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Development of a flexible data management system, to implement predictive maintenance in the Industry 4.0 context

Article dans une revue avec comité de lecture
Auteur
CIANCIO, Vincent
107452 Laboratoire de Conception Fabrication Commande [LCFC]
ccHOMRI, Lazhar
107452 Laboratoire de Conception Fabrication Commande [LCFC]
ccDANTAN, Jean-Yves
107452 Laboratoire de Conception Fabrication Commande [LCFC]
ccSIADAT, Ali
107452 Laboratoire de Conception Fabrication Commande [LCFC]

URI
http://hdl.handle.net/10985/24244
DOI
10.1080/00207543.2023.2217293
Date
2023-06
Journal
International Journal of Production Research

Résumé

In recent years, the way that maintenance is carried out has evolved due to the incorporation of digital tools and Industry 4.0 concepts. By connecting to and communicating with their production system, companies can now gather information about the current and future health of the equipment, enabling more efficient control through a process called predictive maintenance (PdM). The goal of PdM is to reduce unplanned downtimes and proactively address maintenance needs before failures occur. However, it can be challenging for industrial practitioners to implement an intelligent maintenance system that effectively manages data. This paper presents a methodology for developing and implementing a PdM system in the automotive industry, using open standards and scalable data management capabilities. The platform is validated through the presentation of two industry use cases.

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LCFC_IJPR_2023_CIANCIO.pdf
Taille:
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Format:
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Fin d'embargo:
2024-01-01
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