Dobrynin Andrey V, Tian Yuan, Jacobs Michael, Nikitina Evgeniia A, Ivanov Dimitri A, Maw Mitchell, Vashahi Foad, Sheiko Sergei S
Department of Chemistry, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.
Department of Chemistry, Lomonosov Moscow State University, Moscow, Russia.
Nat Mater. 2023 Nov;22(11):1394-1400. doi: 10.1038/s41563-023-01663-5. Epub 2023 Sep 25.
Our lives cannot be imagined without polymer networks, which range widely, from synthetic rubber to biological tissues. Their properties-elasticity, strain-stiffening and stretchability-are controlled by a convolution of chemical composition, strand conformation and network topology. Yet, since the discovery of rubber vulcanization by Charles Goodyear in 1839, the internal organization of networks has remained a sealed 'black box'. While many studies show how network properties respond to topology variation, no method currently exists that would allow the decoding of the network structure from its properties. We address this problem by analysing networks' nonlinear responses to deformation to quantify their crosslink density, strand flexibility and fraction of stress-supporting strands. The decoded structural information enables the quality control of network synthesis, comparison of targeted to actual architecture and network classification according to the effectiveness of stress distribution. The developed forensic approach is a vital step in future implementation of artificial intelligence principles for soft matter design.
没有聚合物网络,我们的生活将无法想象,聚合物网络种类繁多,从合成橡胶到生物组织。它们的特性——弹性、应变硬化和拉伸性——由化学成分、链构象和网络拓扑结构共同控制。然而,自1839年查尔斯·固特异发现橡胶硫化以来,网络的内部结构一直是一个封闭的“黑匣子”。虽然许多研究表明网络特性如何响应拓扑变化,但目前还没有一种方法能够从网络特性中解码其结构。我们通过分析网络对变形的非线性响应来解决这个问题,以量化它们的交联密度、链柔性和应力支撑链的比例。解码后的结构信息能够实现网络合成的质量控制、目标架构与实际架构的比较以及根据应力分布有效性进行网络分类。所开发的鉴定方法是未来在软物质设计中实施人工智能原理的关键一步。