Deterministic geophysical inversion suffers from a lack of realism because of the regularization, while stochastic inversion allowing for uncertainty quantification is computationally expensive. In this contribution, we propose to use Bayesian Evidential Learning as an alternative to hydrogeophysical coupled inversion. We demonstrate the ability of the approach to successfully predict a hydrogeological target from time-lapse ERT data in the context of a heat injection and storage experiment
In inverse problems, investigating uncertainty in the posterior distribution of model parameters is ...
International audienceTemperature logs are an important tool in the geothermal industry. Temperature...
peer reviewedImaging the subsurface of the Earth is of prime concern in geosciences. In this scope, ...
International audienceDeterministic geophysical inversion suffers from a lack of realism because of ...
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...
Recent developments in uncertainty quantification show that a full inversion of model parameters is ...
Imaging the subsurface of the Earth is of prime concern in geosciences. In this scope, geophysics of...
Bayesian Markov-chain Monte Carlo (McMC) techniques are increasingly being used in geophysical estim...
peer reviewedThe non-uniqueness of the solution of inverse geophysical problem has been recognized f...
Geophysics is widely used to model the subsurface due to its combination of low-cost and large spati...
Decisions related to groundwater management such as sustainable extraction of drinking water or prot...
In theory, aquifer thermal energy storage (ATES) systems can recover in winter the heat stored in th...
Groundwater management practices, such as sustainable drinking water extraction or contamination pro...
Providing images of the subsurface from ground-based datasets is at the heart of the geophysicist’s...
In inverse problems, investigating uncertainty in the posterior distribution of model parameters is ...
International audienceTemperature logs are an important tool in the geothermal industry. Temperature...
peer reviewedImaging the subsurface of the Earth is of prime concern in geosciences. In this scope, ...
International audienceDeterministic geophysical inversion suffers from a lack of realism because of ...
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...
Recent developments in uncertainty quantification show that a full inversion of model parameters is ...
Imaging the subsurface of the Earth is of prime concern in geosciences. In this scope, geophysics of...
Bayesian Markov-chain Monte Carlo (McMC) techniques are increasingly being used in geophysical estim...
peer reviewedThe non-uniqueness of the solution of inverse geophysical problem has been recognized f...
Geophysics is widely used to model the subsurface due to its combination of low-cost and large spati...
Decisions related to groundwater management such as sustainable extraction of drinking water or prot...
In theory, aquifer thermal energy storage (ATES) systems can recover in winter the heat stored in th...
Groundwater management practices, such as sustainable drinking water extraction or contamination pro...
Providing images of the subsurface from ground-based datasets is at the heart of the geophysicist’s...
In inverse problems, investigating uncertainty in the posterior distribution of model parameters is ...
International audienceTemperature logs are an important tool in the geothermal industry. Temperature...
peer reviewedImaging the subsurface of the Earth is of prime concern in geosciences. In this scope, ...