4.6 Article

Deep learning potential of mean force between polymer grafted nanoparticles

期刊

SOFT MATTER
卷 18, 期 41, 页码 7909-7916

出版社

ROYAL SOC CHEMISTRY
DOI: 10.1039/d2sm00945e

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资金

  1. SERB, DST, Govt of India [SRG/2020/001045, DST/NSM/R&D_HPC_Applications/2021/40]
  2. DOE Office of Science User Facility [DE-AC02-06CH11357]
  3. U.S. Department of Energy, Office of Science, Office of Basic Energy Sciences [DE-AC02-06CH11357]

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Researchers have successfully addressed the challenge of predicting the self-assembly of nanoparticles using deep learning, achieving accurate estimation of the effective potential of mean force between grafted nanoparticles and predicting anisotropic superstructures.
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 via 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.

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