This paper is focused on the development of non-linear neural models able to provide appropriate predictions when acting as process simulators. Parallel identification models can be used for this purpose. However, in this work it is shown that since the parameters of parallel identification models are estimated using multilayer feed-forward networks, the approximation of dynamic systems could be not suitable. The solution proposed in this work consists of building up parallel models using a particular recurrent neural network. This network allows to identify the parameter sets of the parallel model in order to generate process simulators. Hence, it is possible to guarantee better dynamic predictions. The dynamic behaviour of the heat transf...
Parametric and non-parametric models suitable for the description of the processes, which are statio...
Reactor temperature control is very important as it affects chemical process operations and the prod...
The goal of this article is to study the interest of neural networks to simulate the dynamic behavio...
This paper is focused on the development of non-linear neural models able to provide appropriate pre...
This paper is focused on the development of nonlinear models, using artificial neural networks, able...
Artificial Neural Networks (ANNs) have become a popular tool for identification and control of nonli...
Although the non-linear modelling capability of neural networks is widely accepted there remain many...
Recently, the use of control strategies based upon inverse process models for non-linear systems has...
This work presents a dynamic neural network based (DNN) system identification approach for a pressur...
Vita.The objective of this research is to develop a nonlinear empirical model structure and an assoc...
Some chemical plants such as plug-flow tubular reactors have highly nonlinear behavior. Such process...
A recurrent multilayer perceptron (RMLP) model is designed and developed for simulation of core neut...
Although nonlinear inverse and predictive control techniques based on artificial neural networks hav...
The use of inverse-model-based control strategy for nonlinear system has been increasing lately. How...
International audienceThe purpose of this chapter is to review the main applications of neural netwo...
Parametric and non-parametric models suitable for the description of the processes, which are statio...
Reactor temperature control is very important as it affects chemical process operations and the prod...
The goal of this article is to study the interest of neural networks to simulate the dynamic behavio...
This paper is focused on the development of non-linear neural models able to provide appropriate pre...
This paper is focused on the development of nonlinear models, using artificial neural networks, able...
Artificial Neural Networks (ANNs) have become a popular tool for identification and control of nonli...
Although the non-linear modelling capability of neural networks is widely accepted there remain many...
Recently, the use of control strategies based upon inverse process models for non-linear systems has...
This work presents a dynamic neural network based (DNN) system identification approach for a pressur...
Vita.The objective of this research is to develop a nonlinear empirical model structure and an assoc...
Some chemical plants such as plug-flow tubular reactors have highly nonlinear behavior. Such process...
A recurrent multilayer perceptron (RMLP) model is designed and developed for simulation of core neut...
Although nonlinear inverse and predictive control techniques based on artificial neural networks hav...
The use of inverse-model-based control strategy for nonlinear system has been increasing lately. How...
International audienceThe purpose of this chapter is to review the main applications of neural netwo...
Parametric and non-parametric models suitable for the description of the processes, which are statio...
Reactor temperature control is very important as it affects chemical process operations and the prod...
The goal of this article is to study the interest of neural networks to simulate the dynamic behavio...