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A Neural Network Approach for Identifying Particle Pitch Angle Distributions in Van Allen Probes DataAnalysis of particle pitch angle distributions (PADs) has been used as a means to comprehend a multitude of different physical mechanisms that lead to flux variations in the Van Allen belts and also to particle precipitation into the upper atmosphere. In this work we developed a neural network-based data clustering methodology that automatically identifies distinct PAD types in an unsupervised way using particle flux data. One can promptly identify and locate three well-known PAD types in both time and radial distance, namely, 90deg peaked, butterfly, and flattop distributions. In order to illustrate the applicability of our methodology, we used relativistic electron flux data from the whole month of November 2014, acquired from the Relativistic Electron-Proton Telescope instrument on board the Van Allen Probes, but it is emphasized that our approach can also be used with multiplatform spacecraft data. Our PAD classification results are in reasonably good agreement with those obtained by standard statistical fitting algorithms. The proposed methodology has a potential use for Van Allen belt's monitoring.
Document ID
20170003241
Acquisition Source
Goddard Space Flight Center
Document Type
Reprint (Version printed in journal)
External Source(s)
Authors
Souza, V. M.
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Vieira, L. E. A.
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Medeiros, C.
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Da Silva, L. A.
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Alves, L. R.
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Koga, D.
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Sibeck, D. G.
(NASA Goddard Space Flight Center Greenbelt, MD United States)
Walsh, B. M.
(Boston Univ. Boston, MA, United States)
Kanekal, S. G.
(NASA Goddard Space Flight Center Greenbelt, MD United States)
Jauer, P. R.
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Rockenbach, M.
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Lago, A. Dal
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Silveira, M. V. D.
(Universities Space Research Association Greenbelt, MD, United States)
Marchezi, J. P.
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Mendes, O.
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Gonzalez, W. D.
(Instituto de Pesquisas Espaciais Sao Jose dos Campos, Brazil)
Baker, D. N.
(Colorado Univ. Boulder, CO, United States)
Date Acquired
April 7, 2017
Publication Date
April 6, 2016
Publication Information
Publication: Space Weather
Publisher: AGU
Volume: 14
Issue: 4
ISSN: 1542-7390
e-ISSN: 1542-7390
Subject Category
Space Sciences (General)
Report/Patent Number
GSFC-E-DAA-TN41145
Funding Number(s)
CONTRACT_GRANT: NNG11HP16A
Distribution Limits
Public
Copyright
Other

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