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Neural-network-based order parameters for classification of binary hard-sphere crystal structures

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Taylor & Francis Group2018-09-26 更新2026-04-16 收录
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https://tandf.figshare.com/articles/Neural-network-based_order_parameters_for_classification_of_binary_hard-sphere_crystal_structures/6540074/1
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Identifying crystalline structures is a common challenge in many types of research. Here, we focus on binary mixtures of hard spheres of various size ratios, which stabilise a range of crystal structures with varying complexity. We train feed-forward neural networks to distinguish different crystalline and fluid environments on a single-particle basis, by analysing vectors composed of several averaged local bond order parameters. For all size ratios considered, we achieve a classification accuracy above for all phases, meaning that our method is completely general and able to capture structural differences of a wide range of binary crystals.
创建时间:
2018-06-15
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