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Using Machine Learning for Particle Identification in ALICE

Particle identification (PID) is one of the main strengths of the ALICE experiment at the LHC. It is a crucial ingredient for detailed studies of the strongly interacting matter formed in ultrarelativistic heavy-ion collisions. ALICE provides PID information via various experimental techniques, allo...

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Autores principales: Graczykowski, Łukasz Kamil, Jakubowska, Monika, Deja, Kamil Rafał, Kabus, Maja
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:https://dx.doi.org/10.1088/1748-0221/17/07/C07016
http://cds.cern.ch/record/2806815
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author Graczykowski, Łukasz Kamil
Jakubowska, Monika
Deja, Kamil Rafał
Kabus, Maja
author_facet Graczykowski, Łukasz Kamil
Jakubowska, Monika
Deja, Kamil Rafał
Kabus, Maja
author_sort Graczykowski, Łukasz Kamil
collection CERN
description Particle identification (PID) is one of the main strengths of the ALICE experiment at the LHC. It is a crucial ingredient for detailed studies of the strongly interacting matter formed in ultrarelativistic heavy-ion collisions. ALICE provides PID information via various experimental techniques, allowing for the identification of particles over a broad momentum range (from around 100 MeV/c to around 50 GeV/c). The main challenge is how to combine the information from various detectors effectively. Therefore, PID represents a model classification problem, which can be addressed using Machine Learning (ML) solutions. Moreover, the complexity of the detector and richness of the detection techniques make PID an interesting area of research also for the computer science community. In this work, we show the current status of the ML approach to PID in ALICE. We discuss the preliminary work with the Random Forest approach for the LHC Run 2 and a more advanced solution based on Domain Adaptation Neural Networks, including a proposal for its future implementation within the ALICE computing software for the upcoming LHC Run 3.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
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spelling cern-28068152023-06-13T14:03:04Zdoi:10.1088/1748-0221/17/07/C07016http://cds.cern.ch/record/2806815engGraczykowski, Łukasz KamilJakubowska, MonikaDeja, Kamil RafałKabus, MajaUsing Machine Learning for Particle Identification in ALICEstat.MLMathematical Physics and Mathematicshep-exParticle Physics - Experimentnucl-exNuclear Physics - ExperimentParticle identification (PID) is one of the main strengths of the ALICE experiment at the LHC. It is a crucial ingredient for detailed studies of the strongly interacting matter formed in ultrarelativistic heavy-ion collisions. ALICE provides PID information via various experimental techniques, allowing for the identification of particles over a broad momentum range (from around 100 MeV/c to around 50 GeV/c). The main challenge is how to combine the information from various detectors effectively. Therefore, PID represents a model classification problem, which can be addressed using Machine Learning (ML) solutions. Moreover, the complexity of the detector and richness of the detection techniques make PID an interesting area of research also for the computer science community. In this work, we show the current status of the ML approach to PID in ALICE. We discuss the preliminary work with the Random Forest approach for the LHC Run 2 and a more advanced solution based on Domain Adaptation Neural Networks, including a proposal for its future implementation within the ALICE computing software for the upcoming LHC Run 3.Particle identification (PID) is one of the main strengths of the ALICE experiment at the LHC. It is a crucial ingredient for detailed studies of the strongly interacting matter formed in ultrarelativistic heavy-ion collisions. ALICE provides PID information via various experimental techniques, allowing for the identification of particles over a broad momentum range (from around 100 MeV/$c$ to around 50 GeV/$c$). The main challenge is how to combine the information from various detectors effectively. Therefore, PID represents a model classification problem, which can be addressed using Machine Learning (ML) solutions. Moreover, the complexity of the detector and richness of the detection techniques make PID an interesting area of research also for the computer science community. In this work, we show the current status of the ML approach to PID in ALICE. We discuss the preliminary work with the Random Forest approach for the LHC Run 2 and a more advanced solution based on Domain Adaptation Neural Networks, including a proposal for its future implementation within the ALICE computing software for the upcoming LHC Run 3.arXiv:2204.06900oai:cds.cern.ch:28068152022-04-14
spellingShingle stat.ML
Mathematical Physics and Mathematics
hep-ex
Particle Physics - Experiment
nucl-ex
Nuclear Physics - Experiment
Graczykowski, Łukasz Kamil
Jakubowska, Monika
Deja, Kamil Rafał
Kabus, Maja
Using Machine Learning for Particle Identification in ALICE
title Using Machine Learning for Particle Identification in ALICE
title_full Using Machine Learning for Particle Identification in ALICE
title_fullStr Using Machine Learning for Particle Identification in ALICE
title_full_unstemmed Using Machine Learning for Particle Identification in ALICE
title_short Using Machine Learning for Particle Identification in ALICE
title_sort using machine learning for particle identification in alice
topic stat.ML
Mathematical Physics and Mathematics
hep-ex
Particle Physics - Experiment
nucl-ex
Nuclear Physics - Experiment
url https://dx.doi.org/10.1088/1748-0221/17/07/C07016
http://cds.cern.ch/record/2806815
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