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Deep learning particle identification in LHCb RICH

The use of Ring Imaging Cherenkov detectors (RICH) offers a powerful technique for identifying the particle species in particle physics. These detectors produce 2D images formed by rings of individual photons superimposed on a background of photon rings from other particles.The RICH particle identif...

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Autor principal: Blago, Michele Piero
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:https://dx.doi.org/10.1088/1742-6596/2438/1/012076
http://cds.cern.ch/record/2869676
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author Blago, Michele Piero
author_facet Blago, Michele Piero
author_sort Blago, Michele Piero
collection CERN
description The use of Ring Imaging Cherenkov detectors (RICH) offers a powerful technique for identifying the particle species in particle physics. These detectors produce 2D images formed by rings of individual photons superimposed on a background of photon rings from other particles.The RICH particle identification (PID) is essential to the LHCb experiment at CERN. While the current PID algorithm has performed well during LHC data-taking periods between 2010 to 2018, its complexity poses a challenge for LHCb computing infrastructure upgrades towards multi-core architectures. The high particle multiplicity environment of future LHC runs strongly motivates shifting towards high-throughput computing for the online event reconstruction.In this contribution, we introduce a convolutional neural network (CNN) approach to particle identification in LHCb RICH. The CNN takes binary input images from the two RICH detectors to classify particle species. The input images are polar-transformed sub-sections of the RICH photon-detection planes. The model is hyperparameter-optimised and trained on classification accuracy with simulated collision data for the upcoming LHC operation starting in 2022. The PID performance of the CNN is comparable to the conventional algorithm, and its simplicity renders it suitable for fast online reconstruction through parallel processing.We show that under conditions of reduced combinatorial background, as expected from the introduction of timing resolution to the RICH detectors in future upgrades, the network achieves a particle identification performance close to 100 %, with simultaneous misclassification of the most prevalent particle species approaching 0 %.
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institution Organización Europea para la Investigación Nuclear
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spelling cern-28696762023-09-08T19:08:30Zdoi:10.1088/1742-6596/2438/1/012076http://cds.cern.ch/record/2869676engBlago, Michele PieroDeep learning particle identification in LHCb RICHDetectors and Experimental TechniquesParticle Physics - ExperimentComputing and ComputersThe use of Ring Imaging Cherenkov detectors (RICH) offers a powerful technique for identifying the particle species in particle physics. These detectors produce 2D images formed by rings of individual photons superimposed on a background of photon rings from other particles.The RICH particle identification (PID) is essential to the LHCb experiment at CERN. While the current PID algorithm has performed well during LHC data-taking periods between 2010 to 2018, its complexity poses a challenge for LHCb computing infrastructure upgrades towards multi-core architectures. The high particle multiplicity environment of future LHC runs strongly motivates shifting towards high-throughput computing for the online event reconstruction.In this contribution, we introduce a convolutional neural network (CNN) approach to particle identification in LHCb RICH. The CNN takes binary input images from the two RICH detectors to classify particle species. The input images are polar-transformed sub-sections of the RICH photon-detection planes. The model is hyperparameter-optimised and trained on classification accuracy with simulated collision data for the upcoming LHC operation starting in 2022. The PID performance of the CNN is comparable to the conventional algorithm, and its simplicity renders it suitable for fast online reconstruction through parallel processing.We show that under conditions of reduced combinatorial background, as expected from the introduction of timing resolution to the RICH detectors in future upgrades, the network achieves a particle identification performance close to 100 %, with simultaneous misclassification of the most prevalent particle species approaching 0 %.oai:cds.cern.ch:28696762023
spellingShingle Detectors and Experimental Techniques
Particle Physics - Experiment
Computing and Computers
Blago, Michele Piero
Deep learning particle identification in LHCb RICH
title Deep learning particle identification in LHCb RICH
title_full Deep learning particle identification in LHCb RICH
title_fullStr Deep learning particle identification in LHCb RICH
title_full_unstemmed Deep learning particle identification in LHCb RICH
title_short Deep learning particle identification in LHCb RICH
title_sort deep learning particle identification in lhcb rich
topic Detectors and Experimental Techniques
Particle Physics - Experiment
Computing and Computers
url https://dx.doi.org/10.1088/1742-6596/2438/1/012076
http://cds.cern.ch/record/2869676
work_keys_str_mv AT blagomichelepiero deeplearningparticleidentificationinlhcbrich