Monte Carlo Markov Chain (MCMC) methods commonly confront two fundamental challenges: the accurate characterization of the prior distribution and the efficient evaluation of the likelihood. In the context of Bayesian studies on tomography, principal component analysis (PCA) can in some cases facilitate the straightforward definition of the prior distribution, while simultaneously enabling the implementation of accurate surrogate models based on polynomial chaos expansion (PCE) to replace computationally intensive full-physics forward solvers. When faced with scenarios where PCA does not offer a direct means of easily defining the prior distribution alternative methods like deep generative models (e.g., variational autoencoders (VAEs)), can ...
Bayesian model selection enables comparison and ranking of conceptual subsurface models described by...
A strategy is presented to incorporate prior information from conceptual geological models in probab...
Inverse problems are notoriously difficult to solve because they can have no solutions, multiple sol...
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 audienceWe present a Bayesian tomography framework operating with prior-knowledge-base...
We present a Bayesian tomography framework operating with prior-knowledge-based parametrization that...
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 ...
Geological process models simulate a range of dynamic processes to evolve a base topography into a f...
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 ...
Bayesian model selection enables comparison and ranking of conceptual subsurface models described by...
A strategy is presented to incorporate prior information from conceptual geological models in probab...
Inverse problems are notoriously difficult to solve because they can have no solutions, multiple sol...
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 audienceWe present a Bayesian tomography framework operating with prior-knowledge-base...
We present a Bayesian tomography framework operating with prior-knowledge-based parametrization that...
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 ...
Geological process models simulate a range of dynamic processes to evolve a base topography into a f...
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 ...
Bayesian model selection enables comparison and ranking of conceptual subsurface models described by...
A strategy is presented to incorporate prior information from conceptual geological models in probab...
Inverse problems are notoriously difficult to solve because they can have no solutions, multiple sol...