The reconstruction of porous media is widely used in the study of fluid flows and engineering sciences. Some traditional reconstruction methods for porous media use the features extracted from real natural porous media and copy them to realize reconstructions. Currently, as one of the important branches of machine learning methods, the deep transfer learning (DTL) method has shown good performance in extracting features and transferring them to the predicted objects, which can be used for the reconstruction of porous media. Hence, a method for reconstructing porous media is presented by applying DTL to extract features from a training image (TI) of porous media to replace the process of scanning a TI for different patterns as in multiple-po...
Porosity is an important parameter for the oil and gas storage, which reflects the geological charac...
ABSTRACT The creation of a 3D pore-scale model of a porous medium is an important step in quantitati...
The heterogeneous pore space of porous media strongly affects the storage and migration of oil and g...
To evaluate the variability of multiphase flow properties of porous media at the pore scale, it is n...
Pore space reconstruction is of great significance to some fields such as the study of seepage mecha...
DeePore is a deep learning workflow for rapid estimation of a wide range of porous material properti...
Data-driven deep learning models are emerging as a new method to predict the flow and transport thro...
Three dimensional reconstruction of porous media using limited statistical information has attracted...
Numerical modelling of the pore structure of porous media is still one of the most powerful tools fo...
Porous media are ubiquitous in the natural environment and engineering, and typical ex-amples includ...
Understanding how fluids flow through permeable structures in the subsurface is paramount in the des...
The pore structure reconstruction of the porous media is of great importance to the research of mech...
© 2017 American Physical Society, http://dx.doi.org/10.1103/PhysRevE.96.023307Obtaining structural i...
The three-dimensional high-resolution imaging of rock samples is the basis for pore-scale character...
This paper presents a hybrid deep learning framework that combines graph neural networks with convol...
Porosity is an important parameter for the oil and gas storage, which reflects the geological charac...
ABSTRACT The creation of a 3D pore-scale model of a porous medium is an important step in quantitati...
The heterogeneous pore space of porous media strongly affects the storage and migration of oil and g...
To evaluate the variability of multiphase flow properties of porous media at the pore scale, it is n...
Pore space reconstruction is of great significance to some fields such as the study of seepage mecha...
DeePore is a deep learning workflow for rapid estimation of a wide range of porous material properti...
Data-driven deep learning models are emerging as a new method to predict the flow and transport thro...
Three dimensional reconstruction of porous media using limited statistical information has attracted...
Numerical modelling of the pore structure of porous media is still one of the most powerful tools fo...
Porous media are ubiquitous in the natural environment and engineering, and typical ex-amples includ...
Understanding how fluids flow through permeable structures in the subsurface is paramount in the des...
The pore structure reconstruction of the porous media is of great importance to the research of mech...
© 2017 American Physical Society, http://dx.doi.org/10.1103/PhysRevE.96.023307Obtaining structural i...
The three-dimensional high-resolution imaging of rock samples is the basis for pore-scale character...
This paper presents a hybrid deep learning framework that combines graph neural networks with convol...
Porosity is an important parameter for the oil and gas storage, which reflects the geological charac...
ABSTRACT The creation of a 3D pore-scale model of a porous medium is an important step in quantitati...
The heterogeneous pore space of porous media strongly affects the storage and migration of oil and g...