Inverse Designing Surface Curvatures by Deep Learning

Journal Article (2024)
Author(s)

Yaqi Guo (Tongji University, TU Delft - Team Sid Kumar)

Saurav Sharma (TU Delft - Aerospace Manufacturing Technologies)

Siddhant Kumar (TU Delft - Team Sid Kumar)

Research Group
Team Sid Kumar
DOI related publication
https://doi.org/10.1002/aisy.202300789
More Info
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Publication Year
2024
Language
English
Research Group
Team Sid Kumar
Issue number
6
Volume number
6
Article number
2300789
Downloads counter
251
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Abstract

Smooth and curved microstructural topologies found in nature—from soap films to trabecular bone—have inspired several mimetic design spaces for architected metamaterials and bio-scaffolds. However, the design approaches so far are ad hoc, raising the challenge: how to systematically and efficiently inverse design such artificial microstructures with targeted topological features? Herein, surface curvature is explored as a design modality and a deep learning framework is presented to produce topologies with as-desired curvature profiles. The inverse design framework can generalize to diverse topological features such as tubular, membranous, and particulate features. Moreover, successful generalization beyond both the design and data space is demonstrated by inverse designing topologies that mimic the curvature profile of trabecular bone, spinodoid topologies, and periodic nodal surfaces for application in bio-scaffolds and implants. Lastly, curvature and mechanics are bridged by showing how topological curvature can be designed to promote mechanically beneficial stretching-dominated deformation over bending-dominated deformation.