Deep learning for low-magnitude earthquake detection on a multi-level sensor network
Ahmed Shaheen, Umair bin Waheed, Michael Fehler, Lubos Sokol, Sherif, Hanafy

TL;DR
This paper introduces a CNN-based method utilizing multi-level borehole sensor data to improve low-magnitude earthquake detection accuracy, outperforming traditional algorithms in noisy environments.
Contribution
The study presents a novel CNN approach that leverages multi-level borehole sensor data for enhanced detection of microseismic events, improving robustness over existing methods.
Findings
CNN outperforms STA/LTA and template matching in detection accuracy
The method detects previously missing events in the catalog
Significantly reduces false detections
Abstract
Automatic detection of low-magnitude earthquakes has become an increasingly important research topic in recent years due to a sharp increase in induced seismicity around the globe. The detection of low-magnitude seismic events is essential for microseismic monitoring of hydraulic fracturing, carbon capture and storage, and geothermal operations for hazard detection and mitigation. Moreover, the detection of micro-earthquakes is crucial to understand the underlying mechanisms of larger earthquakes. Various algorithms, including deep learning methods, have been proposed over the years to detect such low-magnitude events. However, there is still a need for improving the robustness of these methods in discriminating between local sources of noise and weak seismic events. In this study, we propose a convolutional neural network (CNN) to detect seismic events from shallow borehole stations in…
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Taxonomy
TopicsSeismology and Earthquake Studies · Seismic Waves and Analysis · Seismic Imaging and Inversion Techniques
