Amortized Bayesian Full Waveform Inversion and Experimental Design with Normalizing Flows

TitleAmortized Bayesian Full Waveform Inversion and Experimental Design with Normalizing Flows
Publication TypeConference
Year of Publication2023
AuthorsRafael Orozco, Mathias Louboutin, Felix J. Herrmann
Conference NameInternational Meeting for Applied Geoscience and Energy
Month08
Keywordsbayesian, experimental design, FWI, Normalizing flows, SEG, Uncertainty quantification
Abstract

Probabilistic approaches to Full-Waveform Inversion (FWI), such as Bayesian ones, traditionally require expensive computations involving many wave-equation solves. To reduce the computational burden at test time, we propose to amortize the computational cost with offline training. After training, we aim to efficiently generate probabilistic FWI solutions with uncertainty. This aim is achieved by exploiting the ability of networks (i.e Normalizing Flows) to learn distributions, such as the Bayesian posterior. The posterior uncertainty is used during training to optimize the receiver sampling.

Notes

(IMAGE, Houston)

URLhttps://slimgroup.github.io/IMAGE2023/BayesianFWI/abstract.html
Presentation
Citation Keyorozco2023IMAGEabf