神经网络粉末衍射分析化合物晶体结构的可能性

IF 0.5 Q4 CHEMISTRY, MULTIDISCIPLINARY
A. Zaloga, V. Stanovov, O. E. Bezrukova, P. Dubinin, I. Yakimov
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引用次数: 0

摘要

研究了用卷积人工神经网络(ANN)进行晶体物质粉末衍射结构分析的可能性。首先,根据ICSD数据库(2017年)的晶体结构计算出的全剖面衍射图,使用人工神经网络对晶体系统和空间群进行分类。ICSD数据库包含192004个结构,其中80%用于深度网络训练,20%用于识别精度的独立测试。晶体系统网络的分类准确率为87.9%,空间群的分类准确率为77.2%。其次,利用人工神经网络对随机遗传算法生成的结构模型进行类似的分类,根据测试化合物K4SnO4的全剖面衍射图搜索三斜晶体结构。分类标准是一个或几个原子进入它们在物质结构中的晶体位置。对遗传算法多次运行生成的12万个K4PbO4三斜结构模型进行独立深度网络训练。K4SnO4结构模型的分类准确率超过50%。结果表明,深度训练的卷积人工神经网络可以有效地根据粉末衍射图的结构特征对晶体结构进行分类
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Possibilities of Neural Network Powder Diffraction Analysis Crystal Structure of Chemical Compounds
Some possibilities of using convolutional artificial neural networks (ANN) for powder diffraction structural analysis of crystalline substances have been investigated. First, ANNs are used to classify crystalline systems and space groups according to calculated full-profile diffractograms calculated from the crystal structures of the ICSD database (2017 year). The ICSD database contains 192004 structures, of which 80% was used for in-depth network training, and 20% for independent testing of recognition accuracy. The accuracy of classification by a network of crystalline systems was 87.9%, and that of space groups was 77.2%. Secondly, the ANN is used for a similar classification of structural models generated by the stochastic genetic algorithm in the search processes for triclinic crystal structures of test compound K4SnO4 according to their full-profile diffraction patterns. The classification criterion was the entry of one or several atoms into their crystallographic positions in the structure of a substance. Independent deep network training was performed on 120 thousand structural models of the K4PbO4 triclinic structure generated in several runs of the genetic algorithm. The accuracy of the classification of K4SnO4 structural models exceeded 50%. The results show that deeply trained convolutional ANNs can be effective for classifying crystal structures according to the structural characteristics of their powder diffraction patterns
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CiteScore
1.10
自引率
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发文量
13
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