A study using machine learning on seismic data from the Cascadia region confirmed earlier work by Los Alamos National Laboratory indicating that earthquake precursors are taking place much more frequently than previously thought. Image Courtesy LANL
Cascadia findings also apply to San Andreas Fault and other earthquake zones, suggesting universal underlying physics that could someday support quake forecasting
Applying deep learning to seismic data has revealed tremor and slip occur at all times—before and after known large-scale slow-slip earthquakes—rather than intermittently in discrete bursts, as previously believed. Even more surprisingly, the machine learning generalizes to other tectonic environments, including the San Andreas Fault.
“The work tells us that the physics of friction on faults appears to have universal characteristics—something we suspected but could not prove,” said Bertrand Rouet-Leduc, a geophysicist in the Geophysics group at Los Alamos National Laboratory and lead author on the paper.
In the research, the team trained a convolutional neural network—a form of deep learning—on a tremor catalog created by Aaron Wech of the University of Washington. The catalog uses several years of seismograms from one seismic station on Vancouver Island in the Cascadia region of the Pacific Northwest. Tremor events that were initially identified by multi-station methods formed the training set. The team then used the deep learning model to find many more events.
Slow earthquakes, which are known to sometimes precede major earthquakes on continental faults and in subduction zones, build stress cyclically and may trigger large earthquakes on neighboring, highly stressed locked faults. Yet even in Cascadia, a clear case of a highly stressed, “locked and loaded” fault, previous research had only observed intermittent and discrete slow earthquakes and their associated tremors.
The research team discovered that the neural network provided a continuous measure of tremors and placed clearer time bounds on slow-slip events than previous methods had established. Significantly, the neural network identified faint tremor signals months before traditional methods detected slow slip by measuring sometimes minute elevation changes in the landscape.
“The study suggests that slow slip within megathrust zones is not random. This research is part of a body of work that tells us that precursors are taking place much more frequently than previously thought, in agreement with laboratory experiments and theory,” said Rouet-Leduc.
The paper, “Probing Slow Earthquakes with Deep Learning,” was published February 24, 2020 in Geophysical Research Letters. This work is part of ongoing research at Los Alamos that has identified a continuous acoustic signal emitted by slow-slip events. The signal can be read at any instant to indicate the time remaining to fault failure in both laboratory and real-world quakes.
The research was funded by the Los Alamos Laboratory Directed Research and Development program and the US Department of Energy Office of Basic Research, Geoscience Program.
Link to paper: “Probing Slow Earthquakes with Deep Learning,” in Geophysical Research Letters. https://agupubs.onlinelibrary.wiley.com/doi/full/10.1029/2019GL085870
About Los Alamos National Laboratory
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