We present a Bayesian tomography framework operating with prior-knowledge-based parametrization that is accelerated by surrogate models. Standard high-fidelity forward solvers solve wave equations with natural spatial parametrizations based on fine discretization. Similar parametrizations, typically involving tens of thousand of variables, are usually employed to parameterize the subsurface in tomography applications. When the data do not allow to resolve details at such finely parameterized scales, it is often beneficial to instead rely on a prior-knowledge-based parametrization defined on a lower dimension domain (or manifold). Due to the increased identifiability in the reduced domain, the concomitant inversion is better constrained and ...
We present a probabilistic full-waveform inversion (FWI) approach that infers a geostatistical model...
We propose a full-waveform inversion scheme to detect inhomogeneities in a medium with quatified unc...
A strategy is presented to incorporate prior information from conceptual geological models in probab...
International audienceWe present a Bayesian tomography framework operating with prior-knowledge-base...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
We present a probabilistic full-waveform inversion (FWI) approach that infers a geostatistical model...
We present a probabilistic full-waveform inversion (FWI) approach that infers a geostatistical model...
We propose a full-waveform inversion scheme to detect inhomogeneities in a medium with quatified unc...
A strategy is presented to incorporate prior information from conceptual geological models in probab...
International audienceWe present a Bayesian tomography framework operating with prior-knowledge-base...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate c...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
International audienceThis paper tackles the issue of the computational load encountered in seismic ...
We present a probabilistic full-waveform inversion (FWI) approach that infers a geostatistical model...
We present a probabilistic full-waveform inversion (FWI) approach that infers a geostatistical model...
We propose a full-waveform inversion scheme to detect inhomogeneities in a medium with quatified unc...
A strategy is presented to incorporate prior information from conceptual geological models in probab...