In several applications concerning underground flow simulations in fractured media, the fractured rock matrix is modeled by means of the Discrete Fracture Network (DFN) model. The fractures are typically described through stochastic parameters sampled from known distributions. In this framework, it is worth considering the application of suitable complexity reduction techniques, also in view of possible uncertainty quantification analyses or other applications requiring a fast approximation of the flow through the network. Herein, we propose the application of Neural Networks to flux regression problems in a DFN characterized by stochastic trasmissivities as an approach to predict fluxes
Fractures are ubiquitous geological structures controlling both flows and rock mechanical strength. ...
Under embargo until: 2020-10-10Simulations of fluid flow in naturally fractured rocks have implicati...
The geological Discrete Fracture Network (DFN) model is a statistical model for stochastically simul...
AbstractIn several applications concerning underground flow simulations in fractured media, the frac...
In this work, we investigate the sensitivity of a family of multi-task Deep Neural Networks (DNN) tr...
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...
We consider flows in fractured media, described by Discrete Fracture Network (DFN) models. We perfor...
Among the major challenges in performing underground flow simulations in fractured media are geometr...
L’identification des fractures perméables dans le sous-sol est essentielle pour déterminer les voies...
International audienceFractures are key elements governing permeability and flow paths in crystallin...
We present a method combining multilevel Monte Carlo (MLMC) and a graph‐based primary subnetwork ide...
We focus on the simulation of underground flow in fractured media, modeled by means of Discrete Frac...
In the framework of flow simulations in Discrete Fracture Networks (DFN), we consider the problem of...
International audienceWe present progress on Discrete Fracture Network (DFN) flow modeling, includin...
Fractures are ubiquitous geological structures controlling both flows and rock mechanical strength. ...
Under embargo until: 2020-10-10Simulations of fluid flow in naturally fractured rocks have implicati...
The geological Discrete Fracture Network (DFN) model is a statistical model for stochastically simul...
AbstractIn several applications concerning underground flow simulations in fractured media, the frac...
In this work, we investigate the sensitivity of a family of multi-task Deep Neural Networks (DNN) tr...
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...
We consider flows in fractured media, described by Discrete Fracture Network (DFN) models. We perfor...
Among the major challenges in performing underground flow simulations in fractured media are geometr...
L’identification des fractures perméables dans le sous-sol est essentielle pour déterminer les voies...
International audienceFractures are key elements governing permeability and flow paths in crystallin...
We present a method combining multilevel Monte Carlo (MLMC) and a graph‐based primary subnetwork ide...
We focus on the simulation of underground flow in fractured media, modeled by means of Discrete Frac...
In the framework of flow simulations in Discrete Fracture Networks (DFN), we consider the problem of...
International audienceWe present progress on Discrete Fracture Network (DFN) flow modeling, includin...
Fractures are ubiquitous geological structures controlling both flows and rock mechanical strength. ...
Under embargo until: 2020-10-10Simulations of fluid flow in naturally fractured rocks have implicati...
The geological Discrete Fracture Network (DFN) model is a statistical model for stochastically simul...