Geophysical Research Letters (Sep 2023)

Global Nuclear Explosion Discrimination Using a Convolutional Neural Network

  • Louisa Barama,
  • Jesse Williams,
  • Andrew V. Newman,
  • Zhigang Peng

DOI
https://doi.org/10.1029/2022GL101528
Journal volume & issue
Vol. 50, no. 17
pp. n/a – n/a

Abstract

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Abstract Using P‐wave seismograms, we trained a seismic source classifier using a Convolutional Neural Network. We trained for three classes: earthquake P‐wave, underground nuclear explosion (UNE) P‐wave, and noise. With the current absence of nuclear testing by countries that have signed the Comprehensive Test Ban Treaty, high quality seismic data from UNEs is limited. Even with limited training data, our model can accurately characterize most events recorded at regional and teleseismic distances, finding over 95% signals in the validation set. We applied the model on holdout datasets of the North Korean test explosions to evaluate the performance on unique region and station‐source pairs, with promising results. Additionally, we tested on the Source Physics Experiment events to investigate the potential for chemical explosions to act as a surrogate for nuclear explosions. We anticipate that machine‐learning models like our classifier system can have broad application for other seismic signals including volcanic and non‐volcanic tremor, anomalous earthquakes, ice‐quakes or landslide‐quakes.

Keywords