Although the non-linear modelling capability of neural networks is widely accepted there remain many issues to be addressed relating to the design of a successful identification experiment. In particular, the choices of process excitation signal, data sample time and neural network model structure all contribute to the success, or failure, of a neural network's ability to reliably approximate the dynamic behaviour of a process. This paper examines the effects of these design considerations in an application of a multi-layered perceptron neural network to identifying the non-linear dynamics of a simulated pH process. The importance of identification experiment design for obtaining a network capable of both accurate single step and long range...
this investigation aims to provide an overview and investigations of non-linear identification syste...
Certain properties of the back-propagation neural network have been found to be potentially useful i...
In this report some examples on system identification of non-linear systems with neural networks are...
Although the non-linear modelling capability of neural networks is widely accepted there remain many...
his paper looks at the selection of some of the design parameters which are crucially important for ...
To investigate an ability of system identification in difficult operating conditions. A simulation b...
Artificial neural networks are empirical models which adjust their internal parameters, using a suit...
Linear identification and control strategies suffer from the inadequacy of capturing the inherently ...
In this paper an alternative approach to black-box identification of non-linear dynamic systems is c...
Recent years has seen the emergence of a new paradigm in system’s identification known as Artifici...
In industry process control, the model identification of nonlinear systems are always difficult prob...
In this paper an alternative approach to black-box identification of non-linear dynamic systems is c...
This paper is focused on the development of non-linear neural models able to provide appropriate pre...
Two methods for representing data in a multi-layer perceptron (MLP) neural network are described and...
Modelling allows to simulate the behavior of a system for a variety of initial conditions,excitation...
this investigation aims to provide an overview and investigations of non-linear identification syste...
Certain properties of the back-propagation neural network have been found to be potentially useful i...
In this report some examples on system identification of non-linear systems with neural networks are...
Although the non-linear modelling capability of neural networks is widely accepted there remain many...
his paper looks at the selection of some of the design parameters which are crucially important for ...
To investigate an ability of system identification in difficult operating conditions. A simulation b...
Artificial neural networks are empirical models which adjust their internal parameters, using a suit...
Linear identification and control strategies suffer from the inadequacy of capturing the inherently ...
In this paper an alternative approach to black-box identification of non-linear dynamic systems is c...
Recent years has seen the emergence of a new paradigm in system’s identification known as Artifici...
In industry process control, the model identification of nonlinear systems are always difficult prob...
In this paper an alternative approach to black-box identification of non-linear dynamic systems is c...
This paper is focused on the development of non-linear neural models able to provide appropriate pre...
Two methods for representing data in a multi-layer perceptron (MLP) neural network are described and...
Modelling allows to simulate the behavior of a system for a variety of initial conditions,excitation...
this investigation aims to provide an overview and investigations of non-linear identification syste...
Certain properties of the back-propagation neural network have been found to be potentially useful i...
In this report some examples on system identification of non-linear systems with neural networks are...