We present a method combining multilevel Monte Carlo (MLMC) and a graph‐based primary subnetwork identification algorithm to provide estimates of the mean and variance of the distribution of first passage times in fracture media at significantly lower computational cost than standard Monte Carlo (MC) methods. Simulations of solute transport are performed using a discrete fracture network (DFN) and instead of using various grid resolutions for levels in the MLMC, which is standard practice in MLMC, we identify a hierarchy of subnetworks in the DFN based on the shortest topological paths through the network using a graph‐based method. While the mean of these ensembles is of critical importance, the variance is also essential in fractured medi...
L’identification des fractures perméables dans le sous-sol est essentielle pour déterminer les voies...
International audienceA major use of Discrete Fracture Network models (DFN) is to evaluate permeabil...
International audienceA major use of DFN models for industrial applications is to evaluate permeabil...
Discrete Fracture Network (DFN) flow simulations are commonly used to determine the outflow in fract...
We consider the problem of uncertainty quantification analysis of the output of underground flow sim...
This study presents the stochastic Monte Carlo simulation (MCS) to assess the uncertainty of flow an...
AbstractIn several applications concerning underground flow simulations in fractured media, the frac...
Among the major challenges in performing underground flow simulations in fractured media are geometr...
We consider flows in fractured media, described by Discrete Fracture Network (DFN) models. We perfor...
International audienceFractures are key elements governing permeability and flow paths in crystallin...
In this work, we investigate the sensitivity of a family of multi-task Deep Neural Networks (DNN) tr...
Natural fractures conduct fluids in subsurface reservoirs. Quick and realistic predictions of the fr...
Characterization of fracture geometry and distribution is important for understanding fluid flow in ...
We investigate large-scale particle motion and solute breakthrough in sparse three-dimensional discr...
International audienceWe present progress on Discrete Fracture Network (DFN) flow modeling, includin...
L’identification des fractures perméables dans le sous-sol est essentielle pour déterminer les voies...
International audienceA major use of Discrete Fracture Network models (DFN) is to evaluate permeabil...
International audienceA major use of DFN models for industrial applications is to evaluate permeabil...
Discrete Fracture Network (DFN) flow simulations are commonly used to determine the outflow in fract...
We consider the problem of uncertainty quantification analysis of the output of underground flow sim...
This study presents the stochastic Monte Carlo simulation (MCS) to assess the uncertainty of flow an...
AbstractIn several applications concerning underground flow simulations in fractured media, the frac...
Among the major challenges in performing underground flow simulations in fractured media are geometr...
We consider flows in fractured media, described by Discrete Fracture Network (DFN) models. We perfor...
International audienceFractures are key elements governing permeability and flow paths in crystallin...
In this work, we investigate the sensitivity of a family of multi-task Deep Neural Networks (DNN) tr...
Natural fractures conduct fluids in subsurface reservoirs. Quick and realistic predictions of the fr...
Characterization of fracture geometry and distribution is important for understanding fluid flow in ...
We investigate large-scale particle motion and solute breakthrough in sparse three-dimensional discr...
International audienceWe present progress on Discrete Fracture Network (DFN) flow modeling, includin...
L’identification des fractures perméables dans le sous-sol est essentielle pour déterminer les voies...
International audienceA major use of Discrete Fracture Network models (DFN) is to evaluate permeabil...
International audienceA major use of DFN models for industrial applications is to evaluate permeabil...