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Adaptive design of an X-ray magnetic circular dichroism spectroscopy experiment with Gaussian process modelling

机译:基于高斯过程建模的X射线磁性圆二色谱光谱实验的自适应设计

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Spectroscopy is a widely used experimental technique, and enhancing its efficiency can have a strong impact on materials research. We propose an adaptive design for spectroscopy experiments that uses a machine learning technique to improve efficiency. We examined X-ray magnetic circular dichroism (XMCD) spectroscopy for the applicability of a machine learning technique to spectroscopy. An XMCD spectrum was predicted by Gaussian process modelling with learning of an experimental spectrum using a limited number of observed data points. Adaptive sampling of data points with maximum variance of the predicted spectrum successfully reduced the total data points for the evaluation of magnetic moments while providing the required accuracy. The present method reduces the time and cost for XMCD spectroscopy and has potential applicability to various spectroscopies.
机译:光谱学是一种广泛使用的实验技术,提高其效率可以对材料研究产生重大影响。我们提出了一种适用于光谱实验的自适应设计,该设计使用机器学习技术来提高效率。我们检查了X射线磁性圆二色性(XMCD)光谱对于机器学习技术对光谱的适用性。通过使用有限数量的观测数据点学习实验光谱,通过高斯过程建模预测了XMCD光谱。具有预测频谱最大方差的数据点的自适应采样成功减少了用于评估磁矩的总数据点,同时提供了所需的精度。本方法减少了XMCD光谱学的时间和成本,并且对各种光谱学具有潜在的适用性。

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