Preliminary investigations into the potential application of static feedforward neural networks in the dynamic modelling of pH in complex, time-varying systems have been carried out. To assist in network training and testing, a simplified, 'global first principles (FP) model of the pH of such systems was developed, and used successfully to simulate input output data. Neural networks with input information vectors enhanced by the introduction of auxiliary variables derived from acid-base principles were trained acid tested on this data, using both Levenberg-Marquardt (L-M) and heuristic training algorithms. Both algorithms produced good predictions, but the heuristic algorithm required data pre-treatment to minimize its error. However, it tr...
Artificial Neural Networks (ANNs) have become a popular tool for identification and control of nonli...
This paper presents a black-box dynamic model for microalgae production in raceway reactors. The bla...
This study deals with optimization techniques for pH neutralization process in order to predict the ...
The control of a neutralization process between a strong acid and a strong base has been a challengi...
Control of an experimental in-line pH process exhibiting varying nonlinearity and deadtime is descri...
This paper is concerned with the development of predictive neural network-based cascade control for ...
Combining multiple neural networks appears to be a very promising approach in improving neural netwo...
This investigation considers the application of Artificial Neural Network (ANN) techniques to estima...
International audienceThe purpose of this chapter is to review the main applications of neural netwo...
The present work reports a novel genetic algorithm (GA) based strategy for designing efficient ‘glob...
simulation and control design. The control of pH is important in many processes including wastewater...
This paper studies complex dynamic neural network learning models. Backpropagation was used to train...
[Resumen] Este trabajo se centra en el desarrollo de modelos de red neuronal para predicción de pH e...
In this research, feed forward ANN (Artificial Neural Network) model is developed and validated for ...
This thesis describes an investigation of how techniques of modelling, estimation and control can be...
Artificial Neural Networks (ANNs) have become a popular tool for identification and control of nonli...
This paper presents a black-box dynamic model for microalgae production in raceway reactors. The bla...
This study deals with optimization techniques for pH neutralization process in order to predict the ...
The control of a neutralization process between a strong acid and a strong base has been a challengi...
Control of an experimental in-line pH process exhibiting varying nonlinearity and deadtime is descri...
This paper is concerned with the development of predictive neural network-based cascade control for ...
Combining multiple neural networks appears to be a very promising approach in improving neural netwo...
This investigation considers the application of Artificial Neural Network (ANN) techniques to estima...
International audienceThe purpose of this chapter is to review the main applications of neural netwo...
The present work reports a novel genetic algorithm (GA) based strategy for designing efficient ‘glob...
simulation and control design. The control of pH is important in many processes including wastewater...
This paper studies complex dynamic neural network learning models. Backpropagation was used to train...
[Resumen] Este trabajo se centra en el desarrollo de modelos de red neuronal para predicción de pH e...
In this research, feed forward ANN (Artificial Neural Network) model is developed and validated for ...
This thesis describes an investigation of how techniques of modelling, estimation and control can be...
Artificial Neural Networks (ANNs) have become a popular tool for identification and control of nonli...
This paper presents a black-box dynamic model for microalgae production in raceway reactors. The bla...
This study deals with optimization techniques for pH neutralization process in order to predict the ...