Diatom-inspired architected materials using language-based deep
learning: Perception, transformation and manufacturing
- URL: http://arxiv.org/abs/2301.05875v1
- Date: Sat, 14 Jan 2023 10:02:51 GMT
- Title: Diatom-inspired architected materials using language-based deep
learning: Perception, transformation and manufacturing
- Authors: Markus J. Buehler
- Abstract summary: We report novel biologically inspired designs of diatom structures, enabled using transformer neural networks.
We illustrate a series of novel diatom-based designs and also report a manufactured specimen, created using additive manufacturing.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Learning from nature has been a quest of humanity for millennia. While this
has taken the form of humans assessing natural designs such as bones, butterfly
wings, or spider webs, we can now achieve generating designs using advanced
computational algorithms. In this paper we report novel biologically inspired
designs of diatom structures, enabled using transformer neural networks, using
natural language models to learn, process and transfer insights across
manifestations. We illustrate a series of novel diatom-based designs and also
report a manufactured specimen, created using additive manufacturing. The
method applied here could be expanded to focus on other biological design cues,
implement a systematic optimization to meet certain design targets, and include
a hybrid set of material design sets.
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