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Improved Maintenance by Leveraging Reporting, Data Analytics and Machine Learning Capabilities

CERN is since many years using a commercial Enterprise Asset Management (EAM) system for managing its maintenance of physical equipment installed in both the accelerator complex and in the technical infrastructures. These tools and practices have greatly evolved over time and the EAM system is today...

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Detalles Bibliográficos
Autores principales: Alfeo, Fabio, Jensen, Lars
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:http://cds.cern.ch/record/2842801
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author Alfeo, Fabio
Jensen, Lars
author_facet Alfeo, Fabio
Jensen, Lars
author_sort Alfeo, Fabio
collection CERN
description CERN is since many years using a commercial Enterprise Asset Management (EAM) system for managing its maintenance of physical equipment installed in both the accelerator complex and in the technical infrastructures. These tools and practices have greatly evolved over time and the EAM system is today used by more than 40 CERN groups, covering close to 3 million of individual traced equipment. When using an EAM system, a large amount of data is captured via its different user interfaces and system integrations and if used correctly, this data can generate important insights about the equipment and their maintenance. This paper will showcase how the current reporting and analysis tools at CERN can be used to improve maintenance at CERN. It will also give a short overview of when and how more advanced machine learning algorithms can help in more complex use cases.
id cern-2842801
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
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spelling cern-28428012022-12-01T19:30:27Zhttp://cds.cern.ch/record/2842801engAlfeo, FabioJensen, LarsImproved Maintenance by Leveraging Reporting, Data Analytics and Machine Learning CapabilitiesEngineeringAccelerators and Storage RingsCERN is since many years using a commercial Enterprise Asset Management (EAM) system for managing its maintenance of physical equipment installed in both the accelerator complex and in the technical infrastructures. These tools and practices have greatly evolved over time and the EAM system is today used by more than 40 CERN groups, covering close to 3 million of individual traced equipment. When using an EAM system, a large amount of data is captured via its different user interfaces and system integrations and if used correctly, this data can generate important insights about the equipment and their maintenance. This paper will showcase how the current reporting and analysis tools at CERN can be used to improve maintenance at CERN. It will also give a short overview of when and how more advanced machine learning algorithms can help in more complex use cases.CERN-ACC-NOTE-2022-0047oai:cds.cern.ch:28428012022-10-11
spellingShingle Engineering
Accelerators and Storage Rings
Alfeo, Fabio
Jensen, Lars
Improved Maintenance by Leveraging Reporting, Data Analytics and Machine Learning Capabilities
title Improved Maintenance by Leveraging Reporting, Data Analytics and Machine Learning Capabilities
title_full Improved Maintenance by Leveraging Reporting, Data Analytics and Machine Learning Capabilities
title_fullStr Improved Maintenance by Leveraging Reporting, Data Analytics and Machine Learning Capabilities
title_full_unstemmed Improved Maintenance by Leveraging Reporting, Data Analytics and Machine Learning Capabilities
title_short Improved Maintenance by Leveraging Reporting, Data Analytics and Machine Learning Capabilities
title_sort improved maintenance by leveraging reporting, data analytics and machine learning capabilities
topic Engineering
Accelerators and Storage Rings
url http://cds.cern.ch/record/2842801
work_keys_str_mv AT alfeofabio improvedmaintenancebyleveragingreportingdataanalyticsandmachinelearningcapabilities
AT jensenlars improvedmaintenancebyleveragingreportingdataanalyticsandmachinelearningcapabilities