Machine Learning Predicts the Timing and Shear Stress Evolution of Lab
Earthquakes Using Active Seismic Monitoring of Fault Zone Processes
Abstract
Machine learning (ML) techniques have become increasingly important in
seismology and earthquake science. Lab-based studies have used acoustic
emission data to predict time-to-failure and stress state, and in a few
cases the same approach has been used for field data. However, the
underlying physical mechanisms that allow lab earthquake prediction and
seismic forecasting remain poorly resolved. Here, we address this
knowledge gap by coupling active-source seismic data, which probe
asperity-scale processes, with ML methods. We show that elastic waves
passing through the lab fault zone contain information that can predict
the full spectrum of labquakes from slow slip instabilities to highly
aperiodic events. The ML methods utilize systematic changes in p-wave
amplitude and velocity to accurately predict the timing and shear stress
during labquakes. The ML predictions improve in accuracy closer to fault
failure, demonstrating that the predictive power of the ultrasonic
signals improves as the fault approaches failure. Our results
demonstrate that the relationship between the ultrasonic parameters and
fault slip rate, and in turn, the systematically evolving real area of
contact and asperity stiffness allow the gradient boosting algorithm to
‘learn’ about the state of the fault and its proximity to failure.
Broadly, our results demonstrate the utility of physics-informed machine
learning in forecasting the imminence of fault slip at the laboratory
scale, which may have important implications for earthquake mechanics in
nature.