Probing atomic-scale symmetry breaking by rotationally invariant machine learning of multidimensional electron scattering
Mark P. Oxley, Maxim Ziatdinov, Ondrej Dyck, Andrew R. Lupini, Rama, Vasudevan, and Sergei V. Kalinin

TL;DR
This paper introduces a rotationally invariant machine learning approach using variational autoencoders to analyze 4D-STEM data, enabling the detection of atomic-scale symmetry breaking phenomena in materials.
Contribution
The authors develop and demonstrate a rotationally invariant variational autoencoder method for disentangling symmetry breaking effects in multidimensional electron scattering data.
Findings
Successfully applied to simulated graphene and zincblende structures.
Effectively detects site symmetry breaking and vacancies in graphene.
Outperforms classical center-of-mass analysis in symmetry detection.
Abstract
The 4D scanning transmission electron microscopy (STEM) method has enabled mapping of the structure and functionality of solids on the atomic scale, yielding information-rich data sets containing information on the interatomic electric and magnetic fields, structural and electronic order parameters, and other symmetry breaking distortions. A critical bottleneck on the pathway toward harnessing 4D-STEM for materials exploration is the dearth of analytical tools that can reduce complex 4D-STEM data sets to physically relevant descriptors. Classical machine learning (ML) methods such as principal component analysis and other linear unmixing techniques are limited by the presence of multiple point-group symmetric variants, where diffractograms from each rotationally equivalent position will form its own component. This limitation even holds for more complex ML methods, such as convolutional…
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