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MD 4510 : Working point exploration for use in lifetime optimization by machine learning

Supervised learning based Machine Learning models are fundamentally reliant on the data on which they are trained. Previous to this MD, the data available although plentiful, was lacking variety as the working point is rarely changed. We have a large amount of data, however, many of the beam and mac...

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Detalles Bibliográficos
Autores principales: Coyle, Loic Thomas Davies, Pieloni, Tatiana, Rivkin, Lenny, Salvachua Ferrando, Belen Maria
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2705860
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author Coyle, Loic Thomas Davies
Pieloni, Tatiana
Rivkin, Lenny
Salvachua Ferrando, Belen Maria
author_facet Coyle, Loic Thomas Davies
Pieloni, Tatiana
Rivkin, Lenny
Salvachua Ferrando, Belen Maria
author_sort Coyle, Loic Thomas Davies
collection CERN
description Supervised learning based Machine Learning models are fundamentally reliant on the data on which they are trained. Previous to this MD, the data available although plentiful, was lacking variety as the working point is rarely changed. We have a large amount of data, however, many of the beam and machine parameters are left unchanged during operation, and from fill to fill. Therefore, previous work done with this data at injection energy show promising results but restricted pre- diction power due to this lack of exploration. This MD will serve to generate a wider data training sample in a more exotic configurations, at injection energy. The goal is to explore the possibility to optimize the beam lifetime of the LHC by the use of machine learning algorithm. Previous Machine Learning studies have predicted some tentative trends which were confirmed with this MD.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
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spelling cern-27058602020-01-21T09:48:42Zhttp://cds.cern.ch/record/2705860engCoyle, Loic Thomas DaviesPieloni, TatianaRivkin, LennySalvachua Ferrando, Belen MariaMD 4510 : Working point exploration for use in lifetime optimization by machine learningAccelerators and Storage RingsSupervised learning based Machine Learning models are fundamentally reliant on the data on which they are trained. Previous to this MD, the data available although plentiful, was lacking variety as the working point is rarely changed. We have a large amount of data, however, many of the beam and machine parameters are left unchanged during operation, and from fill to fill. Therefore, previous work done with this data at injection energy show promising results but restricted pre- diction power due to this lack of exploration. This MD will serve to generate a wider data training sample in a more exotic configurations, at injection energy. The goal is to explore the possibility to optimize the beam lifetime of the LHC by the use of machine learning algorithm. Previous Machine Learning studies have predicted some tentative trends which were confirmed with this MD.CERN-ACC-NOTE-2020-0001oai:cds.cern.ch:27058602019-12-12
spellingShingle Accelerators and Storage Rings
Coyle, Loic Thomas Davies
Pieloni, Tatiana
Rivkin, Lenny
Salvachua Ferrando, Belen Maria
MD 4510 : Working point exploration for use in lifetime optimization by machine learning
title MD 4510 : Working point exploration for use in lifetime optimization by machine learning
title_full MD 4510 : Working point exploration for use in lifetime optimization by machine learning
title_fullStr MD 4510 : Working point exploration for use in lifetime optimization by machine learning
title_full_unstemmed MD 4510 : Working point exploration for use in lifetime optimization by machine learning
title_short MD 4510 : Working point exploration for use in lifetime optimization by machine learning
title_sort md 4510 : working point exploration for use in lifetime optimization by machine learning
topic Accelerators and Storage Rings
url http://cds.cern.ch/record/2705860
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AT pielonitatiana md4510workingpointexplorationforuseinlifetimeoptimizationbymachinelearning
AT rivkinlenny md4510workingpointexplorationforuseinlifetimeoptimizationbymachinelearning
AT salvachuaferrandobelenmaria md4510workingpointexplorationforuseinlifetimeoptimizationbymachinelearning