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A convolutional neural network for defect classification in Bragg coherent X-ray diffraction

Engineering and Technology

A convolutional neural network for defect classification in Bragg coherent X-ray diffraction

B. Lim, E. Bellec, et al.

This paper highlights a groundbreaking 3D convolutional neural network (CNN) designed for swift and precise identification of defects in nanocrystals by analyzing Bragg coherent X-ray diffraction patterns. With training on extensive simulations, the CNN adeptly identifies dislocation types, marking a significant leap towards automated defect detection in materials science. This innovative research was conducted by Bruce Lim, Ewen Bellec, Maxime Dupraz, Steven Leake, Andrea Resta, Alessandro Coati, Michael Sprung, Ehud Almog, Eugen Rabkin, Tobias Schülli, and Marie-Ingrid Richard.

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~3 min • Beginner • English
Abstract
Coherent diffraction imaging enables the imaging of individual defects, such as dislocations or stacking faults, in materials. These defects and their surrounding elastic strain fields have a critical influence on the macroscopic properties and functionality of materials. However, their identification in Bragg coherent diffraction imaging remains a challenge and requires significant data mining. The ability to identify defects from the diffraction pattern alone would be a significant advantage when targeting specific defect types and accelerates experiment design and execution. Here, we exploit a computational tool based on a three-dimensional (3D) parametric atomistic model and a convolutional neural network to predict dislocations in a crystal from its 3D coherent diffraction pattern. Simulated diffraction patterns from several thousands of relaxed atomistic configurations of nanocrystals are used to train the neural network and to predict the presence or absence of dislocations as well as their type (screw or edge). Our study paves the way for defect-recognition in 3D coherent diffraction patterns for material science.
Publisher
npj Computational Materials
Published On
Jul 21, 2021
Authors
Bruce Lim, Ewen Bellec, Maxime Dupraz, Steven Leake, Andrea Resta, Alessandro Coati, Michael Sprung, Ehud Almog, Eugen Rabkin, Tobias Schülli, Marie-Ingrid Richard
Tags
3D convolutional neural network
defect classification
nanocrystals
Bragg coherent X-ray diffraction
automated defect recognition
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