Mechanics and Design of Metastructured Auxetic Patches with Bio-inspired Materials
Yingbin Chen, Milad Arzani, Xuan Mu, Sophia Jin, Shaoping Xiao

TL;DR
This paper presents a novel neural network-based framework for designing bio-inspired auxetic patches with tailored mechanical properties, validated through experiments and finite element modeling, advancing tissue engineering applications.
Contribution
It introduces a data-driven, neural network-based design approach for metastructured auxetic patches using bio-inspired materials, improving efficiency and accuracy over traditional methods.
Findings
Neural networks achieved R^2 > 0.995 in predicting Poisson's ratios and stresses.
The framework enables precise tailoring of mechanical properties for medical applications.
Active learning reduced computational costs in data generation.
Abstract
Metastructured auxetic patches, characterized by negative Poisson's ratios, offer unique mechanical properties that closely resemble the behavior of human tissues and organs. As a result, these patches have gained significant attention for their potential applications in organ repair and tissue regeneration. This study focuses on neural networks-based computational modeling of auxetic patches with a sinusoidal metastructure fabricated from silk fibroin, a bio-inspired material known for its biocompatibility and strength. The primary objective of this research is to introduce a novel, data-driven framework for patch design. To achieve this, we conducted experimental fabrication and mechanical testing to determine material properties and validate the corresponding finite element models. Finite element simulations were then employed to generate the necessary data, while greedy sampling, an…
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Taxonomy
MethodsSoftmax · Attention Is All You Need
