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Classification of causes for plastic product defects by machine learning and application for the training of workers

机译:塑料产品缺陷的原因分类通过机器学习和培训工人培训

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In recent years, with the maturing of society and advances in technology, consumers' demand for manufacturing has been increasing. Of particular note in demand is the appearance quality of the product. Under visual inspection at the time of manufacture, skilled workers have classified the causes of defects in the product's appearance according to their experience and have dealt with them quickly. Due to a serious shortage of workers and the aging of skilled workers, there are many opportunities for inexperienced workers, such as foreign technical interns, to take charge of the work at manufacturing sites. While introducing "automatic visual inspection by a camera," the authors have developed a system that can automatically classify the causes of defects. Also, when the classification work was carried out for the inexperienced workers, the application to the education was seen. The authors propose a classification method based on machine learning with skilled workers' knowledge. This paper analyzes the process of classifying production data into the causes of contaminated products (CP) by skilled workers. First, the occurrence interval of CP was divided into sparse or dense groups. Second, a decision tree learned from causes' labels with a skilled worker was developed as a group label classifier (GLC). When production data were used to validate the prediction capability, high accurate predictions were obtained. This indicates that even inexperienced workers can take measures according to the cause of product defects during production, which is useful for the education of field workers by the GLC.
机译:近年来,随着社会的成熟和技术进步,消费者对制造的需求一直在增加。特定的注意事项是产品的外观质量。根据在制造时的视觉检查下,熟练工人根据自己的经验分类了产品外观中的缺陷原因,并迅速处理了它们。由于工人的严重短缺和技术工人的老龄化,有许多机会为外国技术实习生如外国技术实习生,负责在制造地点的工作。在介绍“通过相机自动视觉检查”时,作者开发了一种系统,可以自动对缺陷的原因进行分类。此外,当对未经经验的工人进行分类工作时,可以看到对教育的申请。作者提出了一种基于机器学习的分类方法,具有熟练工人的知识。本文分析了通过技术工人将生产数据分类为污染产品(CP)的原因的过程。首先,CP的发生间隔被分成稀疏或致密的基团。其次,从原因与熟练工人的标签学习的决策树是由组标签分类器(GLC)开发的。当生产数据用于验证预测能力时,获得了高精度的预测。这表明甚至没有经验的工人可以根据生产过程中产品缺陷的原因采取措施,这对于GLC的现场工人的教育有用。

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