Uncertainty-aware Frequency-domain Acoustic Full Waveform Inversion Using Gaussian Random Fields and Ensemble Kalman Inversion
Yunduo Li, Yijie Zhang, Xueyu Zhu, Jinghuai Gao

TL;DR
This paper presents a computationally efficient uncertainty-aware full waveform inversion method that combines Gaussian random fields with ensemble Kalman inversion to produce accurate subsurface velocity models with uncertainty estimates.
Contribution
It introduces EKI-GRFs-FWI, a novel framework integrating Gaussian random fields with ensemble Kalman inversion for efficient uncertainty quantification in FWI.
Findings
Produces accurate velocity reconstructions
Provides reliable uncertainty estimates
Operates efficiently on large-scale problems
Abstract
In recent years, uncertainty-aware full waveform inversion (FWI) has received increasing attention, with a growing emphasis on producing informative uncertainty estimates alongside inversion results. Bayesian inference methods--particularly Monte Carlo-based approaches--have been widely employed to quantify uncertainty. However, these techniques often require extensive posterior sampling, resulting in high computational costs. To address this challenge and enable efficient uncertainty quantification in FWI, we introduce an uncertainty-aware FWI framework--EKI-GRFs-FWI--that integrates Gaussian random fields (GRFs) with the ensemble Kalman inversion (EKI) algorithm. This approach jointly infers subsurface velocity fields and provides reliable uncertainty estimates in a computationally efficient manner. The EKI algorithm leverages a derivative-free update mechanism and employs effective…
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