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Denoising Convolutional Networks to Accelerate Detector Simulation

The high accuracy of detector simulation is crucial for modern particle physics experiments. However, this accuracy comes with a high computational cost, which will be exacerbated by the large datasets and complex detector upgrades associated with next-generation facilities such as the High Luminosi...

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Autores principales: Banerjee, Sunanda, Cruz Rodriguez, B, Franklin, Lena, Guerrero De La Cruz, H, Leininger, T, Norberg, S, Pedro, K, Rosado Trinidad, A, Ye, Y
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:https://dx.doi.org/10.2172/1854798
http://cds.cern.ch/record/2853279
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author Banerjee, Sunanda
Cruz Rodriguez, B
Franklin, Lena
Guerrero De La Cruz, H
Leininger, T
Norberg, S
Pedro, K
Rosado Trinidad, A
Ye, Y
author_facet Banerjee, Sunanda
Cruz Rodriguez, B
Franklin, Lena
Guerrero De La Cruz, H
Leininger, T
Norberg, S
Pedro, K
Rosado Trinidad, A
Ye, Y
author_sort Banerjee, Sunanda
collection CERN
description The high accuracy of detector simulation is crucial for modern particle physics experiments. However, this accuracy comes with a high computational cost, which will be exacerbated by the large datasets and complex detector upgrades associated with next-generation facilities such as the High Luminosity LHC. We explore the viability of regression-based machine learning (ML) approaches using convolutional neural networks (CNN) to ``denoise'' faster, lower-quality detector simulations, augmenting them to produce a higher-quality final result with a reduced computational burden. The denoising CNN works in concert with classical detector simulation software rather than replacing it entirely, increasing its reliability compared to other ML approaches to simulation. We obtain promising results from a prototype based on photon showers in the CMS electromagnetic calorimeter. Future directions are also discussed.
id cern-2853279
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
record_format invenio
spelling cern-28532792023-08-23T14:25:21Zdoi:10.2172/1854798http://cds.cern.ch/record/2853279engBanerjee, SunandaCruz Rodriguez, BFranklin, LenaGuerrero De La Cruz, HLeininger, TNorberg, SPedro, KRosado Trinidad, AYe, YDenoising Convolutional Networks to Accelerate Detector SimulationAccelerators and Storage RingsThe high accuracy of detector simulation is crucial for modern particle physics experiments. However, this accuracy comes with a high computational cost, which will be exacerbated by the large datasets and complex detector upgrades associated with next-generation facilities such as the High Luminosity LHC. We explore the viability of regression-based machine learning (ML) approaches using convolutional neural networks (CNN) to ``denoise'' faster, lower-quality detector simulations, augmenting them to produce a higher-quality final result with a reduced computational burden. The denoising CNN works in concert with classical detector simulation software rather than replacing it entirely, increasing its reliability compared to other ML approaches to simulation. We obtain promising results from a prototype based on photon showers in the CMS electromagnetic calorimeter. Future directions are also discussed.FERMILAB-POSTER-21-128-CMS-SCDoai:cds.cern.ch:28532792021
spellingShingle Accelerators and Storage Rings
Banerjee, Sunanda
Cruz Rodriguez, B
Franklin, Lena
Guerrero De La Cruz, H
Leininger, T
Norberg, S
Pedro, K
Rosado Trinidad, A
Ye, Y
Denoising Convolutional Networks to Accelerate Detector Simulation
title Denoising Convolutional Networks to Accelerate Detector Simulation
title_full Denoising Convolutional Networks to Accelerate Detector Simulation
title_fullStr Denoising Convolutional Networks to Accelerate Detector Simulation
title_full_unstemmed Denoising Convolutional Networks to Accelerate Detector Simulation
title_short Denoising Convolutional Networks to Accelerate Detector Simulation
title_sort denoising convolutional networks to accelerate detector simulation
topic Accelerators and Storage Rings
url https://dx.doi.org/10.2172/1854798
http://cds.cern.ch/record/2853279
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