World Congress on Medical Physics and Biomedical Engineering -- AUG 27-SEP 01, 2006 -- Seoul, SOUTH KOREAWOS: 000260855900001Both neural networks (NN) and Volterra series (VS) are widely used in nonlinear dynamic system identification. In VS approach, the system is modeled using a set of kernel functions that correspond to different order convolutions. Kernels in VS are typically estimated using an orthogonal expansion technique. In this study, we discuss the method of obtaining VS representation of nonlinear systems from their NN models as an alternative approach and compare its modeling performances against the popular Laguerre basis expansion (LBE) technique. In LBE approach, the critical issues are to select a suitable pole parameter an...
A Volterra series approach was applied to the identification of nonlinear systems which are describe...
International audienceDiscrete-time Volterra models are widely used in various application areas. Th...
Volterra models allow modeling nonlinear dynamical systems, even though they require the estimation ...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an elec...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an elec...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an ele...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an ele...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an ele...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an ele...
Abstract. We have developed a Neural Network model able to reproduce some nonlinear characteristics ...
The Volterra series model is a direct generalisation of the linear convolution integral and is capab...
If an empirically derived dynamical model adequately reproduces the observed dynamic behaviour of th...
Volterra series expansions are widely used in analysing and solving the problems of nonlinear dynami...
Abstract- Identification of nonlinear dynamic systems using the Volterra-Wiener approach requires th...
Volterra series representation of nonlinear systems is a mathematical analysis tool that has been su...
A Volterra series approach was applied to the identification of nonlinear systems which are describe...
International audienceDiscrete-time Volterra models are widely used in various application areas. Th...
Volterra models allow modeling nonlinear dynamical systems, even though they require the estimation ...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an elec...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an elec...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an ele...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an ele...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an ele...
We have developed a Neural Network model able to reproduce some nonlinear characteristics of an ele...
Abstract. We have developed a Neural Network model able to reproduce some nonlinear characteristics ...
The Volterra series model is a direct generalisation of the linear convolution integral and is capab...
If an empirically derived dynamical model adequately reproduces the observed dynamic behaviour of th...
Volterra series expansions are widely used in analysing and solving the problems of nonlinear dynami...
Abstract- Identification of nonlinear dynamic systems using the Volterra-Wiener approach requires th...
Volterra series representation of nonlinear systems is a mathematical analysis tool that has been su...
A Volterra series approach was applied to the identification of nonlinear systems which are describe...
International audienceDiscrete-time Volterra models are widely used in various application areas. Th...
Volterra models allow modeling nonlinear dynamical systems, even though they require the estimation ...