Conventional methods of estimating model parameters have difficulties with both nonlinear systems and with systems operating in noisy environments. In this paper, a modified genetic algorithm is used as a procedure to solve the parameter identification problem of the nonlinear Wiener-Hammerstein models. Numerical simulations are presented to illustrate the effectiveness of the proposed algorithm based on different input signals, and different noise-to-signal ratios of the output. Also, the algorithm is applied to model a DC generator with some nonlinear characteristic
In literature, various linear and nonlinear model structures are defined to identify the systems. Li...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
A method for black-box identification of a Wiener-Hammerstein system is described and applied to a s...
Conventional methods of estimating model parameters have difficulties with both nonlinear systems an...
Conventional methods of estimating model parameters have difficulties with both nonlinear systems an...
This paper investigates the use of genetic algorithms in the identification of linear systems with s...
Current methods to identify Wiener-Hammerstein systems using Best Linear Approximation (BLA) involve...
Recursive algorithms for parameter estimation of Wiener-Hammerstein (W-H)models are developed. These...
Several algorithms, namely the Output Error (OE), the Equation Error (EE), the Prediction Error (PE)...
The Hammerstein and Wiener models are nonlinear representations od systems composed by the coupling ...
System identification is very important to technical and nontechnical areas. All physical systems ar...
Wiener, Hammerstein, and Wiener–Hammerstein structures are useful for modelling dynamic systems that...
This paper aims to improve Hammerstein model for system identification area. Hammerstein model block...
Model predictive control or MPC can provide robust control for processes with variable gain and dyna...
This paper examines the use of a so-called "generalised Hammerstein-Wiener" model structure that is ...
In literature, various linear and nonlinear model structures are defined to identify the systems. Li...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
A method for black-box identification of a Wiener-Hammerstein system is described and applied to a s...
Conventional methods of estimating model parameters have difficulties with both nonlinear systems an...
Conventional methods of estimating model parameters have difficulties with both nonlinear systems an...
This paper investigates the use of genetic algorithms in the identification of linear systems with s...
Current methods to identify Wiener-Hammerstein systems using Best Linear Approximation (BLA) involve...
Recursive algorithms for parameter estimation of Wiener-Hammerstein (W-H)models are developed. These...
Several algorithms, namely the Output Error (OE), the Equation Error (EE), the Prediction Error (PE)...
The Hammerstein and Wiener models are nonlinear representations od systems composed by the coupling ...
System identification is very important to technical and nontechnical areas. All physical systems ar...
Wiener, Hammerstein, and Wiener–Hammerstein structures are useful for modelling dynamic systems that...
This paper aims to improve Hammerstein model for system identification area. Hammerstein model block...
Model predictive control or MPC can provide robust control for processes with variable gain and dyna...
This paper examines the use of a so-called "generalised Hammerstein-Wiener" model structure that is ...
In literature, various linear and nonlinear model structures are defined to identify the systems. Li...
This paper demonstrates the ability of Genetic Algorithms (GAs) in the identification of dynamical n...
A method for black-box identification of a Wiener-Hammerstein system is described and applied to a s...