Dataset and code used in M Röding, et al, "Inverse design of anisotropic spinodoid materials with prescribed diffusivity", published in Scientific Reports. In this work, we develop a framework for inverse design of a class of anisotropic materials with spinodoid i.e. spinodal decomposition-like morphology, where the structure is optimized to have prescribed diffusivity. We use a convolutional neural network (CNN) for predicting effective diffusivity in all three directions. The CNN is used in an approximate Bayesian computation (ABC)-based formulation of the inverse problem. Herein, the codes in Matlab and Python/Tensorflow for structure generation, prediction and inverse design are supplied, together with the dataset and the trained CNN mo...
We present a method for implementing a large scale, proximal optimization algorithm in a machine lea...
Solving an inverse problem in physical sciences can involve exploring all possible models. We propos...
In computational design and fabrication, neural networks are becoming important surrogates for bulky...
The three-dimensional microstructure of functional materials determines its effective properties, li...
We present a two-scale topology optimization framework for the design of macroscopic bodies with an ...
Dataset and code used in B Prifling, et al, "Large-scale statistical learning for mass transport pre...
It is safe to say that every invention that has changed the world has depended on materials. At pres...
After a decade of periodic truss-, plate-, and shell-based architectures having dominated the design...
Analytical and numerical methods have been used to extract essential engineering parameters such as ...
The composition-dependent pseudo-binary (PB) interdiffusion coefficients and the main intrinsic diff...
Colloidal self-assembly-the spontaneous organization of colloids into ordered structures-has been co...
As typical mechanical metamaterials with negative Poisson’s ratios, auxetic metamaterials exhibit co...
We present our work on using deep neural networks for the prediction of the optical properties of na...
We present a novel and effective skeletonization algorithm for binary and gray-scale images, based ...
Self-assembly refers to a process in which initially disordered systems spontaneously form ordered s...
We present a method for implementing a large scale, proximal optimization algorithm in a machine lea...
Solving an inverse problem in physical sciences can involve exploring all possible models. We propos...
In computational design and fabrication, neural networks are becoming important surrogates for bulky...
The three-dimensional microstructure of functional materials determines its effective properties, li...
We present a two-scale topology optimization framework for the design of macroscopic bodies with an ...
Dataset and code used in B Prifling, et al, "Large-scale statistical learning for mass transport pre...
It is safe to say that every invention that has changed the world has depended on materials. At pres...
After a decade of periodic truss-, plate-, and shell-based architectures having dominated the design...
Analytical and numerical methods have been used to extract essential engineering parameters such as ...
The composition-dependent pseudo-binary (PB) interdiffusion coefficients and the main intrinsic diff...
Colloidal self-assembly-the spontaneous organization of colloids into ordered structures-has been co...
As typical mechanical metamaterials with negative Poisson’s ratios, auxetic metamaterials exhibit co...
We present our work on using deep neural networks for the prediction of the optical properties of na...
We present a novel and effective skeletonization algorithm for binary and gray-scale images, based ...
Self-assembly refers to a process in which initially disordered systems spontaneously form ordered s...
We present a method for implementing a large scale, proximal optimization algorithm in a machine lea...
Solving an inverse problem in physical sciences can involve exploring all possible models. We propos...
In computational design and fabrication, neural networks are becoming important surrogates for bulky...