State Key Laboratory of Structural Analysis, Optimization and CAE Software for Industrial Equipment, Department of Engineering Mechanics, School of Mechanics and Aerospace Engineering, Dalian University of Technology, Dalian 116024, PR China.
ACS Appl Mater Interfaces. 2024 Nov 13;16(45):62371-62381. doi: 10.1021/acsami.4c12993. Epub 2024 Oct 29.
Soft network metamaterials are widely used in fields such as flexible electronics, tissue engineering, and biomedicine due to their superior properties including low density, high stretchability, and high breathability. However, the prediction and customization of the nonlinear mechanical behavior of soft network metamaterials remain a challenging problem. In this study, a family of hydrogel-based network metamaterials with biological tissue-like mechanical properties are developed based on a machine learning-driven optimization design method. Numerical and experimental results explain the relationship between the mechanical properties of the designed metamaterials and their microstructural features and stretching ratios. The results indicate that the hydrogel-based network metamaterials exhibit J-shaped stress-deformation (σ-λ) behavior similar to biological tissues. This phenomenon arises from the transition of the deformation mode of metamaterials from bending-dominated to stretching-dominated as the stretching ratio increases. Based on the proposed design scheme, the Poisson's ratio of metamaterials can be adjusted within a remarkably wide range of -1.06 to 1.34. Furthermore, through optimizing the design parameters of the metamaterial, the customization of network metamaterials with biological tissue-like zero Poisson's ratio behavior and stress response is achieved. The potential applications of hydrogel-based network metamaterials are demonstrated through artificial skin and LED integrated device. This research offers novel insights into predicting, designing, and fabricating the mechanical behavior of soft network metamaterials.
软网络超材料由于其低密度、高拉伸性和高透气性等优异性能,广泛应用于柔性电子、组织工程和生物医学等领域。然而,软网络超材料的非线性力学行为的预测和定制仍然是一个具有挑战性的问题。在这项研究中,基于机器学习驱动的优化设计方法,开发了一系列具有类似生物组织力学性能的水凝胶基网络超材料。数值和实验结果解释了设计超材料的力学性能与其微观结构特征和拉伸比之间的关系。结果表明,水凝胶基网络超材料表现出与生物组织相似的 J 形应力-变形(σ-λ)行为。这种现象源于超材料变形模式从弯曲主导到拉伸主导的转变,随着拉伸比的增加。基于所提出的设计方案,超材料的泊松比可以在-1.06 到 1.34 的很宽范围内进行调整。此外,通过优化超材料的设计参数,可以实现具有类似生物组织零泊松比行为和应力响应的网络超材料的定制。通过人工皮肤和 LED 集成器件展示了水凝胶基网络超材料的潜在应用。本研究为预测、设计和制造软网络超材料的力学行为提供了新的思路。