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使用4D电子衍射数据集训练用于精确取向和应变映射的人工神经网络。

Training artificial neural networks for precision orientation and strain mapping using 4D electron diffraction datasets.

作者信息

Yuan Renliang, Zhang Jiong, He Lingfeng, Zuo Jian-Min

机构信息

Department of Materials Science and Engineering, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA; Materials Research Laboratory, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA.

Intel Corporation, Corporate Quality Network, Hillsboro, OR 97124, USA.

出版信息

Ultramicroscopy. 2021 Dec;231:113256. doi: 10.1016/j.ultramic.2021.113256. Epub 2021 Mar 11.

Abstract

Techniques for training artificial neural networks (ANNs) and convolutional neural networks (CNNs) using simulated dynamical electron diffraction patterns are described. The premise is based on the following facts. First, given a suitable crystal structure model and scattering potential, electron diffraction patterns can be simulated accurately using dynamical diffraction theory. Secondly, using simulated diffraction patterns as input, ANNs can be trained for the determination of crystal structural properties, such as crystal orientation and local strain. Further, by applying the trained ANNs to four-dimensional diffraction datasets (4D-DD) collected using the scanning electron nanodiffraction (SEND) or 4D scanning transmission electron microscopy (4D-STEM) techniques, the crystal structural properties can be mapped at high spatial resolution. Here, we demonstrate the ANN-enabled possibilities for the analysis of crystal orientation and strain at high precision and benchmark the performance of ANNs and CNNs by comparing with previous methods. A factor of thirty improvement in angular resolution at 0.009˚ (0.16 mrad) for orientation mapping, sensitivity at 0.04% or less for strain mapping, and improvements in computational performance are demonstrated.

摘要

描述了使用模拟动态电子衍射图案训练人工神经网络(ANN)和卷积神经网络(CNN)的技术。其前提基于以下事实。首先,给定合适的晶体结构模型和散射势,可以使用动态衍射理论准确模拟电子衍射图案。其次,将模拟衍射图案作为输入,可以训练ANN来确定晶体结构特性,如晶体取向和局部应变。此外,通过将训练好的ANN应用于使用扫描电子纳米衍射(SEND)或四维扫描透射电子显微镜(4D-STEM)技术收集的四维衍射数据集(4D-DD),可以在高空间分辨率下绘制晶体结构特性。在此,我们展示了ANN在高精度分析晶体取向和应变方面的可能性,并通过与以前的方法比较来评估ANN和CNN的性能。结果表明,在取向映射方面,角分辨率提高了30倍,达到0.009˚(0.16 mrad);在应变映射方面,灵敏度小于或等于0.04%,并且计算性能也有所提高。

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