Literature DB >> 31640379

Unsupervised learning for local structure detection in colloidal systems.

Emanuele Boattini1, Marjolein Dijkstra1, Laura Filion1.   

Abstract

We introduce a simple, fast, and easy to implement unsupervised learning algorithm for detecting different local environments on a single-particle level in colloidal systems. In this algorithm, we use a vector of standard bond-orientational order parameters to describe the local environment of each particle. We then use a neural-network-based autoencoder combined with Gaussian mixture models in order to autonomously group together similar environments. We test the performance of the method on snapshots of a wide variety of colloidal systems obtained via computer simulations, ranging from simple isotropically interacting systems to binary mixtures, and even anisotropic hard cubes. Additionally, we look at a variety of common self-assembled situations such as fluid-crystal and crystal-crystal coexistences, grain boundaries, and nucleation. In all cases, we are able to identify the relevant local environments to a similar precision as "standard," manually tuned, and system-specific, order parameters. In addition to classifying such environments, we also use the trained autoencoder in order to determine the most relevant bond orientational order parameters in the systems analyzed.

Year:  2019        PMID: 31640379     DOI: 10.1063/1.5118867

Source DB:  PubMed          Journal:  J Chem Phys        ISSN: 0021-9606            Impact factor:   3.488


  2 in total

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Authors:  Rituparno Mandal; Corneel Casert; Peter Sollich
Journal:  Nat Commun       Date:  2022-07-30       Impact factor: 17.694

2.  A Deep Learning Framework Discovers Compositional Order and Self-Assembly Pathways in Binary Colloidal Mixtures.

Authors:  Runfang Mao; Jared O'Leary; Ali Mesbah; Jeetain Mittal
Journal:  JACS Au       Date:  2022-07-19
  2 in total

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