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Research Article

Zero defect manufacturing: a self-adaptive defect prediction model based on assembly complexity

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Pages 155-168 | Received 20 Jun 2021, Accepted 18 May 2022, Published online: 26 May 2022
 

ABSTRACT

The prediction of defects occurring during manufacturing processes is one of the strategies to be implemented by organizations to reach the goals of Zero-Defect Manufacturing (ZDM). In low-volume productions, characterized by a high level of complexity and customization, defects prediction may be challenging owing to the small amount of historical data typically available. This paper proposes a diagnostic tool that provides an in-line identification of critical steps of assembly processes. The method is based on a self-adaptive defect prediction model of the process, updated as new data are acquired. Assembly complexity of both the process and the design are used as predictors of the defect model. The methodology identifies critical assembly workstations where the respective average defectiveness deviates from the average defectiveness predicted by the model. Detecting critical workstations facilitates quality engineers in identifying the causes of non-conformities and undertaking appropriate corrective actions. The relevance of the method is emphasized by an application to a real case study related to the assembly of rotating ring wrapping machines used in end-of-line packaging.

Acknowledgments

The authors gratefully acknowledge Tosa Group S.p.A. (Italy) for the collaboration.

Disclosure statement

No potential conflict of interest was reported by the author(s).

Additional information

Funding

This work has been partially supported by the ”Italian Ministry of Education, University and Research”, Award ”[TESUN‐83486178370409 finanziamento dipartimenti] di eccellenza CAP. 1694 TIT. 232 ART. 6”.

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