In this work, we present a proof of concept for Bayesian full-waveform inversion (FWI) in 2-D. This is based on approximate Langevin Monte Carlo sampling with a gradient-based adaptation of the posterior distribution. We apply our method to the Marmousi model, and it reliably recovers important aspects of the posterior, including the statistical moments, and 1-D and 2-D marginals. Depending on the variations of seismic velocities, the posterior can be significantly non-Gaussian, which directly suggest that using a Hessian approximation for uncertainty quantification in FWI may not be sufficient
One of the main objectives of reservoir characterization is to exploit the acquired seismic and well...
Abstract. Many Bayesian inference problems require exploring the posterior distribution of high-dime...
Many Bayesian inference problems require exploring the posterior distribution of high-dimensional pa...
In this work, we present a proof of concept for Bayesian full-waveform inversion (FWI) in 2-D. This ...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...
In this abstract, we review the gradient-based Markov Chain Monte Carlo (MCMC) and demonstrate its a...
In this abstract, we review the gradient-based Markov Chain Monte Carlo (MCMC) and demonstrate its a...
Seismic full-waveform inversion (FWI) provides high resolution images of the subsurface by exploitin...
A reliable assessment of the posterior uncertainties is a crucial aspect of any Amplitude Versus Ang...
In geophysical inverse problems, the posterior model can be analytically assessed only in case of li...
Full-waveform inversion within a deterministic framework commonly uses gradient-based methods to min...
Algorithms for inversion of seismic prestack AVO data into lithology-fluid classes in a vertical pro...
The main challenge of Markov chain Monte Carlo sampling is to define a proposal distribution that si...
We infer the elastic and petrophysical properties from pre-stack seismic data through a transdimensi...
One of the main objectives of reservoir characterization is to exploit the acquired seismic and well...
Abstract. Many Bayesian inference problems require exploring the posterior distribution of high-dime...
Many Bayesian inference problems require exploring the posterior distribution of high-dimensional pa...
In this work, we present a proof of concept for Bayesian full-waveform inversion (FWI) in 2-D. This ...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...
In this abstract, we review the gradient-based Markov Chain Monte Carlo (MCMC) and demonstrate its a...
In this abstract, we review the gradient-based Markov Chain Monte Carlo (MCMC) and demonstrate its a...
Seismic full-waveform inversion (FWI) provides high resolution images of the subsurface by exploitin...
A reliable assessment of the posterior uncertainties is a crucial aspect of any Amplitude Versus Ang...
In geophysical inverse problems, the posterior model can be analytically assessed only in case of li...
Full-waveform inversion within a deterministic framework commonly uses gradient-based methods to min...
Algorithms for inversion of seismic prestack AVO data into lithology-fluid classes in a vertical pro...
The main challenge of Markov chain Monte Carlo sampling is to define a proposal distribution that si...
We infer the elastic and petrophysical properties from pre-stack seismic data through a transdimensi...
One of the main objectives of reservoir characterization is to exploit the acquired seismic and well...
Abstract. Many Bayesian inference problems require exploring the posterior distribution of high-dime...
Many Bayesian inference problems require exploring the posterior distribution of high-dimensional pa...