Machine learning predicts the slip duration and friction drop of
laboratory earthquakes in sheared granular fault
- Mengfan WEI,
- Ke Gao
Abstract
Predicting laboratory earthquakes using machine learning has progressed
markedly recently. Previous related studies mainly focus on predicting
the occurrence time and shear stress of laboratory earthquakes using
acoustic emission signals. Here, based on numerical simulations, we use
machine learning to show that statistical features of plate motion
signals contain information about the slip duration and friction drop of
laboratory earthquakes. We find that the plate motion signals during the
initial slip stage contain the precursor information about the slip
duration of laboratory earthquakes. While to accurately predict the
friction drop, we need to incorporate the plate motion signals during
the entire slip stage. The results demonstrate that the high-order
moment and variance of plate motion signals are respectively among the
best predictors for the slip duration and friction drop of laboratory
earthquakes. Our work provides new insights for future investigations
into natural earthquake prediction through machine learning.02 Aug 2024Submitted to ESS Open Archive 05 Aug 2024Published in ESS Open Archive