Bayesian Inference for the Seismic Moment Tensor Using Regional Waveforms and Teleseismic-P Polarities with a Data-derived Distribution of Velocity Models and Source Locations
Description:
The largest source of uncertainty in any source inversion is the velocity model used in the transfer function that relates observed ground motion to the seismic moment tensor. However, standard inverse procedure often does not quantify uncertainty in the seismic moment tensor due to error in the Green's functions from uncertain event location and Earth structure. We incorporate this uncertainty into an estimation of the seismic moment tensor using a data-derived distribution of velocity models based on complementary geophysical data sets, including thickness constraints, velocity profiles, gravity data, surface wave group velocities, and regional body wave travel-times. The data-derived distribution of velocity models is then used as a prior distribution of Green's functions for use in Bayesian inference of an unknown seismic moment tensor using regional and teleseismic-P waveforms. The use of multiple data sets is important for gaining resolution to different components of the moment tensor. The combined likelihood is estimated using data-specific error models and the posterior of the seismic moment tensor is estimated and interpreted in terms of most-probable source-type.
Session: Advancements in Forensic Seismology and Explosion Monitoring - I
Type: Oral
Date: 4/17/2025
Presentation Time: 08:30 AM (local time)
Presenting Author: Andrea
Student Presenter: No
Invited Presentation:
Poster Number:
Authors
Andrea Chiang Presenting Author Corresponding Author chiang4@llnl.gov Lawrence Livermore National Laboratory |
Sean Ford ford17@llnl.gov Lawrence Livermore National Laboratory |
Michael Pasyanos pasyanos1@llnl.gov Lawrence Livermore National Laboratory |
Nathan Simmons simmons27@llnl.gov Lawrence Livermore National Laboratory |
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Bayesian Inference for the Seismic Moment Tensor Using Regional Waveforms and Teleseismic-P Polarities with a Data-derived Distribution of Velocity Models and Source Locations
Category
Advancements in Forensic Seismology and Explosion Monitoring