Open Access
Recognition of geomagnetic storms from time series of matrix observations with the muon hodoscope URAGAN using neural networks of deep learning
Viktor Getmanov
1, 2
,
Alexei D. Gvishiani
3, 4
,
A. A. Soloviev
1, 2
,
Konstantin Zajtsev
5
,
Maksim Dunaev
5
,
Eduard Ehlakov
5
Publication type: Journal Article
Publication date: 2024-03-26
SJR: —
CiteScore: —
Impact factor: —
ISSN: 27129640
General Medicine
Abstract
We solve the problem of recognizing geomagnetic storms from matrix time series of observations with the URAGAN muon hodoscope, using deep learning neural networks. A variant of the neural network software module is selected and its parameters are determined. Geomagnetic storms are recognized using binary classification procedures; a decision-making rule is formed. We estimate probabilities of correct and false recognitions. The recognition of geomagnetic storms is experimentally studied; for the assigned Dst threshold Yᴅ₀=–45 nT we obtain acceptable probabilities of correct and false recognitions, which amount to β=0.8212 and α=0.0047. We confirm the effectiveness and prospects of the proposed neural network approach.
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Getmanov V. et al. Recognition of geomagnetic storms from time series of matrix observations with the muon hodoscope URAGAN using neural networks of deep learning // Solnechno-Zemnaya Fizika. 2024. Vol. 10. No. 1. pp. 83-91.
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Getmanov V., Gvishiani A. D., Soloviev A. A., Zajtsev K., Dunaev M., Ehlakov E. Recognition of geomagnetic storms from time series of matrix observations with the muon hodoscope URAGAN using neural networks of deep learning // Solnechno-Zemnaya Fizika. 2024. Vol. 10. No. 1. pp. 83-91.
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TY - JOUR
DO - 10.12737/szf-101202411
UR - http://naukaru.ru/en/nauka/article/56979/view
TI - Recognition of geomagnetic storms from time series of matrix observations with the muon hodoscope URAGAN using neural networks of deep learning
T2 - Solnechno-Zemnaya Fizika
AU - Getmanov, Viktor
AU - Gvishiani, Alexei D.
AU - Soloviev, A. A.
AU - Zajtsev, Konstantin
AU - Dunaev, Maksim
AU - Ehlakov, Eduard
PY - 2024
DA - 2024/03/26
PB - Infra-M Academic Publishing House
SP - 83-91
IS - 1
VL - 10
SN - 2712-9640
ER -
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@article{2024_Getmanov,
author = {Viktor Getmanov and Alexei D. Gvishiani and A. A. Soloviev and Konstantin Zajtsev and Maksim Dunaev and Eduard Ehlakov},
title = {Recognition of geomagnetic storms from time series of matrix observations with the muon hodoscope URAGAN using neural networks of deep learning},
journal = {Solnechno-Zemnaya Fizika},
year = {2024},
volume = {10},
publisher = {Infra-M Academic Publishing House},
month = {mar},
url = {http://naukaru.ru/en/nauka/article/56979/view},
number = {1},
pages = {83--91},
doi = {10.12737/szf-101202411}
}
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MLA
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Getmanov, Viktor, et al. “Recognition of geomagnetic storms from time series of matrix observations with the muon hodoscope URAGAN using neural networks of deep learning.” Solnechno-Zemnaya Fizika, vol. 10, no. 1, Mar. 2024, pp. 83-91. http://naukaru.ru/en/nauka/article/56979/view.
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