论文标题

基于图形神经网络和基于变压器的XANES数据分析方法

A graph neural network and transformer based approach to XANES data analyis

论文作者

Zhan, Fei, Zheng, Lirong, Yao, Haodong, Geng, Zhi, Yu, Can, Han, Xue, Song, Xueqi, Chen, Shuguang, Zhao, Haifeng

论文摘要

X射线吸收光谱(XAS)是表征系统的原子尺度三维局部结构的必不可少的工具,其中Xanes是反映三维结构的最重要的能量区域。但是,对XANES的三维结构进行定量分析,需要用户对结构信息有深入的理解和准确的判断,并总结了几个结构性参数,这通常很难实现。在这项工作中,我们构建了\ textbf {物理信息图神经网络}和\ textbf {变形金刚}模型,用于从输入三维结构中计算XANE;我们根据XAS的物理含义提高模型的效率;然后,我们将模型和优化算法结合起来,以符合给定系统的三维结构。此方法不需要用户汇总结构参数,具有较大的应用范围。它可以应用于固体材料的三维结构分析,对于能量和催化领域的结构功能关系的研究具有积极的意义。此外,预计该方法将发展为XAS相关束线的在线三维结构分析方法。

X-ray absorption spectroscopy (XAS) is an indispensable tool to characterize the atomic-scale three-dimensional local structure of the system, in which XANES is the most important energy region to reflect the three-dimensional structure. However quantitative analysis of three-dimensional structure from XANES requires users to have a deep understanding and accurate judgment of structural information and summarize several structural parameters, which is often difficult to achieve. In this work, We construct \textbf{physics-informed Graph neural network} and \textbf{Transformer} models for calculating XANES from the input three-dimensional structure; we improve the efficiency of the model based on the physical meaning of XAS; then we combine the model and optimization algorithm to fit the three-dimensional structure of given system. This method does not require users to summarize the structural parameters, has wide application range. It can be applied to the three-dimensional structure analysis of solid materials and has positive significance for the study of structure-function relationship in the fields of energy and catalysis. In addition, this method is expected to be developed into an online three-dimensional structure analysis method for XAS related beamlines.

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