论文标题
结构相关的丝状网络中的刚进入刚性渗透
Reentrant Rigidity Percolation in Structurally Correlated Filamentous Networks
论文作者
论文摘要
许多生物组织具有异质的纤维网络,其拉伸和弯曲刚性对这些组织的弹性特性产生了重大贡献。刚性渗透已成为将这些丝状组织力学与其成分浓度联系起来的重要范式。过去的研究通常考虑通过浓度的空间均质变化来调整网络,同时忽略结构相关性。我们在这里介绍了一个模型,在该模型中,稀释纤维网络以相关的方式构建,从而产生交替的稀疏和密集区域。我们的模拟表明,结构相关性始终允许组织以更少的材料达到刚性。我们进一步发现,渗透阈值随着相关程度而异,因此随着中等相关性的降低,并且对于高相关性而言再次增加。我们解释了刚性渗透阈值对相关性的依赖性的最终重新进入,这是由于较大,僵硬的群集的结果,这些群集太差而无法耦合到整个网络上传递力。我们的研究更深入地了解空间异质性如何使组织能够牢固地适应不同的机械环境。
Many biological tissues feature a heterogeneous network of fibers whose tensile and bending rigidity contribute substantially to these tissues' elastic properties. Rigidity percolation has emerged as a important paradigm for relating these filamentous tissues' mechanics to the concentrations of their constituents. Past studies have generally considered tuning of networks by spatially homogeneous variation in concentration, while ignoring structural correlation. We here introduce a model in which dilute fiber networks are built in a correlated manner that produces alternating sparse and dense regions. Our simulations indicate that structural correlation consistently allows tissues to attain rigidity with less material. We further find that the percolation threshold varies non-monotonically with the degree of correlation, such that it decreases with moderate correlation and once more increases for high correlation. We explain the eventual reentrance in the dependence of the rigidity percolation threshold on correlation as the consequence of large, stiff clusters that are too poorly coupled to transmit forces across the network. Our study offers deeper understanding of how spatial heterogeneity may enable tissues to robustly adapt to different mechanical contexts.