MTRL-SCICELGJul 13, 2022

A Generalized Framework for Microstructural Optimization using Neural Networks

arXiv:2207.06512v116 citationsh-index: 29
Originality Incremental advance
AI Analysis

This work addresses microstructural optimization in materials science, offering a generalized approach that is incremental by building on classic density formulations with neural networks.

The authors tackled the problem of optimizing microstructures for various physical properties by proposing a neural network framework that allows any microstructural quantity to serve as the objective or constraint, eliminating the need for manual sensitivity derivations and smoothing filters.

Microstructures, i.e., architected materials, are designed today, typically, by maximizing an objective, such as bulk modulus, subject to a volume constraint. However, in many applications, it is often more appropriate to impose constraints on other physical quantities of interest. In this paper, we consider such generalized microstructural optimization problems where any of the microstructural quantities, namely, bulk, shear, Poisson ratio, or volume, can serve as the objective, while the remaining can serve as constraints. In particular, we propose here a neural-network (NN) framework to solve such problems. The framework relies on the classic density formulation of microstructural optimization, but the density field is represented through the NN's weights and biases. The main characteristics of the proposed NN framework are: (1) it supports automatic differentiation, eliminating the need for manual sensitivity derivations, (2) smoothing filters are not required due to implicit filtering, (3) the framework can be easily extended to multiple-materials, and (4) a high-resolution microstructural topology can be recovered through a simple post-processing step. The framework is illustrated through a variety of microstructural optimization problems.

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