Machine Learning for Efficient Grazing-Exit X-ray Absorption Near Edge Structure Spectroscopy Analysis : Bayesian Optimization Approach

C. Cakir, Can Bogoclu, Franziska Emmerling, Christina Streli, A. Guilherme Buzanich, Martin Radtke
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Abstract

In materials science, traditional techniques for analysing layered structures are essential for obtaining information about local structure, electronic properties and chemical states. While valuable, these methods often require high vacuum environments and have limited depth profiling capabilities. The Grazing Exit X-ray Absorption Near-Edge Structure (GE-XANES) technique addresses these limitations by providing depth-resolved insight at ambient conditions, facilitating in situ material analysis without special sample preparation. However, GE-XANES is limited by long data acquisition times, which hinders its practicality for various applications. To overcome this, we have incorporated Bayesian Optimization (BO) into the GE-XANES data acquisition process. This innovative approach significantly reduces data acquisition time from 20 hours to 25 minutes. We have used standard GE-XANES experiment, which serve as reference, to validate the effectiveness and accuracy of the BO-informed experimental setup. Our results show that this optimized approach maintains data quality while significantly improving efficiency, making GE-XANES more accessible to a wider range of materials science applications.
机器学习用于高效掠出 X 射线吸收近边缘结构光谱分析:贝叶斯优化方法
在材料科学领域,分析层状结构的传统技术对于获取有关局部结构、电子特性和化学状态的信息至关重要。虽然这些方法很有价值,但通常需要高真空环境,而且深度剖析能力有限。冰晶出口 X 射线吸收近边缘结构(GE-XANES)技术解决了这些局限性,在环境条件下提供深度分辨洞察力,无需特殊样品制备即可进行原位材料分析。然而,GE-XANES 受限于较长的数据采集时间,妨碍了其在各种应用中的实用性。为了克服这一问题,我们在 GE-XANES 数据采集过程中加入了贝叶斯优化 (BO)。这一创新方法将数据采集时间从 20 小时大幅缩短至 25 分钟。我们使用标准 GE-XANES 实验作为参考,以验证贝叶斯优化实验设置的有效性和准确性。我们的研究结果表明,这种优化方法在保持数据质量的同时显著提高了效率,使 GE-XANES 更容易应用于更广泛的材料科学领域。
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