Implementation of a fast, robust, and fully-automated pipeline for crystal structure determination and underlying strain mapping for crystalline materials is important for many technological applications. Scanning electron nanodiffraction offers a procedure for identifying and collecting strain maps with good accuracy and high spatial resolutions. However, the application of this technique is limited, particularly in thick samples where the electron beam can undergo multiple scattering, which introduces signal nonlinearities. Deep learning methods have the potential to invert these complex signals, but previous implementations are often trained only on specific crystal systems or a small subset of the crystal structure and microscope parameter phase space. In this study, we implement a Fourier space, complex-valued deep neural network called FCU-Net, to invert highly nonlinear electron diffraction patterns into the corresponding quantitative structure factor images. We trained the FCU-Net using over 200,000 unique simulated dynamical diffraction patterns which include many different combinations of crystal structures, orientations, thicknesses, microscope parameters, and common experimental artifacts. We evaluated the trained FCU-Net model against simulated and experimental 4D-STEM diffraction datasets, where it substantially out-performs conventional analysis methods. Our simulated diffraction pattern library, implementation of FCU-Net, and trained model weights are freely available in open source repositories, and can be adapted to many different diffraction measurement problems.
翻译:执行快速、稳健和完全自动化的晶体结构确定管道和晶体材料基本菌株测绘对于许多技术应用十分重要。扫描电子纳米碎片为识别和收集精度高和空间分辨率高的线状图提供了程序;然而,这一技术的应用有限,特别是在电子束能够进行多种散射的厚重样品中,在电子束可以产生信号非线性信号的不线性信号时尤其如此。深层学习方法有可能推翻这些复杂的信号,但以往的实施往往仅就特定的晶体系统或晶体结构和显微镜参数阶段空间中的一小部分进行训练。我们在这次研究中,我们采用了一个叫F4ier空间、价值复杂的深层神经网络,称为FCU-Net,以将高度非线性电线性电离分解模式倒入相应的定量结构要素图像中。我们培训的FCU-Net,使用了20多万个独特的模拟动态折射模式,其中包括许多不同的晶体结构组合、方向、厚度、显微镜参数和普通实验性工艺品类。我们评估了经过训练的FCU-STEM深层测量模型的模型模型模型模型模型,并进行了多种常规分析。