An Artificial Neural Network Reveals the Nucleation Mechanism of a Binary Colloidal AB13Crystal

Gabriele M. Coli*, Marjolein Dijkstra

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Colloidal suspensions of two species have the ability to form binary crystals under certain conditions. The hunt for these functional materials and the countless investigations on their formation process are justified by the plethora of synergetic and collective properties these binary superlattices show. Among the many crystal structures observed over the past decades, the highly exotic colloidal icosahedral AB13 crystal was predicted to be stable in binary hard-sphere mixtures nearly 30 years ago, yet the kinetic pathway of how homogeneous nucleation occurs in this system is still unknown. Here we investigate binary nucleation of the AB13 crystal from a binary fluid phase of nearly hard spheres. We calculate the nucleation barrier and nucleation rate as a function of supersaturation and draw a comparison with nucleation of single-component and other binary crystals. To follow the nucleation process, we employ a neural network to identify the AB13 phase from the binary fluid phase and the competing fcc crystal with single-particle resolution and significant accuracy in the case of bulk phases. We show that AB13 crystal nucleation proceeds via a coassembly process where large spheres and icosahedral small-sphere clusters simultaneously attach to the nucleus. Our results lend strong support for a classical pathway that is well-described by classical nucleation theory, even though the binary fluid phase is highly structured and exhibits local regions of high bond orientational order.

Original languageEnglish
Pages (from-to)4335-4346
Number of pages12
JournalACS Nano
Volume15
Issue number3
DOIs
Publication statusPublished - 23 Mar 2021

Bibliographical note

Funding Information:
G.M.C. and M.D. acknowledge financial support from NWO (grant no. 16DDS003). We thank Jayden Savage for a preliminary study of the AB crystal nucleation. 13

Publisher Copyright:
©

Funding

G.M.C. and M.D. acknowledge financial support from NWO (grant no. 16DDS003). We thank Jayden Savage for a preliminary study of the AB crystal nucleation. 13

Keywords

  • colloidal particles
  • computer simulations
  • crystallization
  • machine learning
  • nanoparticles
  • neural network
  • nucleation

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