Functional regression-based fluid permeability prediction in monodisperse sphere packings from isotropic two-point correlation functions
Journal article, 2017

We study fluid permeability in random sphere packings consisting of impermeable monodisperse hard spheres. Several different pseudo-potential models are used to obtain varying degrees of microstructural heterogeneity. Systematically varying solid volume fraction and degree of heterogeneity, virtual screening of more than 10,000 material structures is performed, simulating fluid flow using a lattice Boltzmann framework and computing the permeability. We develop a well-performing functional regression model for permeability prediction based on using isotropic two-point correlation functions as microstructural descriptors. The performance is good over a large range of solid volume fractions and degrees of heterogeneity, and to our knowledge this is the first attempt at using two-point correlation functions as functional predictors in a nonparametric statistics/machine learning context for permeability prediction.

Granular materials

Correlation functions

Permeability

Functional regression

Sphere packings

Author

Magnus Röding

Chalmers, Mathematical Sciences, Applied Mathematics and Statistics

RISE Research Institutes of Sweden

SuMo Biomaterials

Peter Svensson

RISE Research Institutes of Sweden

Niklas Lorén

RISE Research Institutes of Sweden

SIK – the Swedish Institute for Food and Biotechnology

SuMo Biomaterials

Computational Materials Science

0927-0256 (ISSN)

Vol. 134 126-131

Subject Categories

Other Physics Topics

Areas of Advance

Materials Science

DOI

10.1016/j.commatsci.2017.03.042

More information

Latest update

11/15/2021