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Abstract
Low-frequency earthquakes (LFEs) are small-magnitude earthquakes that are depleted in high-frequency content relative to traditional earthquakes of the same magnitude. These events occur in conjunction with slow slip events (SSEs) and can be used to infer the space and time evolution of SSEs. However, because LFEs have weak signals, and the methods used to identify them are computationally expensive, LFEs are not routinely cataloged in most places. Here, we develop a deep-learning model that learns from the existing LFEs catalog to detect LFEs in 14 years of continuous waveform data in southern Vancouver Island. The result shows significant increases in detection rates at individual stations. We associate the detections and locate them using a grid search approach in a 3D regional velocity model, resulting in over 1 million LFEs during the performing period. Our resulting catalog is consistent with the tremor catalog during periods of large-magnitude SSEs. However, there are cases where it registers far more LFEs than the tremor catalog. We highlight a 16-day period in May 2010, our model detects nearly 3,000 LFEs, whereas the tremor catalog contains only one tremor in the same region. This suggests the possibility of hidden small-magnitude SSEs that are undetected by current approaches. Our approach improves the temporal and spatial resolution of the LFEs activities and provides new opportunities to understand deep subduction zone processes in this region.
DOI
https://doi.org/10.31223/X5PM4B
Subjects
Physical Sciences and Mathematics
Keywords
low frequency earthquake, Deep learning, tremor, slow slip event, Cascadia subduction zone
Dates
Published: 2023-10-19 06:30
License
CC BY Attribution 4.0 International
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Conflict of interest statement:
None
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