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 ...
To evaluate the variability of multiphase flow properties of porous media at the pore scale, it is n...
The generation of mechanical metamaterials with tailored effective properties through carefully engi...
Analytical and numerical methods have been used to extract essential engineering parameters such as ...
Dataset and code used in M Röding, et al, "Inverse design of anisotropic spinodoid materials with pr...
Dataset and code used in B Prifling, et al, "Large-scale statistical learning for mass transport pre...
Effective properties of functional materials crucially depend on their 3D microstructure. In this pa...
Generating optimal nanomaterials using artificial neural networks can potentially lead to a signific...
We present a two-scale topology optimization framework for the design of macroscopic bodies with an ...
It is safe to say that every invention that has changed the world has depended on materials. At pres...
A method of modeling the three-dimensional microstructure of random isotropic two-phase materials is...
After a decade of periodic truss-, plate-, and shell-based architectures having dominated the design...
The analysis of big data is changing industries, businesses and research as large amounts of data ar...
Quantitative structure–property relationships are crucial for the understanding and prediction of th...
Porous media are ubiquitous in the natural environment and engineering, and typical ex-amples includ...
The generation of multiphase porous electrode microstructures is a critical step in the optimisation...
To evaluate the variability of multiphase flow properties of porous media at the pore scale, it is n...
The generation of mechanical metamaterials with tailored effective properties through carefully engi...
Analytical and numerical methods have been used to extract essential engineering parameters such as ...
Dataset and code used in M Röding, et al, "Inverse design of anisotropic spinodoid materials with pr...
Dataset and code used in B Prifling, et al, "Large-scale statistical learning for mass transport pre...
Effective properties of functional materials crucially depend on their 3D microstructure. In this pa...
Generating optimal nanomaterials using artificial neural networks can potentially lead to a signific...
We present a two-scale topology optimization framework for the design of macroscopic bodies with an ...
It is safe to say that every invention that has changed the world has depended on materials. At pres...
A method of modeling the three-dimensional microstructure of random isotropic two-phase materials is...
After a decade of periodic truss-, plate-, and shell-based architectures having dominated the design...
The analysis of big data is changing industries, businesses and research as large amounts of data ar...
Quantitative structure–property relationships are crucial for the understanding and prediction of th...
Porous media are ubiquitous in the natural environment and engineering, and typical ex-amples includ...
The generation of multiphase porous electrode microstructures is a critical step in the optimisation...
To evaluate the variability of multiphase flow properties of porous media at the pore scale, it is n...
The generation of mechanical metamaterials with tailored effective properties through carefully engi...
Analytical and numerical methods have been used to extract essential engineering parameters such as ...