Inverse design of anisotropic spinodoid materials with prescribed diffusivity
Journal article, 2022

The three-dimensional microstructure of functional materials determines its effective properties, like the mass transport properties of a porous material. Hence, it is desirable to be able to tune the properties by tuning the microstructure accordingly. In this work, we study a class of spinodoid i.e. spinodal decomposition-like structures with tunable anisotropy, based on Gaussian random fields. These are realistic yet computationally efficient models for bicontinuous porous materials. We use a convolutional neural network for predicting effective diffusivity in all three directions. We demonstrate that by incorporating the predictions of the neural network in an approximate Bayesian computation framework for inverse problems, we can in a computationally efficient manner design microstructures with prescribed diffusivity in all three directions.

Author

Magnus Röding

RISE Research Institutes of Sweden

Chalmers, Mathematical Sciences, Applied Mathematics and Statistics

Victor Wåhlstrand Skärström

University of Gothenburg

Niklas Lorén

Chalmers, Physics, Nano and Biophysics

RISE Research Institutes of Sweden

Scientific Reports

2045-2322 (ISSN) 20452322 (eISSN)

Vol. 12 1 17413

Subject Categories

Applied Mechanics

Textile, Rubber and Polymeric Materials

Bioinformatics (Computational Biology)

DOI

10.1038/s41598-022-21451-6

PubMed

36258008

More information

Latest update

10/26/2023