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Nature-inspired architected materials using unsupervised deep learning

Engineering and Technology

Nature-inspired architected materials using unsupervised deep learning

S. C. Shen and M. J. Buehler

In a groundbreaking study by Sabrina Chin-yun Shen and Markus J. Buehler, researchers unveil an innovative unsupervised GAN model that transforms unlabeled data into novel material designs, drawing inspiration from nature. By mimicking leaf microstructures, they create both 2D and 3D materials, showcasing a powerful fusion of biology and technology that pushes the boundaries of material science.... show more
Abstract
Nature-inspired material design is driven by superior properties found in natural architected materials and enabled by recent developments in additive manufacturing and machine learning. Existing approaches to push design beyond biomimicry typically use supervised deep learning algorithms to predict and optimize properties based on experimental or simulation data. However, these methods constrain generated material designs to abstracted labels and to "black box" outputs that are only indirectly manipulable. Here we report an alternative approach using an unsupervised generative adversarial network (GAN) model. Training the model on unlabeled data constructs a latent space free of human intervention, which can then be explored through seeding, image encoding, and vector arithmetic to control specific parameters of de novo generated material designs and to push them beyond training data distributions for broad applicability. We illustrate this end-to-end with new materials inspired by leaf microstructures, showing how biological 2D structures can be used to develop novel architected materials in 2 and 3 dimensions. We further utilize a genetic algorithm to optimize generated microstructures for mechanical properties, operating directly on the latent space. This approach allows for transfer of information across manifestations using the latent space as mediator, opening new avenues for exploration of nature-inspired materials.
Publisher
Communications Engineering
Published On
Nov 25, 2022
Authors
Sabrina Chin-yun Shen, Markus J. Buehler
Tags
material design
unsupervised learning
GAN
microstructures
genetic algorithm
latent space
2D and 3D
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