eBiltegia

    • What is eBiltegia? 
    •   About eBiltegia
    •   Publish your research in open access
    • Open Access at MU 
    •   What is Open Science?
    •   Mondragon Unibertsitatea's Institutional Policy on Open Access to scientific documents and teaching materials
    •   Mondragon Unibertsitatea's Institutional Open Access Policy for Research Data
    •   eBiltegia Digital Preservation Guidelines
    •   The Library compiles and disseminates your publications
    • Euskara
    • Español
    • English

xmlui.dri2xhtml.structural.fecyt

  • Contact Us
  • English 
    • Euskara
    • Español
    • English
  • About eBiltegia  
    • What is eBiltegia? 
    •   About eBiltegia
    •   Publish your research in open access
    • Open Access at MU 
    •   What is Open Science?
    •   Mondragon Unibertsitatea's Institutional Policy on Open Access to scientific documents and teaching materials
    •   Mondragon Unibertsitatea's Institutional Open Access Policy for Research Data
    •   eBiltegia Digital Preservation Guidelines
    •   The Library compiles and disseminates your publications
  • Login
View Item 
  •   eBiltegia MONDRAGON UNIBERTSITATEA
  • Ikerketa-Artikuluak
  • Artikuluak-Ingeniaritza
  • View Item
  •   eBiltegia MONDRAGON UNIBERTSITATEA
  • Ikerketa-Artikuluak
  • Artikuluak-Ingeniaritza
  • View Item
JavaScript is disabled for your browser. Some features of this site may not work without it.
Thumbnail
View/Open
Methodology for data-driven predictive maintenance models design, development and implementation on manufacturing guided by domain knowledge.pdf (761.4Kb)
Full record
Impact

Web of Science   

Google Scholar
Share
EmailLinkedinFacebookTwitter
Save the reference
Mendely

Zotero

untranslated

Mets

Mods

Rdf

Marc

Exportar a BibTeX
Title
Methodology for data-driven predictive maintenance models design, development and implementation on manufacturing guided by domain knowledge
Author
Serradilla, Oscar
Zugasti, Ekhi
Zurutuza, Urko
Author (from another institution)
Rodríguez Breton, Jon
Research Group
Análisis de datos y ciberseguridad
Other institutions
Koniker, S. Coop.
Version
Postprint
Rights
© 2022 Taylor and Francis
Access
Embargoed access
URI
https://hdl.handle.net/20.500.11984/5495
Publisher’s version
https://doi.org/10.1080/0951192X.2022.2043562
Published at
International Journal of Computer Integrated Manufacturing  Published online: 02 Mar 2022
Publisher
Taylor and Francis
Keywords
predictive maintenance
methodology
data-driven
domain knowledge ... [+]
predictive maintenance
methodology
data-driven
domain knowledge
manufacturing [-]
Abstract
The 4th industrial revolution has connected machines and industrial plants, facilitating process monitoring and the implementation of predictive maintenance (PdM) systems that can save up to 60% of ma ... [+]
The 4th industrial revolution has connected machines and industrial plants, facilitating process monitoring and the implementation of predictive maintenance (PdM) systems that can save up to 60% of maintenance costs. Nowadays, most PdM research is carried out with expert systems and data-driven algorithms, but it is mainly focused on improving the results of reference simulation data sets. Hence, industrial requirements are not commonly addressed, and there is no guiding methodology for their implementation in real PdM use-cases. The objective of this work is to present a methodology for PdM application in industrial companies by combining data-driven techniques with domain knowledge. It defines sequentially ordered stages, steps and tasks to facilitate the design, development and implementation of PdM systems according to business and process characteristics. It also facilitates the collaboration among the required working profiles and defines deliverables. It is designed in a flexible and iterative way, combining standards, state-of-the-art methodologies and referent works of the field. Finally, the proposed methodology is validated on two use-cases: a bushing testbed and a press machine of the production line. These use-cases aim to facilitate, guide and speed up the implementation of the methodology on other PdM use-cases. [-]
xmlui.dri2xhtml.METS-1.0.item-sponsorship
Comisión Europea
xmlui.dri2xhtml.METS-1.0.item-projectID
info:eu-repo/grantAgreement/EC/H2020/825030/EU/Digital Reality in Zero Defect Manufacturing/QU4LITY
Collections
  • Articles - Engineering [735]

Browse

All of eBiltegiaCommunities & CollectionsBy Issue DateAuthorsTitlesSubjectsResearch groupsPublished atThis CollectionBy Issue DateAuthorsTitlesSubjectsResearch groupsPublished at

My Account

LoginRegister

Statistics

View Usage Statistics

Harvested by:

OpenAIREBASERecolecta

Validated by:

OpenAIRERebiun
MONDRAGON UNIBERTSITATEA | Library
Contact Us | Send Feedback
DSpace
 

 

Harvested by:

OpenAIREBASERecolecta

Validated by:

OpenAIRERebiun
MONDRAGON UNIBERTSITATEA | Library
Contact Us | Send Feedback
DSpace