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  Explainable machine learning for labquake prediction using catalog-driven features

Karimpouli, S., Caus, D., Grover, H., Martinez Garzon, P., Bohnhoff, M., Beroza, G. C., Dresen, G., Goebel, T., Weigel, T., Kwiatek, G. (2023): Explainable machine learning for labquake prediction using catalog-driven features. - Earth and Planetary Science Letters, 622, 118383.
https://doi.org/10.1016/j.epsl.2023.118383

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 Creators:
Karimpouli, Sadegh1, Author              
Caus, Danu2, Author
Grover, Harsh2, Author
Martinez Garzon, P.1, Author              
Bohnhoff, M.1, Author              
Beroza, Gregory C.2, Author
Dresen, G.1, Author              
Goebel, Thomas2, Author
Weigel, Tobias2, Author
Kwiatek, G.1, Author              
Affiliations:
14.2 Geomechanics and Scientific Drilling, 4.0 Geosystems, Departments, GFZ Publication Database, Deutsches GeoForschungsZentrum, ou_146035              
2External Organizations, ou_persistent22              

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 Abstract: Recently, Machine learning (ML) has been widely utilized for laboratory earthquake (labquake) prediction using various types of data. This study pioneers in time to failure (TTF) prediction based on ML using acoustic emission (AE) records from three laboratory stick-slip experiments performed on Westerly granite samples with naturally fractured rough faults, more similar to the heterogeneous fault structures in the nature. 47 catalog-driven seismo-mechanical and statistical features are extracted introducing some new features based on focal mechanism. A regression voting ensemble of Long-Short Term Memory (LSTM) networks predicts TTF with a coefficient of determination () of 70% on the test dataset. Feature importance analysis revealed that AE rate, correlation integral, event proximity, and focal mechanism-based features are the most important features for TTF prediction. Results reveal that the network uses all information among the features for prediction, including general trends in high correlated features as well as fine details about local variations and fault evolution involved in low correlated features. Therefore, some highly correlated and physically meaningful features may be considered less important for TTF prediction due to their correlation with other important features. Our study provides a ground for applying catalog-driven to constrain TTF of complex heterogeneous rough faults, which is capable to be developed for real application.

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 Dates: 20232023
 Publication Status: Finally published
 Pages: -
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 Rev. Type: -
 Identifiers: DOI: 10.1016/j.epsl.2023.118383
GFZPOF: p4 T8 Georesources
OATYPE: Hybrid Open Access
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Title: Earth and Planetary Science Letters
Source Genre: Journal, SCI, Scopus
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Pages: - Volume / Issue: 622 Sequence Number: 118383 Start / End Page: - Identifier: ISSN: 0012-821X
ISSN: 1385-013X
CoNE: https://gfzpublic.gfz-potsdam.de/cone/journals/resource/journals99
Publisher: Elsevier