Frontiers in Earth Science (Mar 2023)

DiTingMotion: A deep-learning first-motion-polarity classifier and its application to focal mechanism inversion

  • Ming Zhao,
  • Ming Zhao,
  • Ming Zhao,
  • Zhuowei Xiao,
  • Miao Zhang,
  • Yun Yang,
  • Lin Tang,
  • Shi Chen,
  • Shi Chen

DOI
https://doi.org/10.3389/feart.2023.1103914
Journal volume & issue
Vol. 11

Abstract

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Accurate P-wave first-motion-polarity (FMP) information can contribute to solving earthquake focal mechanisms, especially for small earthquakes, to which waveform-based methods are generally inapplicable due to the computationally expensive high-frequency waveform simulations and inaccurate velocity models. In this paper, we propose a deep-learning-based method for the automatic determination of the FMPs, named “DiTingMotion”. DiTingMotion was trained with the P-wave FMP labels from the “DiTing” and SCSN-FMP datasets, and it achieved ∼97.8% accuracy on both datasets. The model maintains ∼83% accuracy on data labeled as “Emergent”, of which the FMP labels are challenging to identify for seismic analysts. Integrated with HASH, we developed a workflow for automated focal mechanism inversion using the FMPs identified by DiTingMotion and applied it to the 2019 M 6.4 Ridgecrest earthquake sequence for performance evaluation. In this case, DiTingMotion yields comparable focal mechanism results to that using manually determined FMPs by SCSN on the same data. The results proved that the DiTingMotion has a good generalization ability and broad application prospect in rapid earthquake focal mechanism inversion.

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