Luan Shengzhi, Chen Enze, John Joel, Gaitanaros Stavros
Department of Civil and Systems Engineering, Johns Hopkins University, Baltimore, MD 21218, USA.
Sci Adv. 2023 Oct 13;9(41):eadi1453. doi: 10.1126/sciadv.adi1453.
Extracting the relation between microstructural features and resulting material properties is essential for advancing our fundamental knowledge on the mechanics of cellular metamaterials and to enable the design of novel material systems. Here, we present a unified framework that not only allows the prediction of macroscopic properties but, more importantly, also reveals their connection to key morphological characteristics, as identified by the integration of machine-learning models and interpretability algorithms. We establish the complex manner in which strut orientation can be critical in determining effective stiffness for certain microstructures and highlight cellular metamaterials with counterintuitive material behavior. We further provide a refined version of Maxwell's criteria regarding the rigidity of frame structures and their connection to cellular metamaterials. By examining the shear moduli of these metamaterials, the mean cell compactness emerges as a key morphological feature. The generality of the proposed framework allows its extension to broader classes of architected materials as well as different properties of interest.
提取微观结构特征与材料最终性能之间的关系,对于提升我们对多孔超材料力学的基础知识以及实现新型材料系统的设计至关重要。在此,我们提出了一个统一框架,该框架不仅能够预测宏观性能,更重要的是,还能揭示这些性能与关键形态特征之间的联系,这些联系是通过机器学习模型和可解释性算法的整合确定的。我们确定了支柱取向在某些微观结构中对有效刚度起关键作用的复杂方式,并突出了具有违反直觉材料行为的多孔超材料。我们进一步提供了关于框架结构刚度及其与多孔超材料联系的麦克斯韦准则的改进版本。通过研究这些超材料的剪切模量,平均细胞致密性成为关键的形态特征。所提出框架的通用性使其能够扩展到更广泛的结构化材料类别以及不同的感兴趣属性。