Deep Generative Modeling for Mechanistic-based Learning and Design of Metamaterial Systems
Liwei Wang, Yu-Chin Chan, Faez Ahmed, Zhao Liu, Ping Zhu, Wei Chen

TL;DR
This paper introduces a deep generative modeling framework using variational autoencoders for the inverse design of complex, multiscale metamaterial systems, enabling efficient microstructure manipulation and property optimization.
Contribution
The study develops a novel data-driven approach employing VAE and graph-based methods for systematic metamaterial microstructure and multiscale system design.
Findings
VAE latent space encodes meaningful microstructure patterns.
Microstructure properties can be tuned via simple vector operations.
Designed systems achieve targeted distortion behaviors.
Abstract
Metamaterials are emerging as a new paradigmatic material system to render unprecedented and tailorable properties for a wide variety of engineering applications. However, the inverse design of metamaterial and its multiscale system is challenging due to high-dimensional topological design space, multiple local optima, and high computational cost. To address these hurdles, we propose a novel data-driven metamaterial design framework based on deep generative modeling. A variational autoencoder (VAE) and a regressor for property prediction are simultaneously trained on a large metamaterial database to map complex microstructures into a low-dimensional, continuous, and organized latent space. We show in this study that the latent space of VAE provides a distance metric to measure shape similarity, enable interpolation between microstructures and encode meaningful patterns of variation in…
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