Development process to bearing fault diagnostic and prognostic for the predictive maintenance era

Today, the manufacturing industry seeks to improve competitiveness by converging on new technologies to ensure a new engine of growth, moreover, systems based on IoT and artificial intelligence are increasingly used in this convergence. This new industry must meet the challenges of productivity and...

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Main Authors: Bouyahrouzi El Mahdi, El Kihel Bachir
Format: Article
Language:English
Published: EDP Sciences 2022-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2022/18/e3sconf_icies2022_01036.pdf
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author Bouyahrouzi El Mahdi
El Kihel Bachir
author_facet Bouyahrouzi El Mahdi
El Kihel Bachir
author_sort Bouyahrouzi El Mahdi
collection DOAJ
description Today, the manufacturing industry seeks to improve competitiveness by converging on new technologies to ensure a new engine of growth, moreover, systems based on IoT and artificial intelligence are increasingly used in this convergence. This new industry must meet the challenges of productivity and competitiveness to interconnect the physical and digital world in which machines, information systems, and products communicate permanently, all to reduce consumers and maintain productivity gains and optimize them in terms of energy consumed reduced breakdowns... This article presents an original and innovative contribution. A new model has been proposed that summarizes an approach based on machine learning, intending to perform predictive maintenance based on artificial neural networks, considering the values acquired by sensors in real-time, it allows us a fast and very low implementation of predictive maintenance, particularly important for companies. The model is validated in real situations. The results show a very high level of accuracy.
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spelling doaj.art-ee2aced527034f8399a48f5df889758d2022-12-22T00:14:09ZengEDP SciencesE3S Web of Conferences2267-12422022-01-013510103610.1051/e3sconf/202235101036e3sconf_icies2022_01036Development process to bearing fault diagnostic and prognostic for the predictive maintenance eraBouyahrouzi El Mahdi0https://orcid.org/0000-0003-3404-8160El Kihel Bachir1Laboratory of Industrial Engineering and Seismic Engineering, ENSA National School of Applied Sciences Oujda, Mohammed Premier UniversityLaboratory of Industrial Engineering and Seismic Engineering, ENSA National School of Applied Sciences Oujda, Mohammed Premier UniversityToday, the manufacturing industry seeks to improve competitiveness by converging on new technologies to ensure a new engine of growth, moreover, systems based on IoT and artificial intelligence are increasingly used in this convergence. This new industry must meet the challenges of productivity and competitiveness to interconnect the physical and digital world in which machines, information systems, and products communicate permanently, all to reduce consumers and maintain productivity gains and optimize them in terms of energy consumed reduced breakdowns... This article presents an original and innovative contribution. A new model has been proposed that summarizes an approach based on machine learning, intending to perform predictive maintenance based on artificial neural networks, considering the values acquired by sensors in real-time, it allows us a fast and very low implementation of predictive maintenance, particularly important for companies. The model is validated in real situations. The results show a very high level of accuracy.https://www.e3s-conferences.org/articles/e3sconf/pdf/2022/18/e3sconf_icies2022_01036.pdf
spellingShingle Bouyahrouzi El Mahdi
El Kihel Bachir
Development process to bearing fault diagnostic and prognostic for the predictive maintenance era
E3S Web of Conferences
title Development process to bearing fault diagnostic and prognostic for the predictive maintenance era
title_full Development process to bearing fault diagnostic and prognostic for the predictive maintenance era
title_fullStr Development process to bearing fault diagnostic and prognostic for the predictive maintenance era
title_full_unstemmed Development process to bearing fault diagnostic and prognostic for the predictive maintenance era
title_short Development process to bearing fault diagnostic and prognostic for the predictive maintenance era
title_sort development process to bearing fault diagnostic and prognostic for the predictive maintenance era
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2022/18/e3sconf_icies2022_01036.pdf
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AT elkihelbachir developmentprocesstobearingfaultdiagnosticandprognosticforthepredictivemaintenanceera