Title :
Bayesian model mixing for cold rolling mills: Test results
Author :
Ettler, Pavel ; Puchr, Ivan ; Dedecius, Kamil
Author_Institution :
COMPUREG Plzen, s.r.o., Plzen, Czech Republic
Abstract :
The contribution presents the results of a collaborative R&D effort of two private companies and two national research institutions, joined at the European level. It was aimed to develop an enhanced on-line predictor of the strip thickness in the rolling gap. The issue dealt with is the absence of a reliable delay-free measurement of the outgoing strip thickness or the gap size, making the thickness control a challenging task. Although several satisfactory solutions have been used for decades, and modern control theory has been exploited as well, the pervasive competition in the field of metal strip processing emphasizes the need of a novel, more precious measuring method. The solution developed within the completed project is based on a parallel run of several adaptive Bayesian predictors whose outputs are continuously mixed to provide the best available rolling gap size prediction. The system was already tested in open loop in a real industrial environment for two reversing cold rolling mills processing steel and copper alloys strips, respectively.
Keywords :
Bayes methods; adaptive control; cold rolling; research initiatives; rolling mills; steel manufacture; strips; thickness control; Bayesian model mixing; adaptive Bayesian predictors; automatic gauge control; cold rolling mills; collaborative R and D effort; control theory; copper alloys; delay-free measurement; metal strip processing; open loop systems; rolling gap size prediction; steel alloys; strip thickness control; Adaptation models; Bayes methods; Computational modeling; Estimation; Predictive models; Strips; Thickness measurement;
Conference_Titel :
Process Control (PC), 2013 International Conference on
Conference_Location :
Strbske Pleso
Print_ISBN :
978-1-4799-0926-1
DOI :
10.1109/PC.2013.6581437