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Explainable Deep Learning for Fault Prognostics in Complex Systems: A Particle Accelerator Use-Case

Sophisticated infrastructures often exhibit misbehaviour and failures resulting from complex interactions of their constituent subsystems. Such infrastructures use alarms, event and fault information, which is recorded to help diagnose and repair failure conditions by operations experts. This data c...

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Autores principales: Felsberger, Lukas, Apollonio, Andrea, Cartier-Michaud, Thomas, Todd, Benjamin, Müller, Andreas, Kranzlmüller, Dieter
Lenguaje:eng
Publicado: 2020
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-030-57321-8_8
http://cds.cern.ch/record/2730246
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author Felsberger, Lukas
Apollonio, Andrea
Cartier-Michaud, Thomas
Todd, Benjamin
Müller, Andreas
Kranzlmüller, Dieter
Apollonio, Andrea
author_facet Felsberger, Lukas
Apollonio, Andrea
Cartier-Michaud, Thomas
Todd, Benjamin
Müller, Andreas
Kranzlmüller, Dieter
Apollonio, Andrea
author_sort Felsberger, Lukas
collection CERN
description Sophisticated infrastructures often exhibit misbehaviour and failures resulting from complex interactions of their constituent subsystems. Such infrastructures use alarms, event and fault information, which is recorded to help diagnose and repair failure conditions by operations experts. This data can be analysed using explainable artificial intelligence to attempt to reveal precursors and eventual root causes. The proposed method is first applied to synthetic data in order to prove functionality. With synthetic data the framework makes extremely precise predictions and root causes can be identified correctly. Subsequently, the method is applied to real data from a complex particle accelerator system. In the real data setting, deep learning models produce accurate predictive models from less than ten error examples when precursors are captured. The approach described herein is a potentially valuable tool for operations experts to identify precursors in complex infrastructures.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2020
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spelling cern-27302462020-11-11T14:46:05Zdoi:10.1007/978-3-030-57321-8_8http://cds.cern.ch/record/2730246engFelsberger, LukasApollonio, AndreaCartier-Michaud, ThomasTodd, BenjaminMüller, AndreasKranzlmüller, DieterApollonio, AndreaExplainable Deep Learning for Fault Prognostics in Complex Systems: A Particle Accelerator Use-CaseAccelerators and Storage RingsSophisticated infrastructures often exhibit misbehaviour and failures resulting from complex interactions of their constituent subsystems. Such infrastructures use alarms, event and fault information, which is recorded to help diagnose and repair failure conditions by operations experts. This data can be analysed using explainable artificial intelligence to attempt to reveal precursors and eventual root causes. The proposed method is first applied to synthetic data in order to prove functionality. With synthetic data the framework makes extremely precise predictions and root causes can be identified correctly. Subsequently, the method is applied to real data from a complex particle accelerator system. In the real data setting, deep learning models produce accurate predictive models from less than ten error examples when precursors are captured. The approach described herein is a potentially valuable tool for operations experts to identify precursors in complex infrastructures.CERN-ACC-2020-0016oai:cds.cern.ch:27302462020-09-14
spellingShingle Accelerators and Storage Rings
Felsberger, Lukas
Apollonio, Andrea
Cartier-Michaud, Thomas
Todd, Benjamin
Müller, Andreas
Kranzlmüller, Dieter
Apollonio, Andrea
Explainable Deep Learning for Fault Prognostics in Complex Systems: A Particle Accelerator Use-Case
title Explainable Deep Learning for Fault Prognostics in Complex Systems: A Particle Accelerator Use-Case
title_full Explainable Deep Learning for Fault Prognostics in Complex Systems: A Particle Accelerator Use-Case
title_fullStr Explainable Deep Learning for Fault Prognostics in Complex Systems: A Particle Accelerator Use-Case
title_full_unstemmed Explainable Deep Learning for Fault Prognostics in Complex Systems: A Particle Accelerator Use-Case
title_short Explainable Deep Learning for Fault Prognostics in Complex Systems: A Particle Accelerator Use-Case
title_sort explainable deep learning for fault prognostics in complex systems: a particle accelerator use-case
topic Accelerators and Storage Rings
url https://dx.doi.org/10.1007/978-3-030-57321-8_8
http://cds.cern.ch/record/2730246
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