Title of article :
Developing a robust model predictive
controlar chitecture through regional
knowledge analysis of artificial neural
networks
Author/Authors :
P.-F. Tsai، نويسنده , , J.-Z. Chu، نويسنده , , S.-S. Jang and
S.-S. Shieh، نويسنده ,
Abstract :
Chemical processes are nonlinear. Model based control schemes such as model predictive control are highly related to the accuracy
of the process model. For a highly nonlinear chemical system, it is clear to implement a nonlinear empirical model, such as
artificial neural network model, should be superior to a linear model such as dynamic matrix model. However, unlike linear systems,
the accuracy of a nonlinear empirical model strongly depends on its original data or training data based on how the model is
built up. A regional-knowledge index is proposed in this study and applied in the analysis of dynamic artificial neural network
models in process control. New input patterns that imply extrapolations and thus unreliable prediction by an artificial neural network
model can be recognized from a significant decrease in the regional-knowledge index. To tackle the extrapolation problem and
assure stability of the control system, we propose to run a neural adaptive controller in parallel with a model predictive control. A
coordinator weights the outputs of these two controllers to make the final control decision. The present state of the controlled
process and the model fitness to the present input pattern determine the weightings of the controller’s output. The proposed analysis
method and the modified model predictive control architecture have been applied to a neutralization process and excellent control
performance is observed in this highly nonlinear system.
Keywords :
Regional knowledge analysis , Model predictive control , Artificial neural networks , Robust control , Neutralizationprocess , neural adaptive control
Journal title :
Astroparticle Physics