Some chemical plants such as pH neutralization process have highly nonlinear behavior. Such processes demand a powerful wiener identification approach based on neural networks for identification of the nonlinear part. In this paper, the pH neutralization process is identified with NN-based wiener identification method and two linear and nonlinear model predictive controllers with the ability of rejecting slowly varying unmeasured disturbances are applied. Simulation results show that the obtained wiener model has good capability to predict the step response of the process. Parameters of both linear and nonlinear model predictive controllers are tuned and the best obtained results are compared. For this purpose, different operating points ar...
[[abstract]]©2003 Elsevier - Chemical processes are nonlinear. Model based control schemes such as m...
In order for chemical industries to take full advantage of Model Predictive Control (MPC) technique,...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Some chemical plants such as plug-flow tubular reactors have highly nonlinear behavior. Such process...
Wiener model, which is one of the structures used in the modeling of nonlinear systems, consists of ...
In this paper, Laguerre filters and simple polynomials are used respectively as linear and nonlinear...
In this paper, identification and nonlinear model predictive control of highly nonlinear plug-flow t...
this paper aims at combining powerful nonlinear modeling techniques with existing linear control tec...
grantor: University of TorontoA recent trend in the literature of nonlinear system identif...
Linear identification and control strategies suffer from the inadequacy of capturing the inherently ...
The paper provides a review of the different approaches of Model Predictive Control (MPC) to deal wi...
Many processes in the chemical industry have modest nonlinearities; i.e., linear dynamics play a dom...
The paper deals with the problem of modelling nonlinear processes using the Local Model Network (LMN...
In the process industry controlling the pH is considered to be one of the toughest tasks among the m...
The problem of identification and control of a Wiener model is studied. The proposed identification ...
[[abstract]]©2003 Elsevier - Chemical processes are nonlinear. Model based control schemes such as m...
In order for chemical industries to take full advantage of Model Predictive Control (MPC) technique,...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...
Some chemical plants such as plug-flow tubular reactors have highly nonlinear behavior. Such process...
Wiener model, which is one of the structures used in the modeling of nonlinear systems, consists of ...
In this paper, Laguerre filters and simple polynomials are used respectively as linear and nonlinear...
In this paper, identification and nonlinear model predictive control of highly nonlinear plug-flow t...
this paper aims at combining powerful nonlinear modeling techniques with existing linear control tec...
grantor: University of TorontoA recent trend in the literature of nonlinear system identif...
Linear identification and control strategies suffer from the inadequacy of capturing the inherently ...
The paper provides a review of the different approaches of Model Predictive Control (MPC) to deal wi...
Many processes in the chemical industry have modest nonlinearities; i.e., linear dynamics play a dom...
The paper deals with the problem of modelling nonlinear processes using the Local Model Network (LMN...
In the process industry controlling the pH is considered to be one of the toughest tasks among the m...
The problem of identification and control of a Wiener model is studied. The proposed identification ...
[[abstract]]©2003 Elsevier - Chemical processes are nonlinear. Model based control schemes such as m...
In order for chemical industries to take full advantage of Model Predictive Control (MPC) technique,...
Black-box modeling techniques based on artificial neural networks are opening new horizons for the m...