Data-Driven Nonlinear Deformation Design of 3D-Printable Shells
Designing and fabricating structures with specific mechanical properties requires understanding the intricate relationship between design parameters and performance. Understanding the design-performance relationship becomes increasingly complicated for nonlinear deformations. Though successful at mo...
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Zusammenfassung: | Designing and fabricating structures with specific mechanical properties
requires understanding the intricate relationship between design parameters and
performance. Understanding the design-performance relationship becomes
increasingly complicated for nonlinear deformations. Though successful at
modeling elastic deformations, simulation-based techniques struggle to model
large elastoplastic deformations exhibiting plasticity and densification. We
propose a neural network trained on experimental data to learn the
design-performance relationship between 3D-printable shells and their
compressive force-displacement behavior. Trained on thousands of physical
experiments, our network aids in both forward and inverse design to generate
shells exhibiting desired elastoplastic and hyperelastic deformations. We
validate a subset of generated designs through fabrication and testing.
Furthermore, we demonstrate the network's inverse design efficacy in generating
custom shells for several applications. |
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DOI: | 10.48550/arxiv.2408.15097 |