2024
DOI: 10.21203/rs.3.rs-4503790/v1
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Probing the Evolution of Fault Properties During the Seismic Cycle with Deep Learning

Laura Laurenti,
Gabriele Paoletti,
Elisa Tinti
et al.

Abstract: We use seismic waves that pass through the hypocentral region of the 2016 M6.5 Norcia earthquake together with Deep Learning (DL) to distinguish between foreshocks, aftershocks and time-to-failure (TTF). Binary and N-class models defined by TTF correctly identify seismograms in test with >90% accuracy. We use raw seismic records as input to a 7 layer CNN model to perform the classification. The DL models successfully distinguish seismic waves pre/post mainshock in accord with lab and theoretical expectation… Show more

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