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Auteurs principaux: Song, Siyuan, Chen, Jiyuan, Liu, Jianbei, Liu, Yong, Qi, Baohua, Shi, Yukun, Wang, Jiaxuan, Wang, Zhen, Yang, Haijun
Format: Preprint
Publié: 2023
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Accès en ligne:https://arxiv.org/abs/2310.09489
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author Song, Siyuan
Chen, Jiyuan
Liu, Jianbei
Liu, Yong
Qi, Baohua
Shi, Yukun
Wang, Jiaxuan
Wang, Zhen
Yang, Haijun
author_facet Song, Siyuan
Chen, Jiyuan
Liu, Jianbei
Liu, Yong
Qi, Baohua
Shi, Yukun
Wang, Jiaxuan
Wang, Zhen
Yang, Haijun
contents Particle Identification (PID) plays a central role in associating the energy depositions in calorimeter cells with the type of primary particle in a particle flow oriented detector system. In this paper, we propose novel PID methods based on the Residual Network (ResNet) architecture which enable the training of very deep networks, bypass the need to reconstruct feature variables, and ensure the generalization ability among various geometries of detectors, to classify electromagnetic showers and hadronic showers. Using Geant4 simulation samples with energy ranging from 5 GeV to 120 GeV, the efficacy of Residual Connections is validated and the performance of our model is compared with Boosted Decision Trees (BDT) and other pioneering Artificial Neural Network (ANN) approaches. In shower classification, we observe an improvement in background rejection over a wide range of high signal efficiency ($> 95\%$). These findings highlight the prospects of ANN with Residual Blocks for imaging detectors in the PID task of particle physics experiments.
format Preprint
id arxiv_https___arxiv_org_abs_2310_09489
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Study of residual artificial neural network for particle identification in the CEPC high-granularity calorimeter prototype
Song, Siyuan
Chen, Jiyuan
Liu, Jianbei
Liu, Yong
Qi, Baohua
Shi, Yukun
Wang, Jiaxuan
Wang, Zhen
Yang, Haijun
High Energy Physics - Experiment
Instrumentation and Detectors
Particle Identification (PID) plays a central role in associating the energy depositions in calorimeter cells with the type of primary particle in a particle flow oriented detector system. In this paper, we propose novel PID methods based on the Residual Network (ResNet) architecture which enable the training of very deep networks, bypass the need to reconstruct feature variables, and ensure the generalization ability among various geometries of detectors, to classify electromagnetic showers and hadronic showers. Using Geant4 simulation samples with energy ranging from 5 GeV to 120 GeV, the efficacy of Residual Connections is validated and the performance of our model is compared with Boosted Decision Trees (BDT) and other pioneering Artificial Neural Network (ANN) approaches. In shower classification, we observe an improvement in background rejection over a wide range of high signal efficiency ($> 95\%$). These findings highlight the prospects of ANN with Residual Blocks for imaging detectors in the PID task of particle physics experiments.
title Study of residual artificial neural network for particle identification in the CEPC high-granularity calorimeter prototype
topic High Energy Physics - Experiment
Instrumentation and Detectors
url https://arxiv.org/abs/2310.09489