Local earthquakes detection: A benchmark dataset of 3-component seismograms built on a global scale
Fabrizio Magrini, Dario Jozinovi\'c, Fabio Cammarano, Alberto, Michelini, Lapo Boschi

TL;DR
This paper introduces a comprehensive global dataset of 3-component seismograms for local earthquake detection, demonstrating that a simple CNN can achieve high accuracy and generalize well across diverse regions, facilitating real-time seismic event identification.
Contribution
The authors provide a large, labeled seismogram dataset covering global regions and show that a lightweight CNN can effectively distinguish earthquakes from noise, supporting real-time detection and benchmarking.
Findings
Achieved 96.7% accuracy on training data.
Model generalizes well to unseen regions.
Dataset is publicly available for benchmarking.
Abstract
Machine learning is becoming increasingly important in scientific and technological progress, due to its ability to create models that describe complex data and generalize well. The wealth of publicly-available seismic data nowadays requires automated, fast, and reliable tools to carry out a multitude of tasks, such as the detection of small, local earthquakes in areas characterized by sparsity of receivers. A similar application of machine learning, however, should be built on a large amount of labeled seismograms, which is neither immediate to obtain nor to compile. In this study we present a large dataset of seismograms recorded along the vertical, north, and east components of 1487 broad-band or very broad-band receivers distributed worldwide; this includes 629,095 3-component seismograms generated by 304,878 local earthquakes and labeled as EQ, and 615,847 ones labeled as noise…
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