Bayesian Full-waveform Inversion with Realistic Priors
Xin Zhang, Andrew Curtis

TL;DR
This paper demonstrates that Bayesian full-waveform inversion can produce high-resolution subsurface images and reliable uncertainty estimates even with weak, realistic prior information, extending its practical applicability.
Contribution
First application of variational Bayesian FWI in seismic reflection data with realistic, weak priors, showing its effectiveness in practical scenarios.
Findings
Produces high-resolution images
Provides reliable uncertainty estimates
Effective with weak prior information
Abstract
Seismic full-waveform inversion (FWI) uses full seismic records to estimate subsurface velocity structure. This requires a highly nonlinear and nonunique inverse problem to be solved, and Bayesian methods have been used to quantify uncertainties in the solution. Variational Bayesian inference uses optimization to provide solutions efficiently. The method has been applied to solve a transmission FWI problem using data generated by known earthquake-like sources, with strong prior information imposed on the velocity. Unfortunately such prior information about velocity structure and earthquake sources is never available in practice. We present the first application of the method in a seismic reflection setting, and with realistically weak prior information. We thus demonstrate that the method can produce high resolution images and reliable uncertainties given practically reasonable prior…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Seismic Waves and Analysis · Hydraulic Fracturing and Reservoir Analysis
