Bioinspired hierarchical composite design using machine learning: simulation, additive manufacturing, and experiment
Author(s)
Chen, Chun-Teh; Richmond, Deon J.; Buehler, Markus J.; Gu, Grace Xiang
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Biomimicry, adapting and implementing nature's designs provides an adequate first-order solution to achieving superior mechanical properties. However, the design space is too vast even using biomimetic designs as prototypes for optimization. Here, we propose a new approach to design hierarchical materials using machine learning, trained with a database of hundreds of thousands of structures from finite element analysis, together with a self-learning algorithm for discovering high-performing materials where inferior designs are phased out for superior candidates. Results show that our approach can create microstructural patterns that lead to tougher and stronger materials, which are validated through additive manufacturing and testing. We further show that machine learning can be used as an alternative method of coarse-graining – analyzing and designing materials without the use of full microstructural data. This novel paradigm of smart additive manufacturing can aid in the discovery and fabrication of new material designs boasting orders of magnitude increase in computational efficacy over conventional methods.
Date issued
2018-07Department
Massachusetts Institute of Technology. Department of Mechanical EngineeringJournal
Materials Horizons
Citation
Gu, Grace X. et al. “Bioinspired Hierarchical Composite Design Using Machine Learning: Simulation, Additive Manufacturing, and Experiment.” Materials Horizons (2018)
Version: Final published version
ISSN
2051-6347
2051-6355