JAPAN TAPPI JOURNAL
Online ISSN : 1881-1000
Print ISSN : 0022-815X
ISSN-L : 0022-815X
Using Neural Networks to Diagnose Web Breaks on a Newsprint Paper Machine
Takanori MiyanishiHirotaka Shimada
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1999 Volume 53 Issue 2 Pages 157-163

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Abstract
Artficial neural networks hold great promise for solving problems that have been extremely difficult to solve using conventional methods. We used an artificial neural network to diagnose paper web breaks on a commercial newsprint paper machine. Process data for pulping and papermaking operations were collected from paper machine's distributed control system. Additional data were obtained from on-line wet end sensors (zeta potential, first pass retention, conductivity and pH) that were installed for this study. The essential variables contributing to paper web breaks were extracted using a three-stage multilayer neural network and back-propagation method. Great savings of production costs were achieved : the number of web breaks was reduced, fiber loss in the effluent was decreased, and operators spent less time cleaning, rethreading, and restarting the paper machine.
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© Japan Technical Association of the Pulp and Paper lndustry
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