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  5. Pre-Earthquake Ionospheric Perturbation Identification Using CSES Data via Transfer Learning
 
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Pre-Earthquake Ionospheric Perturbation Identification Using CSES Data via Transfer Learning

Author(s)
Xiong, Pan  
Long, Cheng  
Zhou, Huiyu  
Battiston, Roberto  
De Santis, Angelo  
Istituto Nazionale di Geofisica e Vulcanologia (INGV), Sezione Roma2, Roma, Italia  
Ouzounov, Dimitar  
Zhang, Xuemin  
Shen, Xuhui  
Language
English
Obiettivo Specifico
7T. Variazioni delle caratteristiche crostali e "precursori"
Status
Published
JCR Journal
JCR Journal
Peer review journal
Yes
Journal
Frontiers in Environmental Science  
Issue/vol(year)
/9 (2021)
Publisher
Frontiers Media S.A.
Pages (printed)
779255
Date Issued
2021
DOI
10.3389/fenvs.2021.779255
URI
https://www.earth-prints.org/handle/2122/15579
Abstract
During the lithospheric buildup to an earthquake, complex physical changes occur within the earthquake hypocenter. Data pertaining to the changes in the ionosphere may be obtained by satellites, and the analysis of data anomalies can help identify earthquake precursors. In this paper, we present a deep-learning model, SeqNetQuake, that uses data from the first China Seismo-Electromagnetic Satellite (CSES) to identify ionospheric perturbations prior to earthquakes. SeqNetQuake achieves the best performance [F-measure (F1) = 0.6792 and Matthews correlation coefficient (MCC) = 0.427] when directly trained on the CSES dataset with a spatial window centered on the earthquake epicenter with the Dobrovolsky radius and an input sequence length of 20 consecutive observations during night time. We further explore a transferring learning approach, which initially trains the model with the larger Electro-Magnetic Emissions Transmitted from the Earthquake Regions (DEMETER) dataset, and then tunes the model with the CSES dataset. The transfer-learning performance is substantially higher than that of direct learning, yielding a 12% improvement in the F1 score and a 29% improvement in the MCC value. Moreover, we compare the proposed model SeqNetQuake with other five benchmarking classifiers on an independent test set, which shows that SeqNetQuake demonstrates a 64.2% improvement in MCC and approximately a 24.5% improvement in the F1 score over the second-best convolutional neural network model. SeqNetSquake achieves significant improvement in identifying pre-earthquake ionospheric perturbation and improves the performance of earthquake prediction using the CSES data.
Type
article
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