Abstract

SUMMARYThis work considers the reconstruction of a subsurface model from seismic observations, which is known to be a high-dimensional and ill-posed inverse problem. Two approaches are combined to tackle this problem: the discrete cosine transform (DCT) approach, used in the forward modelling step, and the variational Bayesian (VB) approach, used in the inverse reconstruction step. VB can provide not only point estimates but also closed forms of the full posterior probability distributions. To efficiently compute such estimates of the full joint posterior distributions of large-scale seismic inverse problems, we resort to a DCT order-reduction scheme with a VB approximation of the posteriors, avoiding the need for costly Bayesian sampling methods. More specifically, we first reduce the model parameters through truncation of their DCT coefficients. This helps regularizing our seismic inverse problem and alleviates its computational complexity. Then, we apply a VB inference in the reduced-DCT space to estimate the dominant (retained) DCT coefficients together with the variance of the observational noise. We also present an efficient implementation of the derived VB-based algorithm for further cost reduction. The performances of the proposed scheme are evaluated through extensive numerical experiments for both linear and nonlinear forward models. In the former, the subsurface reflectivity model was reconstructed at a comparable estimation accuracy as the optimal weighted-regularized-least-squares solution. In the latter, the main structural features of the squared slowness model were well reconstructed.

Highlights

  • A Reduced-order Variational Bayesian Approach for Efficient Subsurface ImagingD., Ait-El-Fquih, B., Hoteit, I., & Peter, D

  • Full-waveform inversion (FWI) was introduced to fully exploit the information in seismic waveforms in order to obtain better reconstructions of subsurface models (e.g., Lailly 1983; Tarantola 1984; Mora 1988)

  • D For geophysical problems, the Variational Bayesian (VB) approach was recently demonstrated to provide comE parable performances to Markov-Chain Monte Carlo (MCMC) in terms of estimation accuracy at significantly reduced IT computational cost (Nawaz & Curtis 2018; Ait-El-Fquih et al 2019; Zhang & Curtis 2019, 2020)

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Summary

A Reduced-order Variational Bayesian Approach for Efficient Subsurface Imaging

D., Ait-El-Fquih, B., Hoteit, I., & Peter, D. A Reduced-order Variational Bayesian Approach for Efficient Subsurface Imaging. J. Int. King Abdullah University of Science and Technology (KAUST), Thuwal, Saudi Arabia

SUMMARY
INTRODUCTION
PROBLEM FORMULATION
Approximation of the posterior using the VB approach
Computation of the VB posteriors
Linear forward model
Non-linear forward model
Efficient implementation of the proposed VB scheme
A The update equation involves the computation of the trace of
Findings
CONCLUSION
Full Text
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