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基于EXAFS谱图的机器学习方法预测配位数

来源:中国科学院科技论文预发布平台_logo中国科学院科技论文预发布平台
英文摘要

bstract [Background] X-ray Absorption Fine Structure (XAFS) is a vital technique for structural analysis, widely employed to investigate the oxidation state, coordination environment, and neighboring atom properties of amorphous materials and disordered systems. However, the complexity of XAFS spectra often requires interpretation by experienced researchers, which can still lead to inaccuracies. [Purpose] This study aims to use machine learning approaches to analyze XAFS data and predict the coordination number of absorbing atoms. [Methods] First, a dataset of 13,374 valid EXAFS spectra of fourth-period transition metal elements was sourced from the Materials Project database. Second, this data was utilized to train three machine learning models: neural networks, bagging models, and random forest models. Finally, these models were applied to predict the coordination numbers of the absorbing atoms in the spectra. [Results] The study achieved an average prediction accuracy of approximately 70%. Feature importance analysis revealed that data points within R < 3.0 were critical for predictions, consistent with the prominence of short-range atomic interactions in EXAFS theory. [Conclusions] This research enhances the efficiency and reliability of XAFS data analysis by improving model generalizability and interpretability.

曾海滔、胡龙飞、姚涛

中国科学技术大学国家同步辐射实验室中国科学技术大学中国科学技术大学国家同步辐射实验室

材料科学计算技术、计算机技术

EXAFS配位数袋装法随机森林

EXAFSoordination NumberBaggingRandom Forest

曾海滔,胡龙飞,姚涛.基于EXAFS谱图的机器学习方法预测配位数[EB/OL].(2025-04-03)[2025-04-05]..点此复制

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