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Abstract
Discovering rare designs of metamaterials with unusual combinations of material properties, such as double-auxeticity and high elastic moduli, is a challenging task. This research uses computational models and deep learning algorithms to identify such rare designs in three types of planar lattices with random distributions of hard and soft phases. A mapping from design parameters to mechanical properties significantly reduces computational time and allows for parallelization. Ten designs were 3D printed, mechanically tested, and characterized using digital image correlation, validating the computational models' accuracy.
Publisher
Communications Materials
Published On
Jun 22, 2022
Authors
Helda Pahlavani, Muhamad Amani, Mauricio Cruz Saldívar, Jie Zhou, Mohammad J. Mirzaali, Amir A. Zadpoor
Tags
metamaterials
double-auxeticity
elastic moduli
computational models
deep learning
mechanical testing
3D printing
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