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Classification of crystal structure using a convolutional neural network

机译:使用卷积神经网络对晶体结构进行分类

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摘要

A deep machine-learning technique based on a convolutional neural network (CNN) is introduced. It has been used for the classification of powder X-ray diffraction (XRD) patterns in terms of crystal system, extinction group and space group. About 150 000 powder XRD patterns were collected and used as input for the CNN with no handcrafted engineering involved, and thereby an appropriate CNN architecture was obtained that allowed determination of the crystal system, extinction group and space group. In sharp contrast with the traditional use of powder XRD pattern analysis, the CNN never treats powder XRD patterns as a deconvoluted and discrete peak position or as intensity data, but instead the XRD patterns are regarded as nothing but a pattern similar to a picture. The CNN interprets features that humans cannot recognize in a powder XRD pattern. As a result, accuracy levels of 81.14, 83.83 and 94.99% were achieved for the space-group, extinction-group and crystal-system classifications, respectively. The well trained CNN was then used for symmetry identification of unknown novel inorganic compounds.
机译:介绍了一种基于卷积神经网络(CNN)的深度机器学习技术。它已被用于根据晶体系统,消光基团和空间基团对粉末X射线衍射(XRD)模式进行分类。收集了大约150 000粉末XRD图案,并作为CNN的输入,而无需进行任何手工工程,因此获得了合适的CNN结构,可以确定晶体系统,消光基团和空间群。与传统使用粉末XRD图案分析形成鲜明对比的是,CNN从未将粉末XRD图案视为去卷积和离散的峰位置或强度数据,而是XRD图案只不过是类似于图片的图案。 CNN会以粉末XRD模式解释人类无法识别的特征。结果,空间组,消光组和晶体系统分类的准确度分别达到了81.14%,83.83%和94.99%。然后将训练有素的CNN用于未知新型无机化合物的对称鉴定。

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