Max Planck Institute for Chemical Energy Conversion, Stiftstr. 34-36, 45470, Muelheim an der Ruhr, Germany.
Max Planck Institute for Chemical Energy Conversion, Stiftstr. 34-36, 45470, Muelheim an der Ruhr, Germany.
Anal Chim Acta. 2023 Aug 29;1271:341433. doi: 10.1016/j.aca.2023.341433. Epub 2023 May 27.
X-ray photoelectron spectroscopy is an indispensable technique for the quantitative determination of sample composition and electronic structure in diverse research fields. Quantitative analysis of the phases present in XP spectra is usually conducted manually by means of empirical peak fitting performed by trained spectroscopists. However, with recent advancements in the usability and reliability of XPS instruments, ever more (inexperienced) users are creating increasingly large data sets that are harder to analyze by hand. In order to aid users with the analysis of large XPS data sets, more automated, easy-to-use analysis techniques are needed. Here, we propose a supervised machine learning framework based on artificial convolutional neural networks. By training such networks on large numbers of artificially created XP spectra with known quantifications (i.e., for each spectrum, the concentration of each chemical species is known), we created universally applicable models for auto-quantification of transition-metal XPS data that are able to predict the sample composition from spectra within seconds. Upon evaluation against more traditional peak fitting methods, we showed that these neural networks achieve competitive quantification accuracy. The proposed framework is shown to be flexible enough to accommodate spectra containing multiple chemical elements and measured with different experimental parameters. The use of dropout variational inference for the determination of quantification uncertainty is illustrated.
X 射线光电子能谱分析是定量测定不同研究领域样品成分和电子结构的不可或缺的技术。XP 光谱中相的定量分析通常由经验丰富的光谱学家通过经验性的峰拟合来手动进行。然而,随着 XPS 仪器在可用性和可靠性方面的最新进展,越来越多(缺乏经验)的用户正在创建越来越大的数据,这些数据越来越难以手动分析。为了帮助用户分析大型 XPS 数据集,需要更自动化、易于使用的分析技术。在这里,我们提出了一种基于人工卷积神经网络的监督机器学习框架。通过在具有已知定量(即,对于每个光谱,每种化学物质的浓度是已知的)的大量人工创建的 XP 光谱上训练这些网络,我们创建了适用于自动定量过渡金属 XPS 数据的通用模型,这些模型能够在几秒钟内从光谱中预测样品组成。通过与更传统的峰拟合方法进行评估,我们表明这些神经网络能够实现具有竞争力的定量精度。所提出的框架被证明足够灵活,可以适应包含多个化学元素和用不同实验参数测量的光谱。说明了用于确定定量不确定性的辍学变分推理的使用。