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A novel reconstruction framework for an imaging calorimeter for HL-LHC

To sustain the harsher conditions of the high-luminosity LHC, the CMS collaboration is designing a novel endcap calorimeter system. The new calorimeter will predominantly use silicon sensors to achieve sufficient radiation tolerance and will maintain highly-granular information in the readout to hel...

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Detalles Bibliográficos
Autor principal: Cristella, Leonardo
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:https://dx.doi.org/10.1051/epjconf/202125103013
http://cds.cern.ch/record/2814577
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author Cristella, Leonardo
author_facet Cristella, Leonardo
author_sort Cristella, Leonardo
collection CERN
description To sustain the harsher conditions of the high-luminosity LHC, the CMS collaboration is designing a novel endcap calorimeter system. The new calorimeter will predominantly use silicon sensors to achieve sufficient radiation tolerance and will maintain highly-granular information in the readout to help mitigate the effects of pileup. In regions characterised by lower radiation levels, small scintillator tiles with individual on-tile SiPM readout are employed. A unique reconstruction framework (TICL: The Iterative CLustering) is being developed to fully exploit the granularity and other significant detector features, such as particle identification and precision timing, with a view to mitigate pileup in the very dense environment of HL-LHC. The inputs to the framework are clusters of energy deposited in individual calorimeter layers. Clusters are formed by a density-based algorithm. Recent developments and tunes of the clustering algorithm will be presented. To help reduce the expected pressure on the computing resources in the HL-LHC era, the algorithms and their data structures are designed to be executed on GPUs. Preliminary results will be presented on decreases in clustering time when using GPUs versus CPUs. Ideas for machine-learning techniques to further improve the speed and accuracy of reconstruction algorithms will be presented.
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spelling cern-28145772022-07-03T18:27:47Zdoi:10.1051/epjconf/202125103013http://cds.cern.ch/record/2814577engCristella, LeonardoA novel reconstruction framework for an imaging calorimeter for HL-LHCComputing and ComputersTo sustain the harsher conditions of the high-luminosity LHC, the CMS collaboration is designing a novel endcap calorimeter system. The new calorimeter will predominantly use silicon sensors to achieve sufficient radiation tolerance and will maintain highly-granular information in the readout to help mitigate the effects of pileup. In regions characterised by lower radiation levels, small scintillator tiles with individual on-tile SiPM readout are employed. A unique reconstruction framework (TICL: The Iterative CLustering) is being developed to fully exploit the granularity and other significant detector features, such as particle identification and precision timing, with a view to mitigate pileup in the very dense environment of HL-LHC. The inputs to the framework are clusters of energy deposited in individual calorimeter layers. Clusters are formed by a density-based algorithm. Recent developments and tunes of the clustering algorithm will be presented. To help reduce the expected pressure on the computing resources in the HL-LHC era, the algorithms and their data structures are designed to be executed on GPUs. Preliminary results will be presented on decreases in clustering time when using GPUs versus CPUs. Ideas for machine-learning techniques to further improve the speed and accuracy of reconstruction algorithms will be presented.oai:cds.cern.ch:28145772021
spellingShingle Computing and Computers
Cristella, Leonardo
A novel reconstruction framework for an imaging calorimeter for HL-LHC
title A novel reconstruction framework for an imaging calorimeter for HL-LHC
title_full A novel reconstruction framework for an imaging calorimeter for HL-LHC
title_fullStr A novel reconstruction framework for an imaging calorimeter for HL-LHC
title_full_unstemmed A novel reconstruction framework for an imaging calorimeter for HL-LHC
title_short A novel reconstruction framework for an imaging calorimeter for HL-LHC
title_sort novel reconstruction framework for an imaging calorimeter for hl-lhc
topic Computing and Computers
url https://dx.doi.org/10.1051/epjconf/202125103013
http://cds.cern.ch/record/2814577
work_keys_str_mv AT cristellaleonardo anovelreconstructionframeworkforanimagingcalorimeterforhllhc
AT cristellaleonardo novelreconstructionframeworkforanimagingcalorimeterforhllhc