Generally, the local full-waveform inversion (LFWI) is solved in a deterministic framework, in which a single solution is produced, without quantifying its uncertainties. We propose a multi-step strategy for uncertainty estimation in FWI and we demonstrate its applicability to the acoustic 2D Marmousi model. To cast the LFWI in a probabilistic framework, we use a genetic algorithm driven optimization, combined with a Markov chain Monte Carlo method (Gibbs sampler). The so derived posterior probability distribution (PPD) defines a possible set of starting models for subsequent LFWI which, in turn, transforms the initial set of starting models in a new set of final models exhibiting narrower PPDs and containing the true model
We experience the application of a genetic algorithm driven full-waveform inversion (GA FWI) on two ...
In this work, we present a proof of concept for Bayesian full-waveform inversion (FWI) in 2-D. This ...
International audienceFull Waveform Inversion (FWI) is an ill-posed nonlinear inverse problem, which...
Generally, the local full-waveform inversion (LFWI) is solved in a deterministic framework, in which...
Full-waveform inversion (FWI) is a valuable tool to derive high-resolution models of the subsurface ...
Full-waveform inversion (FWI) tries to estimate velocity models of the subsurface with improved accu...
Stochastic optimization methods, such as genetic algorithms, search for the global minimum of the mi...
We present a stochastic full-waveform inversion that uses genetic algorithms (GA FWI) to estimate ac...
International audienceUncertainty Quantification is a major issue for most tomography problems. In t...
We apply stochastic Full Waveform Inversion (FWI) to 2D marine seismic data to estimate the macromod...
In this work, we illustrate an example of acoustic 2D FWI on a real data set extracted from a 3D vol...
We present a stochastic full-waveform inversion that makes use of a genetic algorithm to estimate ac...
We experience the application of a genetic algorithm driven full-waveform inversion (GA FWI) on two ...
In this work, we present a proof of concept for Bayesian full-waveform inversion (FWI) in 2-D. This ...
International audienceFull Waveform Inversion (FWI) is an ill-posed nonlinear inverse problem, which...
Generally, the local full-waveform inversion (LFWI) is solved in a deterministic framework, in which...
Full-waveform inversion (FWI) is a valuable tool to derive high-resolution models of the subsurface ...
Full-waveform inversion (FWI) tries to estimate velocity models of the subsurface with improved accu...
Stochastic optimization methods, such as genetic algorithms, search for the global minimum of the mi...
We present a stochastic full-waveform inversion that uses genetic algorithms (GA FWI) to estimate ac...
International audienceUncertainty Quantification is a major issue for most tomography problems. In t...
We apply stochastic Full Waveform Inversion (FWI) to 2D marine seismic data to estimate the macromod...
In this work, we illustrate an example of acoustic 2D FWI on a real data set extracted from a 3D vol...
We present a stochastic full-waveform inversion that makes use of a genetic algorithm to estimate ac...
We experience the application of a genetic algorithm driven full-waveform inversion (GA FWI) on two ...
In this work, we present a proof of concept for Bayesian full-waveform inversion (FWI) in 2-D. This ...
International audienceFull Waveform Inversion (FWI) is an ill-posed nonlinear inverse problem, which...