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Machine learning techniques for long lived dark photons at ATLAS

Several new physics models predict the existence of neutral particles with macroscopic life-times known as dark photons. These particles, decaying outside of the interaction region, will give rise to striking signatures in the detectors at the LHC. These can be detected through numerous unconvention...

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Autor principal: Longarini, Iacopo
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2703327
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author Longarini, Iacopo
author_facet Longarini, Iacopo
author_sort Longarini, Iacopo
collection CERN
description Several new physics models predict the existence of neutral particles with macroscopic life-times known as dark photons. These particles, decaying outside of the interaction region, will give rise to striking signatures in the detectors at the LHC. These can be detected through numerous unconventional signatures: long time-of-flight, late calorimetric energy deposits, or displaced vertices. A new approach to identify dark-photon late decays into ATLAS calorimeter system is offered by Deep Learning pattern recognition algorithms. A novel selection based on convolutional neural network (CNN) algorithms running on multi-dimensional jet cluster images is presented. The use of low-level input allows to fully exploit the ATLAS calorimeter information. A L0 muon RPC trigger for HL-LHC based on CNN algorithms that will run on the new FPGA boards is also presented, designed to reconstruct displaced non-pointing tracks and displaced vertices already at L0.
id cern-2703327
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
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spelling cern-27033272019-12-03T19:22:37Zhttp://cds.cern.ch/record/2703327engLongarini, IacopoMachine learning techniques for long lived dark photons at ATLASParticle Physics - ExperimentSeveral new physics models predict the existence of neutral particles with macroscopic life-times known as dark photons. These particles, decaying outside of the interaction region, will give rise to striking signatures in the detectors at the LHC. These can be detected through numerous unconventional signatures: long time-of-flight, late calorimetric energy deposits, or displaced vertices. A new approach to identify dark-photon late decays into ATLAS calorimeter system is offered by Deep Learning pattern recognition algorithms. A novel selection based on convolutional neural network (CNN) algorithms running on multi-dimensional jet cluster images is presented. The use of low-level input allows to fully exploit the ATLAS calorimeter information. A L0 muon RPC trigger for HL-LHC based on CNN algorithms that will run on the new FPGA boards is also presented, designed to reconstruct displaced non-pointing tracks and displaced vertices already at L0.ATL-PHYS-SLIDE-2019-874oai:cds.cern.ch:27033272019-12-03
spellingShingle Particle Physics - Experiment
Longarini, Iacopo
Machine learning techniques for long lived dark photons at ATLAS
title Machine learning techniques for long lived dark photons at ATLAS
title_full Machine learning techniques for long lived dark photons at ATLAS
title_fullStr Machine learning techniques for long lived dark photons at ATLAS
title_full_unstemmed Machine learning techniques for long lived dark photons at ATLAS
title_short Machine learning techniques for long lived dark photons at ATLAS
title_sort machine learning techniques for long lived dark photons at atlas
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2703327
work_keys_str_mv AT longariniiacopo machinelearningtechniquesforlongliveddarkphotonsatatlas