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首页> 外文期刊>Computers & Chemical Engineering >On-line adaptive Bayesian classification for in-line particle image monitoring in polymer film manufacturing
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On-line adaptive Bayesian classification for in-line particle image monitoring in polymer film manufacturing

机译:在线自适应贝叶斯分类,用于聚合物薄膜制造中的在线颗粒图像监控

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摘要

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.
机译:悬浮在挤出机中的聚合物熔体中的污染物颗粒会导致薄膜缺陷,从而破坏薄膜性能和外观。使用专用摄像头系统对聚合物熔体进行在线监控,可以提供图像,这些图像可用于预测并潜在地诊断出此类原因。但是,图像解释对图像质量的变化敏感。开发一种实用的方法来适应挤压操作期间的这种变化,并自动区分包含污染物颗粒的图像和不包含污染物颗粒的图像,这是本工作的目的。通过使用约6000幅在线采集图像的数据库和最近开发的采用贝叶斯模型的自适应机器学习方法完成离线操作。研究了性能,鲁棒性,结构复杂性和计算时间方面的考虑。

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