Disentangling multiple scattering with deep learning: application to strain mapping from electron diffraction patterns

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作者
Joydeep Munshi
Alexander Rakowski
Benjamin H. Savitzky
Steven E. Zeltmann
Jim Ciston
Matthew Henderson
Shreyas Cholia
Andrew M. Minor
Maria K. Y. Chan
Colin Ophus
机构
[1] Center for Nanoscale Materials,Department of Materials Science and Engineering
[2] Argonne National Laboratory,undefined
[3] National Center for Electron Microscopy,undefined
[4] Molecular Foundry,undefined
[5] Lawrence Berkeley National Laboratory,undefined
[6] University of California Berkeley,undefined
[7] Scientific Data Division,undefined
[8] Lawrence Berkeley National Laboratory,undefined
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npj Computational Materials | / 8卷
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摘要
A fast, robust pipeline for strain mapping of crystalline materials is important for many technological applications. Scanning electron nanodiffraction allows us to calculate strain maps with high accuracy and spatial resolutions, but this technique is limited when the electron beam undergoes multiple scattering. Deep-learning methods have the potential to invert these complex signals, but require a large number of training examples. We implement a Fourier space, complex-valued deep-neural network, FCU-Net, to invert highly nonlinear electron diffraction patterns into the corresponding quantitative structure factor images. FCU-Net was trained using over 200,000 unique simulated dynamical diffraction patterns from different combinations of crystal structures, orientations, thicknesses, and microscope parameters, which are augmented with experimental artifacts. We evaluated FCU-Net against simulated and experimental datasets, where it substantially outperforms conventional analysis methods. Our code, models, and training library are open-source and may be adapted to different diffraction measurement problems.
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