The time cost of first-principles dynamic modelling and the complexity of nonlinear control strategies may limit successful implementation of advanced process control. The maximum return on fixed capital within the processing industries is thus compromised. This study introduces a neurocontrol methodology that uses partial system identification and symbiotic memetic neuro-evolution (SMNE) for the development of neurocontrollers. Partial system identification is achieved using singular spectrum analysis (SSA) to extract state variables from time series data. The SMNE algorithm uses a symbiotic evolutionary algorithm and particle swarm optimisation to learn optimal neurocontroller weights from the partially identified system within a reinforc...
The development of an inferential soft sensor for a pilot-plant distillation column separating an et...
AbstractIn the two-coupled distillation column process, keeping the tray temperatures within a speci...
One can derive a model for use in a Model Predictive Controller (MPC) from first principles or from ...
The growth in intelligent control is among other fuelled by the realization that nonlinear control t...
A ball mill grinding circuit is a nonlinear system characterised by significant controller interacti...
Control of a nine-stage three-component distillation column is considered. The control objective is ...
This paper presents a neural predictive controller that is applied to distillation column. Distillat...
The present work deals with studying the dynamic behavior of a batch distillation column and impleme...
In this paper authors present the results of a research that had a purpose to develop a method of co...
The distillation process is vital in many fields of chemical industries, such as the two-coupled dis...
The concept of approximate dynamic programming and adaptive critic neural network based optimal cont...
Artificial neural networks are means which are, among several other approaches, effectively usable f...
In this work advanced nonlinear neural networks based control system design algorithms are adopted t...
This paper studies complex dynamic neural network learning models. Backpropagation was used to train...
The concept of approximate dynamic programming and adaptive critic neural network based optimal cont...
The development of an inferential soft sensor for a pilot-plant distillation column separating an et...
AbstractIn the two-coupled distillation column process, keeping the tray temperatures within a speci...
One can derive a model for use in a Model Predictive Controller (MPC) from first principles or from ...
The growth in intelligent control is among other fuelled by the realization that nonlinear control t...
A ball mill grinding circuit is a nonlinear system characterised by significant controller interacti...
Control of a nine-stage three-component distillation column is considered. The control objective is ...
This paper presents a neural predictive controller that is applied to distillation column. Distillat...
The present work deals with studying the dynamic behavior of a batch distillation column and impleme...
In this paper authors present the results of a research that had a purpose to develop a method of co...
The distillation process is vital in many fields of chemical industries, such as the two-coupled dis...
The concept of approximate dynamic programming and adaptive critic neural network based optimal cont...
Artificial neural networks are means which are, among several other approaches, effectively usable f...
In this work advanced nonlinear neural networks based control system design algorithms are adopted t...
This paper studies complex dynamic neural network learning models. Backpropagation was used to train...
The concept of approximate dynamic programming and adaptive critic neural network based optimal cont...
The development of an inferential soft sensor for a pilot-plant distillation column separating an et...
AbstractIn the two-coupled distillation column process, keeping the tray temperatures within a speci...
One can derive a model for use in a Model Predictive Controller (MPC) from first principles or from ...