A Prediction Model of Relativistic Electrons at Geostationary Orbit Using the EMD‐LSTM Network and Geomagnetic Indices
Abstract In this study, the Empirical Mode Decomposition algorithm (EMD) and the Long Short Term Memory neural network (LSTM) are combined into an EMD‐LSTM model, to predict the variation of the >2 MeV electron fluxes 1 day ahead. Input parameters include the Pc5 power, AP, AE, Kp, >0.6 MeV, a...
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Main Authors: | H. Zhang, H. R. Xu, G. S. Peng, Y. D. Qian, X. X. Zhang, G. L. Yang, C. Shen, Z. Li, J. W. Yang, Z. Q. Wang, F. He, C. L. Gu, M. B. Zhu |
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Format: | Article |
Language: | English |
Published: |
Wiley
2022-10-01
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Series: | Space Weather |
Online Access: | https://doi.org/10.1029/2022SW003126 |
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