WISER: multimodal variational inference for full-waveform inversion without dimensionality reduction

TitleWISER: multimodal variational inference for full-waveform inversion without dimensionality reduction
Publication TypeUnpublished
Year of Publication2024
AuthorsZiyi Yin, Rafael Orozco, Felix J. Herrmann
Month5
KeywordsAmortized Variational Inference, Bayesian inference, CIG, conditional normalizing flows, deep learning, FWI, Imaging, Inverse problems, MVA, Summary Statistics, Uncertainty quantification, WISE, WISER
Abstract

We present a semi-amortized variational inference framework designed for computationally feasible uncertainty quantification in 2D full-waveform inversion to explore the multimodal posterior distribution without dimensionality reduction. The framework is called WISER, short for full-Waveform variational Inference via Subsurface Extensions with Refinements. WISER leverages the power of generative artificial intelligence to perform approximate amortized inference that is low-cost albeit showing an amortization gap. This gap is closed through non-amortized refinements that make frugal use of acoustic wave physics. Case studies illustrate that WISER is capable of full-resolution, computationally feasible, and reliable uncertainty estimates of velocity models and imaged reflectivities.

URLhttps://slim.gatech.edu/Publications/Public/Submitted/2024/yin2024wiser/WISER.html
DOI10.13140/RG.2.2.34906.15044
Citation Keyyin2024wiser