Phase Neural Operator for Multi‐Station Picking of Seismic Arrivals
Abstract
Seismic wave arrival time measurements form the basis for numerous downstream applications. State-of-the-art approaches for phase picking use deep neural networks to annotate seismograms at each station independently, yet human experts annotate seismic data by examining the whole network jointly. Here, we introduce a general-purpose network-wide phase picking algorithm based on a recently developed machine learning paradigm called Neural Operator. Our model, called Phase Neural Operator, leverages the spatio-temporal contextual information to pick phases simultaneously for any seismic network geometry. This results in superior performance over leading baseline algorithms by detecting many more earthquakes, picking more phase arrivals, while also greatly improving measurement accuracy. Following similar trends being seen across the domains of artificial intelligence, our approach provides but a glimpse of the potential gains from fully-utilizing the massive seismic data sets being collected worldwide.
Copyright and License
© 2023 The Authors. This is an open access article under the terms of the Creative Commons Attribution-NonCommercial License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited and is not used for commercial purpose
Acknowledgement
We thank the Editor Daoyuan Sun, Christopher W. Johnson and an anonymous reviewer for constructive comments on the manuscript. ZER is grateful to the David and Lucile Packard Foundation for supporting this study through a Packard Fellowship.
Contributions
Conceptualization: Hongyu Sun,Zachary E. RossFormal analysis: Hongyu SunFunding acquisition: Zachary E. RossInvestigation: Hongyu SunMethodology: Hongyu Sun, ZacharyE. Ross, Weiqiang Zhu, KamyarAzizzadenesheliProject Administration: Zachary E. RossResources: Zachary E. Ross,Weiqiang ZhuSoftware: Hongyu Sun, Weiqiang ZhuSupervision: Zachary E. Ross10.1029/2023GL106434RESEARCH LETTER1 of 10
Data Availability
Version v1.0.0 of PhaseNO and the pre-trained model are preserved at Sun (2023). The training and test data are from Northern California Earthquake Data Center (NCEDC, 2014). The data of the 2019 Ridgecrest earthquake sequence can be accessed from Southern California Earthquake Data Center (SCEDC, 2013), and Plate Boundary Observatory Borehole Seismic Network (NCEDC, 2014).
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Additional details
- ISSN
- 1944-8007
- David and Lucile Packard Foundation
- Caltech groups
- Seismological Laboratory, Division of Geological and Planetary Sciences