Nonlinear system identification by means of wavelet-based neural networks (WBNNs) is presented. An iterative method is proposed, based on a way of combining genetic algorithms (GAs) and least-square techniques with the aim of avoiding redundancy in the representation of the function. GAs are used for optimal selection of the structure of the WBNN and the parameters of the transfer function of its neurones. Least-square techniques are used to update the weights of the net. The basic criterion of the method is the addition of a new neurone, at a generic step, to the already constructed WBNN so that no modification to the parameters of its neurones is required. Simulation experiments and comparison with neural nets having different activation ...
Abstract-- The integration of wavelet theory into soft computing have recently attracted great inter...
A nonlinear black-box structure for a dynamical system is a model structure that is prepared to desc...
This paper proposes a nonlinear regression structure comprising a wavelet network and a linear term....
Abstract: In this study, identification of a nonlinear function will be presented by neural network ...
The wavelet network has been introduced as a special feedforward neural network supported by the wav...
Abstract—A new class of wavelet networks (WNs) is proposed for nonlinear system identification. In t...
A new class of wavelet networks (WN's) is proposed for nonlinear system identification. In the new n...
In this study, the application of Recurrent Artificial Neural Network (RANN) in nonlinear system ide...
A new class of wavelet networks (WN's) is proposed for nonlinear system identification. In the new n...
A new class of wavelet networks (WNs) is proposed for nonlinear system identification. In the new ne...
We consider identification of distributed systems via adaptive wavelet neural networks (AWNNs). We t...
This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations o...
This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations o...
This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations o...
This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations o...
Abstract-- The integration of wavelet theory into soft computing have recently attracted great inter...
A nonlinear black-box structure for a dynamical system is a model structure that is prepared to desc...
This paper proposes a nonlinear regression structure comprising a wavelet network and a linear term....
Abstract: In this study, identification of a nonlinear function will be presented by neural network ...
The wavelet network has been introduced as a special feedforward neural network supported by the wav...
Abstract—A new class of wavelet networks (WNs) is proposed for nonlinear system identification. In t...
A new class of wavelet networks (WN's) is proposed for nonlinear system identification. In the new n...
In this study, the application of Recurrent Artificial Neural Network (RANN) in nonlinear system ide...
A new class of wavelet networks (WN's) is proposed for nonlinear system identification. In the new n...
A new class of wavelet networks (WNs) is proposed for nonlinear system identification. In the new ne...
We consider identification of distributed systems via adaptive wavelet neural networks (AWNNs). We t...
This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations o...
This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations o...
This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations o...
This is a tutorial about nonparametric nonlinear system identification. Advantages and limitations o...
Abstract-- The integration of wavelet theory into soft computing have recently attracted great inter...
A nonlinear black-box structure for a dynamical system is a model structure that is prepared to desc...
This paper proposes a nonlinear regression structure comprising a wavelet network and a linear term....