4.8 Article

Crystal symmetry determination in electron diffraction using machine learning

Journal

SCIENCE
Volume 367, Issue 6477, Pages 564-+

Publisher

AMER ASSOC ADVANCEMENT SCIENCE
DOI: 10.1126/science.aay3062

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Funding

  1. U.S. Department of Defense (DoD)[National Defense Science and Engineering Graduate Fellowship (NDSEG)Program]
  2. ARCS Foundation, San Diego Chapter
  3. Joint DoD/Department of Energy Munitions Technology Development Program
  4. Dynamic Materials Science Campaign at LANL
  5. Oerlikon Group

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Electron backscatter diffraction (EBSD) is one of the primary tools for crystal structure determination. However, this method requires human input to select potential phases for Hough-based or dictionary pattern matching and is not well suited for phase identification. Automated phase identification is the first step in making EBSD into a high-throughput technique. We used a machine learning-based approach and developed a general methodology for rapid and autonomous identification of the crystal symmetry from EBSD patterns. We evaluated our algorithm with diffraction patterns from materials outside the training set. The neural network assigned importance to the same symmetry features that a crystallographer would use for structure identification.

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