Machine learning regression can predict macroscopic fault properties such as shear stress, friction, and time to failure using continuous records of fault zone acoustic emissions. Here we show that a similar approach is successful using event catalogs derived from the continuous data. Our methods are applicable to catalogs of arbitrary scale and magnitude of completeness. We investigate how machine learning regression from an event catalog of laboratory earthquakes performs as a function of the catalog magnitude of completeness. We find that strong model performance requires a sufficiently low magnitude of completeness, and below this magnitude of completeness, model performance saturates.

Earthquake catalog-based machine learning identification of laboratory fault states and the effects of magnitude of completeness / Lubbers, N.; Bolton, D. C.; Mohd-Yusof, J.; Marone, C. J.; Barros, K.; Johnson, P. A.. - In: GEOPHYSICAL RESEARCH LETTERS. - ISSN 0094-8276. - 45:24(2018), pp. 13-276. [10.1029/2018GL079712]

Earthquake catalog-based machine learning identification of laboratory fault states and the effects of magnitude of completeness

Marone C. J.
Membro del Collaboration Group
;
2018

Abstract

Machine learning regression can predict macroscopic fault properties such as shear stress, friction, and time to failure using continuous records of fault zone acoustic emissions. Here we show that a similar approach is successful using event catalogs derived from the continuous data. Our methods are applicable to catalogs of arbitrary scale and magnitude of completeness. We investigate how machine learning regression from an event catalog of laboratory earthquakes performs as a function of the catalog magnitude of completeness. We find that strong model performance requires a sufficiently low magnitude of completeness, and below this magnitude of completeness, model performance saturates.
2018
earthquake catalogs; earthquake forecasting; laboratory earthquakes; machine learning; magnitude of completeness
01 Pubblicazione su rivista::01a Articolo in rivista
Earthquake catalog-based machine learning identification of laboratory fault states and the effects of magnitude of completeness / Lubbers, N.; Bolton, D. C.; Mohd-Yusof, J.; Marone, C. J.; Barros, K.; Johnson, P. A.. - In: GEOPHYSICAL RESEARCH LETTERS. - ISSN 0094-8276. - 45:24(2018), pp. 13-276. [10.1029/2018GL079712]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1688293
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