In this abstract, we review the gradient-based Markov Chain Monte Carlo (MCMC) and demonstrate its applicability in inferring the uncertainty in seismic inversion. There are many flavours of gradient-based MCMC; here, we will only focus on the Unadjusted Langevin algorithm (ULA) and Metropolis-Adjusted Langevin algorithm (MALA). We propose an adaptive step-length based on the Lipschitz condition within ULA to automate the tuning of step-length and suppress the Metropolis-Hastings acceptance step in MALA. We consider the linear seismic travel-time tomography problem as a numerical example to demonstrate the applicability of both methods
textOne of the important goals in petroleum exploration and production is to make quantitative estim...
Tyt. z nagłówka.Bibliogr. s. 464.Inversion of seismic tomography is non-uniqueness and bad-condition...
We use a transdimensional inversion algorithm, reversible jump MCMC (rjMCMC), in the seismic wavefor...
In this abstract, we review the gradient-based Markov Chain Monte Carlo (MCMC) and demonstrate its a...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...
The main challenge of Markov chain Monte Carlo sampling is to define a proposal distribution that si...
In this work, we present a proof of concept for Bayesian full-waveform inversion (FWI) in 2-D. This ...
Conventional linear seismic tomography methods have limitations in solving nonlinear problems, such ...
International audienceMarkov chain Monte Carlo sampling methods are widely used for non-linear Bayes...
A reliable assessment of the posterior uncertainties is a crucial aspect of any Amplitude Versus Ang...
We infer the elastic and petrophysical properties from pre-stack seismic data through a transdimensi...
We implement a transdimensional Bayesian inversion that infers petrophysical reservoir properties, l...
One of the main objectives of reservoir characterization is to exploit the acquired seismic and well...
The reversible jump algorithm is a statistical method for Bayesian inference with a variable number ...
We describe a two-step Bayesian algorithm for seismic-reservoir characterization, which, thanks to s...
textOne of the important goals in petroleum exploration and production is to make quantitative estim...
Tyt. z nagłówka.Bibliogr. s. 464.Inversion of seismic tomography is non-uniqueness and bad-condition...
We use a transdimensional inversion algorithm, reversible jump MCMC (rjMCMC), in the seismic wavefor...
In this abstract, we review the gradient-based Markov Chain Monte Carlo (MCMC) and demonstrate its a...
In this study, we aim to solve the seismic inversion in the Bayesian framework by generating samples...
The main challenge of Markov chain Monte Carlo sampling is to define a proposal distribution that si...
In this work, we present a proof of concept for Bayesian full-waveform inversion (FWI) in 2-D. This ...
Conventional linear seismic tomography methods have limitations in solving nonlinear problems, such ...
International audienceMarkov chain Monte Carlo sampling methods are widely used for non-linear Bayes...
A reliable assessment of the posterior uncertainties is a crucial aspect of any Amplitude Versus Ang...
We infer the elastic and petrophysical properties from pre-stack seismic data through a transdimensi...
We implement a transdimensional Bayesian inversion that infers petrophysical reservoir properties, l...
One of the main objectives of reservoir characterization is to exploit the acquired seismic and well...
The reversible jump algorithm is a statistical method for Bayesian inference with a variable number ...
We describe a two-step Bayesian algorithm for seismic-reservoir characterization, which, thanks to s...
textOne of the important goals in petroleum exploration and production is to make quantitative estim...
Tyt. z nagłówka.Bibliogr. s. 464.Inversion of seismic tomography is non-uniqueness and bad-condition...
We use a transdimensional inversion algorithm, reversible jump MCMC (rjMCMC), in the seismic wavefor...