Coarse-Grained Many-Body Potentials of Ligand-Stabilized Nanoparticles from Machine-Learned Mean Forces

Giuliana Giunta*, Gerardo Campos-Villalobos, Marjolein Dijkstra*

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Colloidal nanoparticles self-assemble into a variety of superstructures with distinctive optical, structural, and electronic properties. These nanoparticles are usually stabilized by a capping layer of organic ligands to prevent aggregation in the solvent. When the ligands are sufficiently long compared to the dimensions of the nanocrystal cores, the effective coarse-grained forces between pairs of nanoparticles are largely affected by the presence of neighboring particles. In order to efficiently investigate the self-assembly behavior of these complex colloidal systems, we propose a machine-learning approach to construct effective coarse-grained many-body interaction potentials. The multiscale methodology presented in this work constitutes a general bottom-up coarse-graining strategy where the coarse-grained forces acting on coarse-grained sites are extracted from measuring the vectorial mean forces on these sites in reference fine-grained simulations. These effective coarse-grained forces, i.e., gradients of the potential of mean force or of the free-energy surface, are represented by a simple linear model in terms of gradients of structural descriptors, which are scalar functions that are rotationally invariant. In this way, we also directly obtain the free-energy surface of the coarse-grained model as a function of all coarse-grained coordinates. We expect that this simple yet accurate coarse-graining framework for the many-body potential of mean force will enable the characterization, understanding, and prediction of the structure and phase behavior of relevant soft-matter systems by direct simulations. The key advantage of this method is its generality, which allows it to be applicable to a broad range of systems. To demonstrate the generality of our method, we also apply it to a colloid-polymer model system, where coarse-grained many-body interactions are pronounced.

Original languageEnglish
Pages (from-to)23391-23404
Number of pages14
JournalACS Nano
Volume17
Issue number23
DOIs
Publication statusPublished - 12 Dec 2023

Bibliographical note

Publisher Copyright:
© 2023 The Authors. Published by American Chemical Society.

Funding

During the execution of the project, G. Giunta received funding from The Netherlands Center for Multiscale Catalytic Energy Conversion (MCEC), a NWO Gravitation program funded by the Ministry of Education, Culture and Science of the Government of The Netherlands. G. Campos-Villalobos acknowledges funding from The Netherlands Organization for Scientific Research (NWO) for the ENW PPS Fund 2018 – Technology Area Soft Advanced Materials ENPPS.TA. 018.002. M. Dijkstra acknowledges funding from the European Research Council (ERC) under the European Union’s Horizon 2020 research and innovation programme (Grant Agreement No. ERC-2019-ADG 884902 SoftML).

FundersFunder number
MCEC
Ministry of Education, Culture and Science of the government of The Netherlands
Netherlands Center for Multiscale Catalytic Energy Conversion
Horizon 2020 Framework ProgrammeERC-2019-ADG 884902 SoftML
European Research Council
Nederlandse Organisatie voor Wetenschappelijk Onderzoek018.002

    Keywords

    • Coarse-Graining
    • Colloidal Systems
    • Computer Simulation
    • Machine Learning
    • Nanoparticles
    • Self-Assembly

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