Paradigm shift in electron-based crystallography via machine learning
Kevin Kaufmann, Chaoyi Zhu, Alexander S. Rosengarten, Daniel, Maryanovsky, Tyler J. Harrington, Eduardo Marin, and Kenneth S. Vecchio

TL;DR
This paper introduces a machine learning approach using deep neural networks to rapidly and autonomously identify crystal structures from electron diffraction patterns, significantly improving efficiency and reducing human error in crystallography.
Contribution
It presents a novel deep learning methodology for automatic crystal structure classification from electron backscatter diffraction patterns, enabling fully automated analysis without prior sample knowledge.
Findings
Deep neural network accurately classifies crystal structures.
Model visualizes symmetry features similar to crystallographers.
Approach outperforms traditional Hough transform EBSD.
Abstract
Accurately determining the crystallographic structure of a material, organic or inorganic, is a critical primary step in material development and analysis. The most common practices involve analysis of diffraction patterns produced in laboratory XRD, TEM, and synchrotron X-ray sources. However, these techniques are slow, require careful sample preparation, can be difficult to access, and are prone to human error during analysis. This paper presents a newly developed methodology that represents a paradigm change in electron diffraction-based structure analysis techniques, with the potential to revolutionize multiple crystallography-related fields. A machine learning-based approach for rapid and autonomous identification of the crystal structure of metals and alloys, ceramics, and geological specimens, without any prior knowledge of the sample, is presented and demonstrated utilizing the…
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Taxonomy
TopicsX-ray Diffraction in Crystallography · Machine Learning in Materials Science · Nuclear Physics and Applications
