Identification of Electromagnetic Pre-Earthquake Perturbations from the DEMETER Data by Machine Learning

The low-altitude satellite DEMETER recorded many cases of ionospheric perturbations observed on occasion of large seismic events. In this paper, we explore 16 spot-checking classification algorithms, among which, the top classifier with low-frequency power spectra of electric and magnetic fields was...

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Main Authors: Pan Xiong, Cheng Long, Huiyu Zhou, Roberto Battiston, Xuemin Zhang, Xuhui Shen
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/21/3643
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spelling doaj-3b4331ef799d4e78adfb1c78628e224e2020-11-25T03:59:38ZengMDPI AGRemote Sensing2072-42922020-11-01123643364310.3390/rs12213643Identification of Electromagnetic Pre-Earthquake Perturbations from the DEMETER Data by Machine LearningPan Xiong0Cheng Long1Huiyu Zhou2Roberto Battiston3Xuemin Zhang4Xuhui Shen5Institute of Earthquake Forecasting, China Earthquake Administration, Beijing 100036, ChinaSchool of Computer Science and Engineering, Nanyang Technological University, Singapore 639798, SingaporeSchool of Informatics, University of Leicester, Leicester LE1 7RH, UKDepartment of Physics, University of Trento, 38123 Trento, ItalyInstitute of Earthquake Forecasting, China Earthquake Administration, Beijing 100036, ChinaNational Institute of Natural Hazards, Ministry of Emergency Management of China, Beijing 100085, ChinaThe low-altitude satellite DEMETER recorded many cases of ionospheric perturbations observed on occasion of large seismic events. In this paper, we explore 16 spot-checking classification algorithms, among which, the top classifier with low-frequency power spectra of electric and magnetic fields was used for ionospheric perturbation analysis. This study included the analysis of satellite data spanning over six years, during which about 8760 earthquakes with magnitude greater than or equal to 5.0 occurred in the world. We discover that among these methods, a gradient boosting-based method called LightGBM outperforms others and achieves superior performance in a five-fold cross-validation test on the benchmarking datasets, which shows a strong capability in discriminating electromagnetic pre-earthquake perturbations. The results show that the electromagnetic pre-earthquake data within a circular region with its center at the epicenter and its radius given by the Dobrovolsky’s formula and the time window of about a few hours before shocks are much better at discriminating electromagnetic pre-earthquake perturbations. Moreover, by investigating different earthquake databases, we confirm that some low-frequency electric and magnetic fields’ frequency bands are the dominant features for electromagnetic pre-earthquake perturbations identification. We have also found that the choice of the geographical region used to simulate the training set of non-seismic data influences, to a certain extent, the performance of the LightGBM model, by reducing its capability in discriminating electromagnetic pre-earthquake perturbations.https://www.mdpi.com/2072-4292/12/21/3643earthquakeseismic precursorsDEMETER satelliteselectromagnetic fieldmachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Pan Xiong
Cheng Long
Huiyu Zhou
Roberto Battiston
Xuemin Zhang
Xuhui Shen
spellingShingle Pan Xiong
Cheng Long
Huiyu Zhou
Roberto Battiston
Xuemin Zhang
Xuhui Shen
Identification of Electromagnetic Pre-Earthquake Perturbations from the DEMETER Data by Machine Learning
Remote Sensing
earthquake
seismic precursors
DEMETER satellites
electromagnetic field
machine learning
author_facet Pan Xiong
Cheng Long
Huiyu Zhou
Roberto Battiston
Xuemin Zhang
Xuhui Shen
author_sort Pan Xiong
title Identification of Electromagnetic Pre-Earthquake Perturbations from the DEMETER Data by Machine Learning
title_short Identification of Electromagnetic Pre-Earthquake Perturbations from the DEMETER Data by Machine Learning
title_full Identification of Electromagnetic Pre-Earthquake Perturbations from the DEMETER Data by Machine Learning
title_fullStr Identification of Electromagnetic Pre-Earthquake Perturbations from the DEMETER Data by Machine Learning
title_full_unstemmed Identification of Electromagnetic Pre-Earthquake Perturbations from the DEMETER Data by Machine Learning
title_sort identification of electromagnetic pre-earthquake perturbations from the demeter data by machine learning
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-11-01
description The low-altitude satellite DEMETER recorded many cases of ionospheric perturbations observed on occasion of large seismic events. In this paper, we explore 16 spot-checking classification algorithms, among which, the top classifier with low-frequency power spectra of electric and magnetic fields was used for ionospheric perturbation analysis. This study included the analysis of satellite data spanning over six years, during which about 8760 earthquakes with magnitude greater than or equal to 5.0 occurred in the world. We discover that among these methods, a gradient boosting-based method called LightGBM outperforms others and achieves superior performance in a five-fold cross-validation test on the benchmarking datasets, which shows a strong capability in discriminating electromagnetic pre-earthquake perturbations. The results show that the electromagnetic pre-earthquake data within a circular region with its center at the epicenter and its radius given by the Dobrovolsky’s formula and the time window of about a few hours before shocks are much better at discriminating electromagnetic pre-earthquake perturbations. Moreover, by investigating different earthquake databases, we confirm that some low-frequency electric and magnetic fields’ frequency bands are the dominant features for electromagnetic pre-earthquake perturbations identification. We have also found that the choice of the geographical region used to simulate the training set of non-seismic data influences, to a certain extent, the performance of the LightGBM model, by reducing its capability in discriminating electromagnetic pre-earthquake perturbations.
topic earthquake
seismic precursors
DEMETER satellites
electromagnetic field
machine learning
url https://www.mdpi.com/2072-4292/12/21/3643
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