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Data-driven approach for the prediction and interpretation of core-electron loss spectroscopy

机译:数据驱动的芯电子损耗谱预测和解释方法

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摘要

Spectroscopy is indispensable for determining atomic configurations, chemical bondings, and vibrational behaviours, which are crucial information for materials development. Despite their importance, the interpretation of spectra using “human-driven” methods, such as the manual comparison of experimental spectra with reference/simulated spectra, is difficult due to the explosive increase in the number of experimental spectra to be observed. To overcome the limitations of the “human-driven” approach, we develop a new “data-driven” approach based on machine learning techniques by combining the layer clustering and decision tree methods. The proposed method is applied to the 46 oxygen-K edges of the ELNES/XANES spectra of oxide compounds. With this method, the spectra can be interpreted in accordance with the material information. Furthermore, we demonstrate that our method can predict spectral features from the material information. Our approach has the potential to provide information about a material that cannot be determined manually as well as predict a plausible spectrum from the geometric information alone.
机译:光谱学对于确定原子构型,化学键和振动行为必不可少,这对于材料开发至关重要。尽管它们很重要,但是由于要观察的实验光谱数量激增,因此难以使用“人工”方法(例如,手动比较实验光谱与参考/模拟光谱)来解释光谱。为了克服“人工驱动”方法的局限性,我们通过结合层聚类和决策树方法,开发了一种基于机器学习技术的新“数据驱动”方法。所提出的方法应用于氧化物化合物的ELNES / XANES光谱的46个氧-K边缘。使用这种方法,可以根据材料信息解释光谱。此外,我们证明了我们的方法可以从材料信息中预测光谱特征。我们的方法有可能提供有关无法手动确定的材料的信息,以及仅根据几何信息预测可能的光谱。

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