SOFTLGDec 19, 2023

Classification of complex local environments in systems of particle shapes through shape-symmetry encoded data augmentation

arXiv:2312.11822v13 citationsh-index: 83J Chem Phys
Originality Incremental advance
AI Analysis

This provides a physics-agnostic tool for researchers studying self-assembly in particle-based or molecular systems, though it appears incremental as it adapts existing ML methods to an underexplored domain.

The paper tackles the problem of classifying local environments in particle shape systems for studying self-assembly, proposing a multilayer perceptron classifier with shape symmetry-encoded data augmentation that achieves effective performance across four different particle shape scenarios.

Detecting and analyzing the local environment is crucial for investigating the dynamical processes of crystal nucleation and shape colloidal particle self-assembly. Recent developments in machine learning provide a promising avenue for better order parameters in complex systems that are challenging to study using traditional approaches. However, the application of machine learning to self-assembly on systems of particle shapes is still underexplored. To address this gap, we propose a simple, physics-agnostic, yet powerful approach that involves training a multilayer perceptron (MLP) as a local environment classifier for systems of particle shapes, using input features such as particle distances and orientations. Our MLP classifier is trained in a supervised manner with a shape symmetry-encoded data augmentation technique without the need for any conventional roto-translations invariant symmetry functions. We evaluate the performance of our classifiers on four different scenarios involving self-assembly of cubic structures, 2-dimensional and 3-dimensional patchy particle shape systems, hexagonal bipyramids with varying aspect ratios, and truncated shapes with different degrees of truncation. The proposed training process and data augmentation technique are both straightforward and flexible, enabling easy application of the classifier to other processes involving particle orientations. Our work thus presents a valuable tool for investigating self-assembly processes on systems of particle shapes, with potential applications in structure identification of any particle-based or molecular system where orientations can be defined.

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