Deep learning detects uncataloged low-frequency earthquakes across regions

Abstract

Documenting the interplay between slow deformation and seismic ruptures is essential to understand the physics of earthquakes nucleation. However, slow deformation is often difficult to detect and characterize. The most pervasive seismic markers of slow slip are low-frequency earthquakes (LFEs) that allow resolving deformation at minute-scale. Detecting LFEs is hard, due to their emergent onsets and low signal-to-noise ratios, usually requiring region-specific template matching approaches. These approaches suffer from low flexibility and might miss LFEs as they are constrained to sources identified a priori. Here, we develop a deep learning-based workflow for LFE detection and location, modeled after classical earthquake detection with phase picking, phase association, and location. Across three regions with known LFE activity, we detect LFEs from both previously cataloged sources and newly identified sources. Furthermore, the approach is transferable across regions, enabling systematic studies of LFEs in regions without known LFE activity.

Publication
Seismica
Jannes Münchmeyer
Jannes Münchmeyer
Postdoctoral Fellow

Visiting Marie Curie Postdoctoral Fellow

William B. Frank
William B. Frank
Assistant Professor

My research focuses on how the Earth’s crust deforms over a broad range spatiotemporal scales.

Piero Poli
Piero Poli
Assistant Professor

A long-time collaborator with an interest in all things seismology.

Related