BEL1D has been newly introduced to the community as a viable algorithm for the stochastic interpretation of geophysical data in the form of 1D geological models. It relies on a simplified version of the Bayesian problem in reduced space called Bayesian Evidential Learning. However, the method is closer to machine learning than classical McMC approaches since it can be separated into a learning process followed by a prediction part. The learning phase consists in constituting statistical relationships between models parameters and geophysical data from a training set of numerical models. The prediction phase then samples the previous relationships according to field data. Compared to other stochastic methods such as McMC, BEL1D as key advant...
peer reviewedRecent developments in uncertainty quantification show that a full inversion of model p...
International audienceRecent developments in uncertainty quantification show that a full inversion o...
Deterministic geophysical inversion suffers from a lack of realism because of the regularization, wh...
BEL1D has been newly introduced to the community as a viable algorithm for the stochastic interpreta...
Geophysics is widely used to model the subsurface due to its combination of low-cost and large spati...
Bayesian Evidential Learning 1D Imaging (BEL1D) has been recently introduced as a new computationall...
peer reviewedImaging the subsurface of the Earth is of prime concern in geosciences. In this scope, ...
BEL1D (Bayesian Evidential Learning 1D imaging) has recently been introduced as a viable option for ...
Imaging the subsurface of the Earth is of prime concern in geosciences. In this scope, geophysics of...
peer reviewedThe non-uniqueness of the solution of inverse geophysical problem has been recognized f...
Providing images of the subsurface from ground-based datasets is at the heart of the geophysicist’s...
Accurate subsurface imaging through geophysics is of prime importance for many geological and hydrog...
Recent developments in uncertainty quantification show that a full inversion of model parameters is ...
Subsurface is of prime importance for many geological and hydrogeological applications. Geophysical...
The interpretation of sNMR data is still mainly performed using deterministic or stochastic inversi...
peer reviewedRecent developments in uncertainty quantification show that a full inversion of model p...
International audienceRecent developments in uncertainty quantification show that a full inversion o...
Deterministic geophysical inversion suffers from a lack of realism because of the regularization, wh...
BEL1D has been newly introduced to the community as a viable algorithm for the stochastic interpreta...
Geophysics is widely used to model the subsurface due to its combination of low-cost and large spati...
Bayesian Evidential Learning 1D Imaging (BEL1D) has been recently introduced as a new computationall...
peer reviewedImaging the subsurface of the Earth is of prime concern in geosciences. In this scope, ...
BEL1D (Bayesian Evidential Learning 1D imaging) has recently been introduced as a viable option for ...
Imaging the subsurface of the Earth is of prime concern in geosciences. In this scope, geophysics of...
peer reviewedThe non-uniqueness of the solution of inverse geophysical problem has been recognized f...
Providing images of the subsurface from ground-based datasets is at the heart of the geophysicist’s...
Accurate subsurface imaging through geophysics is of prime importance for many geological and hydrog...
Recent developments in uncertainty quantification show that a full inversion of model parameters is ...
Subsurface is of prime importance for many geological and hydrogeological applications. Geophysical...
The interpretation of sNMR data is still mainly performed using deterministic or stochastic inversi...
peer reviewedRecent developments in uncertainty quantification show that a full inversion of model p...
International audienceRecent developments in uncertainty quantification show that a full inversion o...
Deterministic geophysical inversion suffers from a lack of realism because of the regularization, wh...