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Reconstruction in an imaging calorimeter for HL-LHC
The CMS endcap calorimeter upgrade for the High Luminosity LHC in 2027 uses silicon sensors to achieve radiation tolerance, with the further benefit of a very high readout granularity. Small scintillator tiles with individual SiPM readout are used in regions permitted by the radiation levels. A reco...
Autores principales: | , , , |
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Lenguaje: | eng |
Publicado: |
2020
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Materias: | |
Acceso en línea: | https://dx.doi.org/10.1088/1748-0221/15/06/C06023 http://cds.cern.ch/record/2797449 |
_version_ | 1780972390688227328 |
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author | Di Pilato, Antonio Chen, Ziheng Pantaleo, Felice Rovere, Marco |
author_facet | Di Pilato, Antonio Chen, Ziheng Pantaleo, Felice Rovere, Marco |
author_sort | Di Pilato, Antonio |
collection | CERN |
description | The CMS endcap calorimeter upgrade for the High Luminosity LHC in 2027 uses silicon sensors to achieve radiation tolerance, with the further benefit of a very high readout granularity. Small scintillator tiles with individual SiPM readout are used in regions permitted by the radiation levels. A reconstruction framework is being developed to fully exploit the granularity and other significant features of the detector like precision timing, especially in the high pileup environment of HL-LHC. An iterative clustering framework (TICL) has been put in place, and is being actively developed. The framework takes as input the clusters of energy deposited in individual calorimeter layers delivered by the CLUE algorithm, which has recently been revised and tuned. Mindful of the projected extreme pressure on computing capacity in the HL-LHC era, the algorithms are being designed with modern parallel architectures in mind. Important speedup has recently been obtained for the clustering algorithm by running it on GPUs. Machine learning techniques are being developed and integrated into the reconstruction framework. This paper will describe the approaches being considered and show first results. |
id | cern-2797449 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2020 |
record_format | invenio |
spelling | cern-27974492022-01-20T07:17:02Zdoi:10.1088/1748-0221/15/06/C06023http://cds.cern.ch/record/2797449engDi Pilato, AntonioChen, ZihengPantaleo, FeliceRovere, MarcoReconstruction in an imaging calorimeter for HL-LHCParticle Physics - ExperimentDetectors and Experimental TechniquesThe CMS endcap calorimeter upgrade for the High Luminosity LHC in 2027 uses silicon sensors to achieve radiation tolerance, with the further benefit of a very high readout granularity. Small scintillator tiles with individual SiPM readout are used in regions permitted by the radiation levels. A reconstruction framework is being developed to fully exploit the granularity and other significant features of the detector like precision timing, especially in the high pileup environment of HL-LHC. An iterative clustering framework (TICL) has been put in place, and is being actively developed. The framework takes as input the clusters of energy deposited in individual calorimeter layers delivered by the CLUE algorithm, which has recently been revised and tuned. Mindful of the projected extreme pressure on computing capacity in the HL-LHC era, the algorithms are being designed with modern parallel architectures in mind. Important speedup has recently been obtained for the clustering algorithm by running it on GPUs. Machine learning techniques are being developed and integrated into the reconstruction framework. This paper will describe the approaches being considered and show first results.The CMS endcap calorimeter upgrade for the High Luminosity LHC in 2027 uses silicon sensors to achieve radiation tolerance, with the further benefit of a very high readout granularity. Small scintillator tiles with individual SiPM readout are used in regions permitted by the radiation levels. A reconstruction framework is being developed to fully exploit the granularity and other significant features of the detector like precision timing, especially in the high pileup environment of HL-LHC . An iterative clustering framework (TICL) has been put in place, and is being actively developed. The framework takes as input the clusters of energy deposited in individual calorimeter layers delivered by the CLUE algorithm, which has recently been revised and tuned. Mindful of the projected extreme pressure on computing capacity in the HL-LHC era, the algorithms are being designed with modern parallel architectures in mind. Important speedup has recently been obtained for the clustering algorithm by running it on GPUs. Machine learning techniques are being developed and integrated into the reconstruction framework. This paper will describe the approaches being considered and show first results.The CMS endcap calorimeter upgrade for the High Luminosity LHC in 2027 uses silicon sensors to achieve radiation tolerance, with the further benefit of a very high readout granularity. Small scintillator tiles with individual SiPM readout are used in regions permitted by the radiation levels. A reconstruction framework is being developed to fully exploit the granularity and other significant features of the detector like precision timing, especially in the high pileup environment of HL-LHC. An iterative clustering framework (TICL) has been put in place, and is being actively developed. The framework takes as input the clusters of energy deposited in individual calorimeter layers delivered by the CLUE algorithm, which has recently been revised and tuned. Mindful of the projected extreme pressure on computing capacity in the HL-LHC era, the algorithms are being designed with modern parallel architectures in mind. Important speedup has recently been obtained for the clustering algorithm by running it on GPUs. Machine learning techniques are being developed and integrated into the reconstruction framework. This paper will describe the approaches being considered and show first results.arXiv:2004.10027CMS-CR-2020-058oai:cds.cern.ch:27974492020-02-10 |
spellingShingle | Particle Physics - Experiment Detectors and Experimental Techniques Di Pilato, Antonio Chen, Ziheng Pantaleo, Felice Rovere, Marco Reconstruction in an imaging calorimeter for HL-LHC |
title | Reconstruction in an imaging calorimeter for HL-LHC |
title_full | Reconstruction in an imaging calorimeter for HL-LHC |
title_fullStr | Reconstruction in an imaging calorimeter for HL-LHC |
title_full_unstemmed | Reconstruction in an imaging calorimeter for HL-LHC |
title_short | Reconstruction in an imaging calorimeter for HL-LHC |
title_sort | reconstruction in an imaging calorimeter for hl-lhc |
topic | Particle Physics - Experiment Detectors and Experimental Techniques |
url | https://dx.doi.org/10.1088/1748-0221/15/06/C06023 http://cds.cern.ch/record/2797449 |
work_keys_str_mv | AT dipilatoantonio reconstructioninanimagingcalorimeterforhllhc AT chenziheng reconstructioninanimagingcalorimeterforhllhc AT pantaleofelice reconstructioninanimagingcalorimeterforhllhc AT roveremarco reconstructioninanimagingcalorimeterforhllhc |