Estimation of a monomer concentration of an ethylene polymerization process has been a challenging problem due to its highly nonlinear behavior and interaction among state variables. Applying of an extended Kalman filter (EKF) to provide the estimates of the concentration based on measured bed temperatures has usually been prone to errors. Here, alternatively, neural network-based hybrid estimators have been developed and classified into three structures which integrating of either EKF or Kalman filter (KF) to neural network (NN) to provide the estimates. The NNs are integrated to provide the estimates’ error or concentration’s estimates corresponding to individual structure for reducing the estimation error. Simulation results have shown ...
Neural networks currently play a major role in the modeling, control and optimization of polymerizat...
The inability to measure product quality in polymerisation industries on-line causes major difficult...
In this work, the utilization of neural network in hybrid with first principle models for modelling ...
One of the major challenges in polymerization industry is the lack of online instruments to measure ...
Nonlinear process control is a challenging research topic at present. In recent years, neural networ...
Thesis (Sarjana Pendidikan (Pengajaran Bahasa Inggeris sebagai Bahasa Kedua)) - Universiti Teknologi...
A major problem that affects the quality control of polymer in the industrial polymerization is the ...
To properly control emulsion polymerization reactions in a closed loop procedure, it is necessary to...
Modelling polymerization processes involves considerable uncertainties due to the intricate polymeri...
Polymerization processes are important industrial processes where the polymer product can be made in...
This thesis is about the application of Artificial Neural Network (ANN) and Partial Least Square (PL...
The needs for effective control performance in the face of highly process interactions have call for...
Measurement difficulty is one of the process control issues arising from the complexity and the lack...
Artificial Neural Networks (ANN) have demonstrated to be powerful tools to model non linear systems,...
Methyl methacrylate (MMA) production in an exothermic batch reactor provides a challenging problem f...
Neural networks currently play a major role in the modeling, control and optimization of polymerizat...
The inability to measure product quality in polymerisation industries on-line causes major difficult...
In this work, the utilization of neural network in hybrid with first principle models for modelling ...
One of the major challenges in polymerization industry is the lack of online instruments to measure ...
Nonlinear process control is a challenging research topic at present. In recent years, neural networ...
Thesis (Sarjana Pendidikan (Pengajaran Bahasa Inggeris sebagai Bahasa Kedua)) - Universiti Teknologi...
A major problem that affects the quality control of polymer in the industrial polymerization is the ...
To properly control emulsion polymerization reactions in a closed loop procedure, it is necessary to...
Modelling polymerization processes involves considerable uncertainties due to the intricate polymeri...
Polymerization processes are important industrial processes where the polymer product can be made in...
This thesis is about the application of Artificial Neural Network (ANN) and Partial Least Square (PL...
The needs for effective control performance in the face of highly process interactions have call for...
Measurement difficulty is one of the process control issues arising from the complexity and the lack...
Artificial Neural Networks (ANN) have demonstrated to be powerful tools to model non linear systems,...
Methyl methacrylate (MMA) production in an exothermic batch reactor provides a challenging problem f...
Neural networks currently play a major role in the modeling, control and optimization of polymerizat...
The inability to measure product quality in polymerisation industries on-line causes major difficult...
In this work, the utilization of neural network in hybrid with first principle models for modelling ...