Artifact Identification in X-ray Diffraction Data using Machine Learning Methods
Howard Yanxon, James Weng, Hannah Parraga, Wenqian Xu, Uta Ruett, and, Nicholas Schwarz

TL;DR
This paper explores machine learning techniques, particularly gradient boosting, for rapid and accurate identification of artifacts and single crystal diffraction spots in X-ray diffraction images, improving analysis efficiency.
Contribution
It introduces a machine learning approach for artifact identification in XRD images, enhancing speed and accuracy over traditional methods.
Findings
Gradient boosting achieves high accuracy with small, diverse datasets.
The method significantly reduces time for spot identification.
Improves reliability of in situ XRD data analysis.
Abstract
The in situ synchrotron high-energy X-ray powder diffraction (XRD) technique is highly utilized by researchers to analyze the crystallographic structures of materials in functional devices (e.g., battery materials) or in complex sample environments (e.g., diamond anvil cells or syntheses reactors). An atomic structure of a material can be identified by its diffraction pattern, along with detailed analysis such as Rietveld refinement which indicates how the measured structure deviates from the ideal structure (e.g., internal stresses or defects). For in situ experiments, a series of XRD images is usually collected on the same sample at different conditions (e.g., adiabatic conditions), yielding different states of matter, or simply collected continuously as a function of time to track the change of a sample over a chemical or physical process. In situ experiments are usually performed…
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Taxonomy
TopicsX-ray Diffraction in Crystallography · Machine Learning in Materials Science · Crystallography and molecular interactions
