Predicting permeability via statistical learning on higher-order microstructural information
Magnus R\"oding, Zheng Ma, Salvatore Torquato

TL;DR
This study demonstrates that combining higher-order microstructural descriptors with neural networks significantly improves the prediction of permeability in porous materials, surpassing traditional regression models.
Contribution
The paper introduces a comprehensive approach using multiple correlation functions and neural networks to enhance permeability prediction accuracy.
Findings
Neural networks outperform linear regressions in permeability prediction.
Combining all three two-point correlation functions and tortuosity yields the best results.
Void-void correlation function is the most informative individual descriptor.
Abstract
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 is created for this end. We compute permeabilities of these structures using the lattice Boltzmann method, and characterize the pore space geometry using one-point correlation functions (porosity, specific surface), two-point surface-surface, surface-void, and void-void correlation functions, as well as the…
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