Multi-class classification automated machine learning for predicting earthquakes using global geomagnetic field data

The challenging task of earthquake (EQ) prediction has recently gained significant attention, particularly with machine learning techniques. Geomagnetic field analysis has yielded promising results in identifying EQ precursors. However, the complexity of the data has made it difficult to create an a...

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Main Authors: Qaedi, Kasyful, Abdullah, Mardina, Yusof, Khairul Adib, Hayakawa, Masashi, Zulhamidi, Nur Fatin Irdina
Format: Article
Language:English
Published: Springer Science and Business Media B.V. 2025
Online Access:http://psasir.upm.edu.my/id/eprint/120710/
http://psasir.upm.edu.my/id/eprint/120710/1/120710.pdf
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author Qaedi, Kasyful
Abdullah, Mardina
Yusof, Khairul Adib
Hayakawa, Masashi
Zulhamidi, Nur Fatin Irdina
author_facet Qaedi, Kasyful
Abdullah, Mardina
Yusof, Khairul Adib
Hayakawa, Masashi
Zulhamidi, Nur Fatin Irdina
author_sort Qaedi, Kasyful
building UPM Institutional Repository
collection Online Access
description The challenging task of earthquake (EQ) prediction has recently gained significant attention, particularly with machine learning techniques. Geomagnetic field analysis has yielded promising results in identifying EQ precursors. However, the complexity of the data has made it difficult to create an accurate model for EQ prediction using this method. This study presents an automated machine learning (AutoML) approach capable of handling the complexity of geomagnetic data and selecting the most suitable model. A dataset containing 50 years of geomagnetic field data was collected, of which the measurements were taken in close proximity to M5.0+ EQs. The study demonstrated that sampling techniques can overcome the problem of an imbalanced dataset from EQ events. Through statistical analysis, important features were extracted and a multi-class classification model using geomagnetic data was created. The extracted features were the input for AutoML, an automatic algorithm selection that was measured by Bayesian Optimization algorithm to select the best performance model. The results indicate that the neural network model outperformed eight other classifiers, achieved an accuracy of 81.19%, F1-score of 80.51%, and a Matthews Correlation Coefficient (MCC) of 77.49%. It is concluded that the neural network multi-class classification model is capable of providing solutions to the challenges faced when using geomagnetic data for EQ prediction.
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spelling upm-1207102025-10-08T07:32:26Z http://psasir.upm.edu.my/id/eprint/120710/ Multi-class classification automated machine learning for predicting earthquakes using global geomagnetic field data Qaedi, Kasyful Abdullah, Mardina Yusof, Khairul Adib Hayakawa, Masashi Zulhamidi, Nur Fatin Irdina The challenging task of earthquake (EQ) prediction has recently gained significant attention, particularly with machine learning techniques. Geomagnetic field analysis has yielded promising results in identifying EQ precursors. However, the complexity of the data has made it difficult to create an accurate model for EQ prediction using this method. This study presents an automated machine learning (AutoML) approach capable of handling the complexity of geomagnetic data and selecting the most suitable model. A dataset containing 50 years of geomagnetic field data was collected, of which the measurements were taken in close proximity to M5.0+ EQs. The study demonstrated that sampling techniques can overcome the problem of an imbalanced dataset from EQ events. Through statistical analysis, important features were extracted and a multi-class classification model using geomagnetic data was created. The extracted features were the input for AutoML, an automatic algorithm selection that was measured by Bayesian Optimization algorithm to select the best performance model. The results indicate that the neural network model outperformed eight other classifiers, achieved an accuracy of 81.19%, F1-score of 80.51%, and a Matthews Correlation Coefficient (MCC) of 77.49%. It is concluded that the neural network multi-class classification model is capable of providing solutions to the challenges faced when using geomagnetic data for EQ prediction. Springer Science and Business Media B.V. 2025 Article PeerReviewed text en http://psasir.upm.edu.my/id/eprint/120710/1/120710.pdf Qaedi, Kasyful and Abdullah, Mardina and Yusof, Khairul Adib and Hayakawa, Masashi and Zulhamidi, Nur Fatin Irdina (2025) Multi-class classification automated machine learning for predicting earthquakes using global geomagnetic field data. Natural Hazards, 121 (12). pp. 14531-14544. ISSN 0921-030X; eISSN: 1573-0840 https://link.springer.com/article/10.1007/s11069-025-07373-2?error=cookies_not_supported&code=02452931-a311-48d2-8994-1406a0e68042 10.1007/s11069-025-07373-2
spellingShingle Qaedi, Kasyful
Abdullah, Mardina
Yusof, Khairul Adib
Hayakawa, Masashi
Zulhamidi, Nur Fatin Irdina
Multi-class classification automated machine learning for predicting earthquakes using global geomagnetic field data
title Multi-class classification automated machine learning for predicting earthquakes using global geomagnetic field data
title_full Multi-class classification automated machine learning for predicting earthquakes using global geomagnetic field data
title_fullStr Multi-class classification automated machine learning for predicting earthquakes using global geomagnetic field data
title_full_unstemmed Multi-class classification automated machine learning for predicting earthquakes using global geomagnetic field data
title_short Multi-class classification automated machine learning for predicting earthquakes using global geomagnetic field data
title_sort multi-class classification automated machine learning for predicting earthquakes using global geomagnetic field data
url http://psasir.upm.edu.my/id/eprint/120710/
http://psasir.upm.edu.my/id/eprint/120710/
http://psasir.upm.edu.my/id/eprint/120710/
http://psasir.upm.edu.my/id/eprint/120710/1/120710.pdf