4.7 Article

Toward Zero Defect Manufacturing with the support of Artificial Intelligence-Insights from an industrial application

Journal

COMPUTERS IN INDUSTRY
Volume 147, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.compind.2023.103877

Keywords

Smart production; Quality 4; 0; Machine learning; Data -driven decision; Quality control; Defect detection

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The combination of Zero Defect Manufacturing (ZDM) concept and Artificial Intelligence (AI) provides new opportunities for improved quality management and advanced problem-solving. However, there is a lack of applied research in industrial plants for the widespread deployment of this framework. This article applies AI in an industrial case study to develop application insights and identify prerequisites for achieving ZDM. The study identifies four prerequisites and insights critical to developing an AI solution supporting ZDM.
The Zero Defect Manufacturing (ZDM) concept combined with Artificial Intelligence (AI), a key enabling technology, opens up new opportunities for improved quality management and advanced problem-solving. However, there is a lack of applied research in industrial plants that would allow for the widespread deployment of this framework. Thus, the purpose of this article was to apply AI in an industrial application in order to develop application insights and identify the necessary prerequisites for achieving ZDM. A case study was done at a Swedish manufacturing plant to evaluate the implementation of a defect-detection strategy on products prone to misclassification and on an imbalanced data set with very few defects. A semi-supervised learning approach was used to learn which vibration properties differentiate confirmed defects from approved products. This method enabled the calculation of a defect similarity ratio that was used to predict how similar newly manufactured products are to defective products. This study identified four prerequisites and four insights critical for the development of an AI solution supporting ZDM. The key finding demonstrates how well traditional and innovative quality methods complement one another. The results highlight the importance of starting data science projects quickly to ensure data quality and allow a ZDM detection strategy to build knowledge to allow for the development of more proactive strategies, such as the prediction and prevention of defects.

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