The Wiener model is a block oriented model, having a linear dynamic system followed by a static nonlinearity. The dominating approach to estimate the components of this model has been to minimize the error between the simulated and the measured outputs. We show that this will, in general, lead to biased estimates if there are other disturbances present than measurement noise. The implications of Bussgang's theorem in this context are also discussed. For the case with general disturbances, we derive the Maximum Likelihood method and show how it can be efficiently implemented. Comparisons between this new algorithm and the traditional approach, confirm that the new method is unbiased and also has superior accuracy
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
Abstract — This paper considers the identification of Wiener systems in a worst case framework. Give...
The identification of nonlinear systems by the minimization of a predictionerror criterion suffers f...
The Wiener model is a block oriented model, having a linear dynamic system followed by a static nonl...
A Wiener model consists of a linear dynamic system followed by a static nonlinearity. The input and ...
The identification task consists of making a model of a system from measured input and output signal...
Within the class of nonlinear system models, the so-called block-oriented models have gained wide re...
Wiener-type systems are widely used model structures, consisting of a series connection of a dynamic...
This paper develops and illustrates a new maximum-likelihood based method for the identification of ...
To my husband System identication deals with the problem of constructing models of sys-tems from obs...
This paper develops and illustrates a new maximum-likelihood based method for the identification of ...
Many parametric identification routines suffer from the problem with local minima. This is true also...
A Wiener model consists of a linear dynamic block followed by with a nonlinear static block. When id...
Abstract: In this paper a procedure is presented for deriving parameters bounds in SISO Wiener model...
The Wiener-Hammerstein model is a block-oriented model consisting of two linear blocks and a static ...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
Abstract — This paper considers the identification of Wiener systems in a worst case framework. Give...
The identification of nonlinear systems by the minimization of a predictionerror criterion suffers f...
The Wiener model is a block oriented model, having a linear dynamic system followed by a static nonl...
A Wiener model consists of a linear dynamic system followed by a static nonlinearity. The input and ...
The identification task consists of making a model of a system from measured input and output signal...
Within the class of nonlinear system models, the so-called block-oriented models have gained wide re...
Wiener-type systems are widely used model structures, consisting of a series connection of a dynamic...
This paper develops and illustrates a new maximum-likelihood based method for the identification of ...
To my husband System identication deals with the problem of constructing models of sys-tems from obs...
This paper develops and illustrates a new maximum-likelihood based method for the identification of ...
Many parametric identification routines suffer from the problem with local minima. This is true also...
A Wiener model consists of a linear dynamic block followed by with a nonlinear static block. When id...
Abstract: In this paper a procedure is presented for deriving parameters bounds in SISO Wiener model...
The Wiener-Hammerstein model is a block-oriented model consisting of two linear blocks and a static ...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
Abstract — This paper considers the identification of Wiener systems in a worst case framework. Give...
The identification of nonlinear systems by the minimization of a predictionerror criterion suffers f...