Gautham Sachin M B, Patra Tarak K
Department of Chemical Engineering, Center for Atomistic Modeling and Materials Design and Center for Carbon Capture Utilization and Storage, Indian Institute of Technology Madras, Chennai, TN 600036, India.
Soft Matter. 2022 Oct 26;18(41):7909-7916. doi: 10.1039/d2sm00945e.
Grafting polymer chains on the surfaces of nanoparticles is a well-known route to control their self-assembly and distribution in a polymer matrix. A wide variety of self-assembled structures are achieved by changing the grafting patterns on the surface of an individual nanoparticle. However, an accurate estimation of the effective potential of mean force between a pair of grafted nanoparticles that determines their assembly and distribution in a polymer matrix is an outstanding challenge in nanoscience. We address this problem deep learning. As a proof of concept, here we report a deep learning framework that learns the interaction between a pair of single-chain grafted spherical nanoparticles from their molecular dynamics trajectory. Subsequently, we carry out the deep learning potential of mean force-based molecular simulation that predicts the self-assembly of a large number of single-chain grafted nanoparticles into various anisotropic superstructures, including percolating networks and bilayers depending on the nanoparticle concentration in three-dimensions. The deep learning potential of mean force-predicted self-assembled superstructures are consistent with the actual superstructures of single-chain polymer grafted spherical nanoparticles. This deep learning framework is very generic and extensible to more complex systems including multiple-chain grafted nanoparticles. We expect that this deep learning approach will accelerate the characterization and prediction of the self-assembly and phase behaviour of polymer-grafted and unfunctionalized nanoparticles in free space or a polymer matrix.
在纳米颗粒表面接枝聚合物链是控制其在聚合物基质中自组装和分布的一种众所周知的方法。通过改变单个纳米颗粒表面的接枝模式,可以实现各种各样的自组装结构。然而,准确估计一对接枝纳米颗粒之间的有效平均力势,该势决定了它们在聚合物基质中的组装和分布,是纳米科学中一个突出的挑战。我们通过深度学习解决这个问题。作为概念验证,我们在此报告一个深度学习框架,该框架从分子动力学轨迹中学习一对单链接枝球形纳米颗粒之间的相互作用。随后,我们进行基于深度学习平均力势的分子模拟,预测大量单链接枝纳米颗粒在三维空间中根据纳米颗粒浓度自组装成各种各向异性超结构,包括渗流网络和双层结构。深度学习平均力势预测的自组装超结构与单链聚合物接枝球形纳米颗粒的实际超结构一致。这个深度学习框架非常通用,可扩展到更复杂的系统,包括多链接枝纳米颗粒。我们期望这种深度学习方法将加速对聚合物接枝和未功能化纳米颗粒在自由空间或聚合物基质中的自组装和相行为的表征和预测。