Quantitative structure–property relationships are crucial for the understanding and prediction of the physical properties of complex materials. For fluid flow in porous materials, characterizing the geometry of the pore microstructure facilitates prediction of permeability, a key property that has been extensively studied in material science, geophysics and chemical engineering. In this work, we study the predictability of different structural descriptors via both linear regressions and neural networks. A large data set of 30,000 virtual, porous microstructures of different types, including both granular and continuous solid phases, is created for this end. We compute permeabilities of these structures using the lattice Boltzmann method, an...
WOS:000368434600025International audienceTransfers through porous materials where the driving force ...
We study the permeability of quasi-two-dimensional porous structures of randomly placed overlapping ...
For a broad range of applications, the most important transport property of porous media is permeabi...
Dataset and code used in M. Röding, et al, "Predicting permeability via statistical learning on high...
Effective properties of functional materials crucially depend on their 3D microstructure. In this pa...
The relationships between macroscopic properties and microstructural characteristics are of great si...
© 2016 Taylor & FrancisWell-known analytical equations for predicting permeability are generally rep...
Porous media are ubiquitous in the natural environment and engineering, and typical ex-amples includ...
Dataset and code used in B Prifling, et al, "Large-scale statistical learning for mass transport pre...
A novel method for permeability prediction is presented using multivariant structural regression. A ...
We study fluid permeability in random sphere packings consisting of impermeable monodisperse hard sp...
This paper presents a hybrid deep learning framework that combines graph neural networks with convol...
The study of fluid flow in porous media is important in many fields from oil recovery and carbon seq...
Agent fate in porous building materials is currently a topic of national concern, with possible appl...
Permeability is an important property of a porous medium and it controls the flow of fluid through t...
WOS:000368434600025International audienceTransfers through porous materials where the driving force ...
We study the permeability of quasi-two-dimensional porous structures of randomly placed overlapping ...
For a broad range of applications, the most important transport property of porous media is permeabi...
Dataset and code used in M. Röding, et al, "Predicting permeability via statistical learning on high...
Effective properties of functional materials crucially depend on their 3D microstructure. In this pa...
The relationships between macroscopic properties and microstructural characteristics are of great si...
© 2016 Taylor & FrancisWell-known analytical equations for predicting permeability are generally rep...
Porous media are ubiquitous in the natural environment and engineering, and typical ex-amples includ...
Dataset and code used in B Prifling, et al, "Large-scale statistical learning for mass transport pre...
A novel method for permeability prediction is presented using multivariant structural regression. A ...
We study fluid permeability in random sphere packings consisting of impermeable monodisperse hard sp...
This paper presents a hybrid deep learning framework that combines graph neural networks with convol...
The study of fluid flow in porous media is important in many fields from oil recovery and carbon seq...
Agent fate in porous building materials is currently a topic of national concern, with possible appl...
Permeability is an important property of a porous medium and it controls the flow of fluid through t...
WOS:000368434600025International audienceTransfers through porous materials where the driving force ...
We study the permeability of quasi-two-dimensional porous structures of randomly placed overlapping ...
For a broad range of applications, the most important transport property of porous media is permeabi...