Результаты исследований: Научные публикации в периодических изданиях › статья по материалам конференции › Рецензирование
Search for optimal deep neural network architecture for gamma ray search at KASCADE. / Kuznetsov, Mikhail; Petrov, Nikita; Plokhikh, Ivan и др.
в: Proceedings of Science, Том 423, 091, 14.12.2023.Результаты исследований: Научные публикации в периодических изданиях › статья по материалам конференции › Рецензирование
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TY - JOUR
T1 - Search for optimal deep neural network architecture for gamma ray search at KASCADE
AU - Kuznetsov, Mikhail
AU - Petrov, Nikita
AU - Plokhikh, Ivan
AU - Sotnikov, Vladimir
AU - Tsobenko, Margarita
N1 - Conference code: 27
PY - 2023/12/14
Y1 - 2023/12/14
N2 - We present the first steps of a search for high-energy (> 1 PeV) gamma rays in archival data of the KASCADE experiment. With the data collected from 1996 to 2013 the KASCADE statistics is comparable with that of modern observatories. The data is provided by the KASCADE Cosmic ray Data Center (KCDC) and publicly available. We employ methods of machine learning to distinguish between air showers produced by hadronic and gamma-ray primaries. For that we design primary particle type classifiers and train them with the KASCADE Monte-Carlo simulations. We compare results of several deep learning methods: a graph neural network, a self-attention network and a compact convolutional transformer. The level of hadronic background suppression with respect to gamma-ray signal in the best of these methods exceeds that of the original KASCADE method by more than an order of magnitude.
AB - We present the first steps of a search for high-energy (> 1 PeV) gamma rays in archival data of the KASCADE experiment. With the data collected from 1996 to 2013 the KASCADE statistics is comparable with that of modern observatories. The data is provided by the KASCADE Cosmic ray Data Center (KCDC) and publicly available. We employ methods of machine learning to distinguish between air showers produced by hadronic and gamma-ray primaries. For that we design primary particle type classifiers and train them with the KASCADE Monte-Carlo simulations. We compare results of several deep learning methods: a graph neural network, a self-attention network and a compact convolutional transformer. The level of hadronic background suppression with respect to gamma-ray signal in the best of these methods exceeds that of the original KASCADE method by more than an order of magnitude.
UR - https://www.scopus.com/record/display.uri?eid=2-s2.0-85181089625&origin=inward&txGid=4e322cbae4ba1c621f5724079018fb56
UR - https://inspirehep.net/literature/2634437
UR - https://www.mendeley.com/catalogue/9145bdd3-fb88-3740-90b3-72a3c82d345a/
U2 - 10.22323/1.423.0091
DO - 10.22323/1.423.0091
M3 - Conference article
VL - 423
JO - Proceedings of Science
JF - Proceedings of Science
SN - 1824-8039
M1 - 091
T2 - 27th European Cosmic Ray Symposium
Y2 - 25 July 2022 through 29 July 2022
ER -
ID: 59538832