse response (FIR...
In literature, various linear and nonlinear model structures are defined to identify the systems. Li...
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...
Abstract. The aim of the given paper is the development of an approach for parametric identifi-catio...
This paper deals with the problem of estimating the parameters of Hammerstein systems based on recur...
An algorithm for the identification of non-linear systems which can be described by a Hammerstein mo...
System identification is very important to technical and nontechnical areas. All physical systems ar...
The deterministic identification of Hammerstein systems is investigated in this paper. Based on the ...
An algorithm for the identification of non-linear systems which can be described by a Hammerstein mo...
Different from the output-input representation based identification methods of two-block Hammerstein...
Different from the output-input representation based identification methods of two-block Hammerstein...
Standard Hammerstein-Wiener models consist of a linear subsystem sandwiched by two memoryless nonlin...
The identification difficulties for a dual-rate Hammerstein system lie in two aspects. First, the id...
Generally, memoryless polynomial nonlinear model for nonlinear part and finite impulse response (FIR...
Generally, memoryless polynomial nonlinear model for nonlinear part and finite impulse response (FIR...
In literature, various linear and nonlinear model structures are defined to identify the systems. Li...
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...
Abstract. The aim of the given paper is the development of an approach for parametric identifi-catio...
This paper deals with the problem of estimating the parameters of Hammerstein systems based on recur...
An algorithm for the identification of non-linear systems which can be described by a Hammerstein mo...
System identification is very important to technical and nontechnical areas. All physical systems ar...
The deterministic identification of Hammerstein systems is investigated in this paper. Based on the ...
An algorithm for the identification of non-linear systems which can be described by a Hammerstein mo...
Different from the output-input representation based identification methods of two-block Hammerstein...
Different from the output-input representation based identification methods of two-block Hammerstein...
Standard Hammerstein-Wiener models consist of a linear subsystem sandwiched by two memoryless nonlin...