Inverse design of anisotropic microstructures using physics-augmented neural networks
Asghar A. Jadoon, Karl A. Kalina, Manuel K. Rausch, Reese Jones, Jan, N. Fuhg

TL;DR
This paper introduces a physics-augmented neural network framework for the inverse design of anisotropic microstructures, enabling the determination of microstructural parameters to achieve targeted mechanical responses.
Contribution
It develops a novel neural network-based surrogate model incorporating physics for anisotropic materials and demonstrates its effectiveness in inverse design tasks.
Findings
Successfully predicts anisotropy type and orientation.
Accurately recovers design parameters for desired responses.
Handles different preferred directions beyond training data.
Abstract
Composite materials often exhibit mechanical anisotropy owing to the material properties or geometrical configurations of the microstructure. This makes their inverse design a two-fold problem. First, we must learn the type and orientation of anisotropy and then find the optimal design parameters to achieve the desired mechanical response. In our work, we solve this challenge by first training a forward surrogate model based on the macroscopic stress-strain data obtained via computational homogenization for a given multiscale material. To this end, we use partially Input Convex Neural Networks (pICNNs) to obtain a polyconvex representation of the strain energy in terms of the invariants of the Cauchy-Green deformation tensor. The network architecture and the strain energy function are modified to incorporate, by construction, physics and mechanistic assumptions into the framework. While…
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Taxonomy
TopicsTopology Optimization in Engineering · Manufacturing Process and Optimization · Laser and Thermal Forming Techniques
