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Deep Learning strategies for ProtoDUNE raw data denoising

In this work we investigate different machine learning based strategies for denoising raw simulation data from ProtoDUNE experiment. ProtoDUNE detector is hosted by CERN and it aims to test and calibrate the technologies for DUNE, a forthcoming experiment in neutrino physics. Our models leverage dee...

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Detalles Bibliográficos
Autores principales: Rossi, Marco, Vallecorsa, Sofia
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:http://cds.cern.ch/record/2753515
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author Rossi, Marco
Vallecorsa, Sofia
author_facet Rossi, Marco
Vallecorsa, Sofia
author_sort Rossi, Marco
collection CERN
description In this work we investigate different machine learning based strategies for denoising raw simulation data from ProtoDUNE experiment. ProtoDUNE detector is hosted by CERN and it aims to test and calibrate the technologies for DUNE, a forthcoming experiment in neutrino physics. Our models leverage deep learning algorithms to make the first step in the reconstruction workchain, which consists in converting digital detector signals into physical high level quantities. We benchmark this approach against traditional algorithms implemented by the DUNE collaboration. We test the capabilities of graph neural networks, while exploiting multi-GPU setups to accelerate training and inference processes.
id cern-2753515
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
record_format invenio
spelling cern-27535152021-04-26T07:23:34Zhttp://cds.cern.ch/record/2753515engRossi, MarcoVallecorsa, SofiaDeep Learning strategies for ProtoDUNE raw data denoisingParticle Physics - PhenomenologyComputing and ComputersIn this work we investigate different machine learning based strategies for denoising raw simulation data from ProtoDUNE experiment. ProtoDUNE detector is hosted by CERN and it aims to test and calibrate the technologies for DUNE, a forthcoming experiment in neutrino physics. Our models leverage deep learning algorithms to make the first step in the reconstruction workchain, which consists in converting digital detector signals into physical high level quantities. We benchmark this approach against traditional algorithms implemented by the DUNE collaboration. We test the capabilities of graph neural networks, while exploiting multi-GPU setups to accelerate training and inference processes.CERN-IT-2021-001oai:cds.cern.ch:27535152021-02-03
spellingShingle Particle Physics - Phenomenology
Computing and Computers
Rossi, Marco
Vallecorsa, Sofia
Deep Learning strategies for ProtoDUNE raw data denoising
title Deep Learning strategies for ProtoDUNE raw data denoising
title_full Deep Learning strategies for ProtoDUNE raw data denoising
title_fullStr Deep Learning strategies for ProtoDUNE raw data denoising
title_full_unstemmed Deep Learning strategies for ProtoDUNE raw data denoising
title_short Deep Learning strategies for ProtoDUNE raw data denoising
title_sort deep learning strategies for protodune raw data denoising
topic Particle Physics - Phenomenology
Computing and Computers
url http://cds.cern.ch/record/2753515
work_keys_str_mv AT rossimarco deeplearningstrategiesforprotodunerawdatadenoising
AT vallecorsasofia deeplearningstrategiesforprotodunerawdatadenoising