2024
DOI: 10.1029/2024jb029557
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Physically Structured Variational Inference for Bayesian Full Waveform Inversion

Xuebin Zhao,
Andrew Curtis

Abstract: Full waveform inversion (FWI) creates high resolution models of the Earth's subsurface structures from seismic waveform data. Due to the non‐linearity and non‐uniqueness of FWI problems, finding globally best‐fitting model solutions is not necessarily desirable since they fit noise as well as the desired signal in data. Bayesian FWI calculates a so‐called posterior probability distribution function, which describes all possible model solutions and their uncertainties. In this paper, we solve Bayesian FWI using… Show more

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