WISER: multimodal variational inference for full-waveform inversion without dimensionality reduction
Title | WISER: multimodal variational inference for full-waveform inversion without dimensionality reduction |
Publication Type | Unpublished |
Year of Publication | 2024 |
Authors | Ziyi Yin, Rafael Orozco, Felix J. Herrmann |
Month | 5 |
Keywords | Amortized 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. |
URL | https://slim.gatech.edu/Publications/Public/Submitted/2024/yin2024wiser/WISER.html |
DOI | 10.13140/RG.2.2.34906.15044 |
Citation Key | yin2024wiser |