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ATLAS pixel cluster splitting using Mixture Density Networks

The high energy and luminosity of the LHC allows to study jets and hadronically decaying tau leptons at extreme energies with the ATLAS tracking detector. These topologies lead to charged particles with an angular separation smaller than the size of the ATLAS Inner Detector sensitive elements and co...

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Autor principal: Khoda, Elham E
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:https://dx.doi.org/10.22323/1.350.0009
http://cds.cern.ch/record/2687968
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author Khoda, Elham E
author_facet Khoda, Elham E
author_sort Khoda, Elham E
collection CERN
description The high energy and luminosity of the LHC allows to study jets and hadronically decaying tau leptons at extreme energies with the ATLAS tracking detector. These topologies lead to charged particles with an angular separation smaller than the size of the ATLAS Inner Detector sensitive elements and consequently to a reduced track reconstruction efficiency. In order to regain part of the track reconstruction efficiency loss, a neural network (NN) based approach was adopted in the ATLAS pixel detector in 2011 for estimating particle hit multiplicity, hit positions and associated uncertainties. Currently used algorithms in ATLAS will be briefly summarized. An alternative algorithm based on Mixture Density Network (MDN) is currently being studied and the initial performance is promising. As MDN can provide an estimate of position and uncertainty at the same time, the execution can be faster compared to current ATLAS NNs. Overview of MDN algorithm and its performance will be highlighted in the poster. At the same time comparison will be made with the currently used NNs in ATLAS tracking.
id cern-2687968
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
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spelling cern-26879682021-03-25T18:38:15Zdoi:10.22323/1.350.0009http://cds.cern.ch/record/2687968engKhoda, Elham EATLAS pixel cluster splitting using Mixture Density NetworksParticle Physics - ExperimentThe high energy and luminosity of the LHC allows to study jets and hadronically decaying tau leptons at extreme energies with the ATLAS tracking detector. These topologies lead to charged particles with an angular separation smaller than the size of the ATLAS Inner Detector sensitive elements and consequently to a reduced track reconstruction efficiency. In order to regain part of the track reconstruction efficiency loss, a neural network (NN) based approach was adopted in the ATLAS pixel detector in 2011 for estimating particle hit multiplicity, hit positions and associated uncertainties. Currently used algorithms in ATLAS will be briefly summarized. An alternative algorithm based on Mixture Density Network (MDN) is currently being studied and the initial performance is promising. As MDN can provide an estimate of position and uncertainty at the same time, the execution can be faster compared to current ATLAS NNs. Overview of MDN algorithm and its performance will be highlighted in the poster. At the same time comparison will be made with the currently used NNs in ATLAS tracking.ATL-PHYS-PROC-2019-082oai:cds.cern.ch:26879682019-08-29
spellingShingle Particle Physics - Experiment
Khoda, Elham E
ATLAS pixel cluster splitting using Mixture Density Networks
title ATLAS pixel cluster splitting using Mixture Density Networks
title_full ATLAS pixel cluster splitting using Mixture Density Networks
title_fullStr ATLAS pixel cluster splitting using Mixture Density Networks
title_full_unstemmed ATLAS pixel cluster splitting using Mixture Density Networks
title_short ATLAS pixel cluster splitting using Mixture Density Networks
title_sort atlas pixel cluster splitting using mixture density networks
topic Particle Physics - Experiment
url https://dx.doi.org/10.22323/1.350.0009
http://cds.cern.ch/record/2687968
work_keys_str_mv AT khodaelhame atlaspixelclustersplittingusingmixturedensitynetworks