Effective properties of functional materials crucially depend on their 3D microstructure. In this paper, we investigate quantitative relationships between descriptors of two-phase microstructures, consisting of solid and pores and their mass transport properties. To that end, we generate a vast database comprising 90,000 microstructures drawn from nine different stochastic models, and compute their effective diffusivity and permeability as well as various microstructural descriptors. To the best of our knowledge, this is the largest and most diverse dataset created for studying the influence of 3D microstructure on mass transport. In particular, we establish microstructure-property relationships using analytical prediction formulas, artific...
International audienceEffective conductivity and permeability of a versatile, graph-based model of r...
Effective conductivity and permeability of a versatile, graph-based model of random structures are i...
By combining metal nodes with organic linkers we can potentially synthesize millions of possible met...
Dataset and code used in B Prifling, et al, "Large-scale statistical learning for mass transport pre...
Quantitative structure–property relationships are crucial for the understanding and prediction of th...
The analysis of big data is changing industries, businesses and research as large amounts of data ar...
Porous media are ubiquitous in the natural environment and engineering, and typical ex-amples includ...
The goal of our contribution was to develop a method providing morphological (microstructural) descr...
The relationships between macroscopic properties and microstructural characteristics are of great si...
The microstructure influence on conductive transport processes is described in terms of volume fract...
The three-dimensional microstructure of functional materials determines its effective properties, li...
Determining structure-transport relationships is critical to optimising the activity and selectivity...
WOS:000368434600025International audienceTransfers through porous materials where the driving force ...
Determining structure-transport relationships is critical to optimising the activity and selectivity...
This work addresses a number of fundamental questions regarding the topological description of mater...
International audienceEffective conductivity and permeability of a versatile, graph-based model of r...
Effective conductivity and permeability of a versatile, graph-based model of random structures are i...
By combining metal nodes with organic linkers we can potentially synthesize millions of possible met...
Dataset and code used in B Prifling, et al, "Large-scale statistical learning for mass transport pre...
Quantitative structure–property relationships are crucial for the understanding and prediction of th...
The analysis of big data is changing industries, businesses and research as large amounts of data ar...
Porous media are ubiquitous in the natural environment and engineering, and typical ex-amples includ...
The goal of our contribution was to develop a method providing morphological (microstructural) descr...
The relationships between macroscopic properties and microstructural characteristics are of great si...
The microstructure influence on conductive transport processes is described in terms of volume fract...
The three-dimensional microstructure of functional materials determines its effective properties, li...
Determining structure-transport relationships is critical to optimising the activity and selectivity...
WOS:000368434600025International audienceTransfers through porous materials where the driving force ...
Determining structure-transport relationships is critical to optimising the activity and selectivity...
This work addresses a number of fundamental questions regarding the topological description of mater...
International audienceEffective conductivity and permeability of a versatile, graph-based model of r...
Effective conductivity and permeability of a versatile, graph-based model of random structures are i...
By combining metal nodes with organic linkers we can potentially synthesize millions of possible met...