Author/Authors :
Parthasarathy Kesavan، نويسنده , , Jay H. Lee، نويسنده , , Victor Saucedo and Gopal A. Krishnagopalan، نويسنده ,
Title Of Article :
Partial least squares (PLS) based monitoring and control of batch digesters
Latin Abstract :
In this paper, a data-based control method for reducing product quality variations in batch pulp digesters is presented. Com-
pared to the existing techniques, the new technique uses more liquor measurements in predicting the ®nal pulp quality. The liquor
measurements obtained at dierent time instances during a cook are related to the ®nal pulp quality through a partial least squares
(PLS) regression model. In using the PLS regression model for control, two approaches are proposed. In the ®rst approach, optimal
control moves are computed directly using the PLS model, while the second approach employs a nonlinear H-factor model of which
parameters are adapted using the prediction from the PLS model. The eectiveness of the prediction and control algorithms is
examined through simulation studies. Experimental study is then performed on a lab-scale batch digester, to test the eectiveness of
the prediction performance of the PLS model. The control algorithms will be tested on the experimental set-up in the future.
NaturalLanguageKeyword :
Quality prediction and control , Pulp digester , partial least squares
JournalTitle :
Studia Iranica