Generalization of Deep-Learning Models for Classification of Local Distance Earthquakes and Explosions across Various Geologic Settings

Author:

Maguire Ross1ORCID,Schmandt Brandon2,Wang Ruijia3ORCID,Kong Qingkai4,Sanchez Pedro1

Affiliation:

1. 1Department of Earth Science and Environmental Change, University of Illinois at Urbana-Champaign, Urbana, Illinois, U.S.A.

2. 2Department of Earth and Planetary Sciences, University of New Mexico, Albuquerque, New Mexico, U.S.A.

3. 3Department of Earth and Space Sciences, Southern University of Science and Technology, Shenzhen, People’s Republic of China

4. 4Lawrence Livermore National Laboratory, Livermore, California, U.S.A.

Abstract

Abstract Although accurately classifying signals from earthquakes and explosions at local distance (<250 km) remains an important task for seismic network operations, the growing volume of available seismic data presents a challenge for analysts using traditional source discrimination techniques. In recent years, deep-learning models have proven effective at discriminating between low-magnitude earthquakes and explosions measured at local distances, but it is not clear how well these models are capable of generalizing across different geological settings. To address the issue of generalization between regions, we train deep-learning models (convolutional neural networks [CNNs]) on time–frequency representations (scalograms) of three-component earthquake and explosion signals from eight different regions in the continental United States. We explore scenarios where models are trained on data from all regions, individual regions, or all but one region. We find that although CNN models trained on individual regions do not necessarily generalize well across different settings, models trained on multiple regions that include diverse path coverage generalize to new regions, with station-level accuracy of up to 90% or more for data sets from unseen regions. In general, CNN-based discrimination models significantly outperform models based on uncorrected P/S ratio (measured in the 10–18 Hz frequency band), even when CNN models are tested on data from entirely unseen regions.

Publisher

Seismological Society of America (SSA)

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