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Using LSTM recurrent neural networks for monitoring the LHC superconducting magnets

The superconducting LHC magnets are coupled with an electronic monitoring system which records and analyses voltage time series reflecting their performance. A currently used system is based on a range of preprogrammed triggers which launches protection procedures when a misbehavior of the magnets i...

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Autores principales: Wielgosz, Maciej, Skoczeń, Andrzej, Mertik, Matej
Lenguaje:eng
Publicado: 2016
Materias:
Acceso en línea:https://dx.doi.org/10.1016/j.nima.2017.06.020
http://cds.cern.ch/record/2234465
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author Wielgosz, Maciej
Skoczeń, Andrzej
Mertik, Matej
author_facet Wielgosz, Maciej
Skoczeń, Andrzej
Mertik, Matej
author_sort Wielgosz, Maciej
collection CERN
description The superconducting LHC magnets are coupled with an electronic monitoring system which records and analyses voltage time series reflecting their performance. A currently used system is based on a range of preprogrammed triggers which launches protection procedures when a misbehavior of the magnets is detected. All the procedures used in the protection equipment were designed and implemented according to known working scenarios of the system and are updated and monitored by human operators. This paper proposes a novel approach to monitoring and fault protection of the Large Hadron Collider (LHC) superconducting magnets which employs state-of-the-art Deep Learning algorithms. Consequently, the authors of the paper decided to examine the performance of LSTM recurrent neural networks for modeling of voltage time series of the magnets. In order to address this challenging task different network architectures and hyper-parameters were used to achieve the best possible performance of the solution. The regression results were measured in terms of RMSE for different number of future steps and history length taken into account for the prediction. The best result of RMSE=0.00104 was obtained for a network of 128 LSTM cells within the internal layer and 16 steps history buffer.
id cern-2234465
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2016
record_format invenio
spelling cern-22344652021-05-03T20:27:59Zdoi:10.1016/j.nima.2017.06.020http://cds.cern.ch/record/2234465engWielgosz, MaciejSkoczeń, AndrzejMertik, MatejUsing LSTM recurrent neural networks for monitoring the LHC superconducting magnetsphysics.acc-phAccelerators and Storage Ringscs.LGDetectors and Experimental Techniquesphysics.ins-detComputing and ComputersThe superconducting LHC magnets are coupled with an electronic monitoring system which records and analyses voltage time series reflecting their performance. A currently used system is based on a range of preprogrammed triggers which launches protection procedures when a misbehavior of the magnets is detected. All the procedures used in the protection equipment were designed and implemented according to known working scenarios of the system and are updated and monitored by human operators. This paper proposes a novel approach to monitoring and fault protection of the Large Hadron Collider (LHC) superconducting magnets which employs state-of-the-art Deep Learning algorithms. Consequently, the authors of the paper decided to examine the performance of LSTM recurrent neural networks for modeling of voltage time series of the magnets. In order to address this challenging task different network architectures and hyper-parameters were used to achieve the best possible performance of the solution. The regression results were measured in terms of RMSE for different number of future steps and history length taken into account for the prediction. The best result of RMSE=0.00104 was obtained for a network of 128 LSTM cells within the internal layer and 16 steps history buffer.The superconducting LHC magnets are coupled with an electronic monitoring system which records and analyzes voltage time series reflecting their performance. A currently used system is based on a range of preprogrammed triggers which launches protection procedures when a misbehavior of the magnets is detected. All the procedures used in the protection equipment were designed and implemented according to known working scenarios of the system and are updated and monitored by human operators.arXiv:1611.06241oai:cds.cern.ch:22344652016-11-18
spellingShingle physics.acc-ph
Accelerators and Storage Rings
cs.LG
Detectors and Experimental Techniques
physics.ins-det
Computing and Computers
Wielgosz, Maciej
Skoczeń, Andrzej
Mertik, Matej
Using LSTM recurrent neural networks for monitoring the LHC superconducting magnets
title Using LSTM recurrent neural networks for monitoring the LHC superconducting magnets
title_full Using LSTM recurrent neural networks for monitoring the LHC superconducting magnets
title_fullStr Using LSTM recurrent neural networks for monitoring the LHC superconducting magnets
title_full_unstemmed Using LSTM recurrent neural networks for monitoring the LHC superconducting magnets
title_short Using LSTM recurrent neural networks for monitoring the LHC superconducting magnets
title_sort using lstm recurrent neural networks for monitoring the lhc superconducting magnets
topic physics.acc-ph
Accelerators and Storage Rings
cs.LG
Detectors and Experimental Techniques
physics.ins-det
Computing and Computers
url https://dx.doi.org/10.1016/j.nima.2017.06.020
http://cds.cern.ch/record/2234465
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