A Bayesian-based approach to improving acoustic Born waveform inversion of seismic data for viscoelastic media
Kenneth Muhumuza, Lassi Roininen, Janne M. J. Huttunen, Timo, L\"ahivaara

TL;DR
This paper introduces a Bayesian correction method to improve seismic waveform inversion in viscoelastic media, addressing errors caused by simplified models and enhancing subsurface property reconstruction.
Contribution
It proposes a Bayesian approximation error approach to account for viscoelastic effects in acoustic Born inversion, improving accuracy over traditional methods.
Findings
Bayesian correction reduces reconstruction errors in viscoelastic media.
Neglecting modeling errors leads to poor velocity field recovery.
Numerical examples demonstrate improved inversion results with the proposed method.
Abstract
In seismic waveform inversion, the reconstruction of the subsurface properties is usually carried out using approximative wave propagation models to ensure computational efficiency. The viscoelastic nature of the subsurface is often unaccounted for, and two popular approximations--the acoustic and linearized Born inversion--are widely used. This leads to reconstruction errors since the approximations ignore realistic (physical) aspects of seismic wave propagation in the heterogeneous earth. In this study, we show that the Bayesian approximation error approach can be used to partially recover from errors, addressing elastic and viscous effects in acoustic Born inversion for viscoelastic media. The results of numerical examples indicate that neglecting the modelling errors induced by the approximations results in very poor recovery of the subsurface velocity fields.
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