Recent developments in uncertainty quantification show that a full inversion of model parameters is not always necessary to forecast the range of uncertainty of a specific prediction in Earth sciences. Instead, Bayesian evidential learning (BEL) uses a set of prior models to derive a direct relationship between data and prediction. This recent technique has been mostly demonstrated for synthetic cases. This paper demonstrates the ability of BEL to predict the posterior distribution of temperature in an alluvial aquifer during a cyclic heat tracer push-pull test. The data set corresponds to another push-pull experiment with different characteristics (amplitude, duration, number of cycles). This experiment constitutes the first demonstration ...
Identification of the soil-rock interface of geological profiles has been a challenging task for und...
In theory, aquifer thermal energy storage (ATES) systems can recover in winter the heat stored in th...
BEL1D has been newly introduced to the community as a viable algorithm for the stochastic interpreta...
Recent developments in uncertainty quantification show that a full inversion of model parameters is ...
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...
Decisions related to groundwater management such as sustainable extraction of drinking water or prot...
Groundwater management practices, such as sustainable drinking water extraction or contamination pro...
Decisions related to groundwater management such as sustainable extraction of drinking water or prot...
Geophysics is widely used to model the subsurface due to its combination of low-cost and large spati...
In theory, aquifer thermal energy storage (ATES) systems can recover in winter the heat stored in th...
Deterministic geophysical inversion suffers from a lack of realism because of the regularization, wh...
International audienceDeterministic geophysical inversion suffers from a lack of realism because of ...
Providing images of the subsurface from ground-based datasets is at the heart of the geophysicist’s...
BEL1D has been newly introduced to the community as a viable algorithm for the stochastic interpreta...
Identification of the soil-rock interface of geological profiles has been a challenging task for und...
In theory, aquifer thermal energy storage (ATES) systems can recover in winter the heat stored in th...
BEL1D has been newly introduced to the community as a viable algorithm for the stochastic interpreta...
Recent developments in uncertainty quantification show that a full inversion of model parameters is ...
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...
Decisions related to groundwater management such as sustainable extraction of drinking water or prot...
Groundwater management practices, such as sustainable drinking water extraction or contamination pro...
Decisions related to groundwater management such as sustainable extraction of drinking water or prot...
Geophysics is widely used to model the subsurface due to its combination of low-cost and large spati...
In theory, aquifer thermal energy storage (ATES) systems can recover in winter the heat stored in th...
Deterministic geophysical inversion suffers from a lack of realism because of the regularization, wh...
International audienceDeterministic geophysical inversion suffers from a lack of realism because of ...
Providing images of the subsurface from ground-based datasets is at the heart of the geophysicist’s...
BEL1D has been newly introduced to the community as a viable algorithm for the stochastic interpreta...
Identification of the soil-rock interface of geological profiles has been a challenging task for und...
In theory, aquifer thermal energy storage (ATES) systems can recover in winter the heat stored in th...
BEL1D has been newly introduced to the community as a viable algorithm for the stochastic interpreta...