The deterministic identification of Hammerstein systems is investigated in this paper. Based on the over-sampling technique, a new deterministic identification approach is presented, which blindly identifies the linear dynamic part followed by the estimation of the nonlinear function. The proposed method allows us to identify the Hammerstein system using an over-sampling rate smaller than the numerator polynomial's length of the linear dynamic part as required by other existing methods. In addition, it can obtain the true values of the system parameters in the noise-free case and an asymptotically consistent estimate in the presence of noise. The richness condition of the system input and the selection of the over-sampling rate are studied ...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
A novel approach is presented for the analysis and design of identification algorithms for Hammerste...
© 2016 EUCA. In this paper a new system identification approach for Hammerstein systems is proposed....
The Hammerstein and Wiener models are nonlinear representations od systems composed by the coupling ...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
This article proposes a new approach to identification of Hammerstein systems, where a non-linearity...
A new identification algorithm is introduced for the Hammerstein model consisting of a nonlinear sta...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
A novel approach is presented for the analysis and design of identification algorithms for Hammerste...
© 2016 EUCA. In this paper a new system identification approach for Hammerstein systems is proposed....
The Hammerstein and Wiener models are nonlinear representations od systems composed by the coupling ...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
This article proposes a new approach to identification of Hammerstein systems, where a non-linearity...
A new identification algorithm is introduced for the Hammerstein model consisting of a nonlinear sta...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...
Hammerstein systems are the series composition of a static nonlinear function and a linear dynamic s...