Article ID Journal Published Year Pages File Type
10265686 Computers & Chemical Engineering 2005 10 Pages PDF
Abstract
Contaminant particles suspended in polymer melts flowing through an extruder can result in film defects which ruin film performance and appearance. In-line monitoring of the polymer melt using a specialized camera system provides images which can be used to anticipate and potentially diagnose the cause of such defects. However, image interpretation is sensitive to changes in image quality. Development of a practical method for adapting to such changes during an extrusion operation and automatically distinguish images containing contaminant particles from those that do not, was the objective of this work. This was accomplished off-line by using a database of about 6000 in-line acquired images and a very recently developed adaptive machine learning method employing a Bayesian model. Performance, robustness, structure complexity and computational time considerations are examined.
Related Topics
Physical Sciences and Engineering Chemical Engineering Chemical Engineering (General)
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