论文标题

使用机器学习方法中X射线衍射数据中的伪影识别

Artifact Identification in X-ray Diffraction Data using Machine Learning Methods

论文作者

Yanxon, Howard, Weng, James, Parraga, Hannah, Xu, Wenqian, Ruett, Uta, Schwarz, Nicholas

论文摘要

研究人员高度利用了原位同步加速器高能量X射线粉末衍射(XRD)技术,可以分析功能设备(例如电池材料)或复杂的样品环境(例如钻石蜂窝细胞或合成反应器)中材料的晶体结构。材料的原子结构可以通过其衍射模式来识别,以及详细的分析,例如Rietveld改进,该分析表明测量的结构如何偏离理想结构(例如内部应力或缺陷)。对于原位实验,通常在不同条件下(例如绝热条件)在同一样本上收集一系列XRD图像,产生不同物质状态,或者只是作为时间的时间连续收集的,以跟踪样品在化学或物理过程中的变化。原位实验通常与区域探测器一起进行,收集由理想粉末的衍射环组成的2D图像。根据材料的形式,可以观察到除现实样本及其环境的典型Debye Scherrer环以外的其他特征,例如纹理或优选方向以及2D XRD图像中的单晶衍射点。在这项工作中,我们提出了一项研究机器学习方法,以快速可靠地识别XRD图像中的单晶衍射点。在XRD图像整合过程中排除伪影可以精确分析感兴趣的粉末衍射环。我们观察到,当使用高度多样的数据集对小群亚集进行训练时,梯度提升方法可以始终产生高精度的结果。与常规方法相比,该方法大大减少了识别和分离单晶斑所花费的时间。

The in situ synchrotron high-energy X-ray powder diffraction (XRD) technique is highly utilized by researchers to analyze the crystallographic structures of materials in functional devices (e.g., battery materials) or in complex sample environments (e.g., diamond anvil cells or syntheses reactors). An atomic structure of a material can be identified by its diffraction pattern, along with detailed analysis such as Rietveld refinement which indicates how the measured structure deviates from the ideal structure (e.g., internal stresses or defects). For in situ experiments, a series of XRD images is usually collected on the same sample at different conditions (e.g., adiabatic conditions), yielding different states of matter, or simply collected continuously as a function of time to track the change of a sample over a chemical or physical process. In situ experiments are usually performed with area detectors, collecting 2D images composed of diffraction rings for ideal powders. Depending on the material's form, one may observe different characteristics other than the typical Debye Scherrer rings for a realistic sample and its environments, such as textures or preferred orientations and single crystal diffraction spots in the 2D XRD image. In this work, we present an investigation of machine learning methods for fast and reliable identification and separation of the single crystal diffraction spots in XRD images. The exclusion of artifacts during an XRD image integration process allows a precise analysis of the powder diffraction rings of interest. We observe that the gradient boosting method can consistently produce high accuracy results when it is trained with small subsets of highly diverse datasets. The method dramatically decreases the amount of time spent on identifying and separating single crystal spots in comparison to the conventional method.

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