Machine Learning Seismic Wave Discrimination: Application to Earthquake Early Warning
Abstract
Performance of earthquake early warning systems suffers from false alerts caused by local impulsive noise from natural or anthropogenic sources. To mitigate this problem, we train a generative adversarial network (GAN) to learn the characteristics of first-arrival earthquake P waves, using 300,000 waveforms recorded in southern California and Japan. We apply the GAN critic as an automatic feature extractor and train a Random Forest classifier with about 700,000 earthquake and noise waveforms. We show that the discriminator can recognize 99.2% of the earthquake P waves and 98.4% of the noise signals. This state-of-the-art performance is expected to reduce significantly the number of false triggers from local impulsive noise. Our study demonstrates that GANs can discover a compact and effective representation of seismic waves, which has the potential for wide applications in seismology.
- Publication:
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Geophysical Research Letters
- Pub Date:
- May 2018
- DOI:
- Bibcode:
- 2018GeoRL..45.4773L
- Keywords:
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- machine learning;
- earthquake early warning;
- seismic waves