用机器学习和x射线光谱学预测AlFeNiTiVZr-Cr合金的平均成分

Compounds Pub Date : 2023-03-03 DOI:10.3390/compounds3010018
T. Sadat
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引用次数: 2

摘要

多主元素合金(MPEA)是一种由多种金属元素组成的金属合金,每种元素占合金的重要部分。在这项研究中,使用机器学习算法研究了(AlFeNiTiVZr)1-xCrx MPEA合金中元素的初始原子百分比与表面位置的关系。由于元素的原子百分比与其在表面上的位置之间没有线性关系,因此不可能从数据集中辨别出任何明确的关联。为了克服这种非线性关系,使用决策树(DT)和随机森林(RF)回归模型来完成元素原子百分比的预测。将模型进行比较,结果与实验结果一致(DT算法的决定系数R2为0.98,RF算法的决定系数R2为0.99)。这项研究证明了机器学习算法在波长色散x射线光谱(WDS)数据集分析中的潜力。
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Predicting the Average Composition of an AlFeNiTiVZr-Cr Alloy with Machine Learning and X-ray Spectroscopy
A multi-principal element alloy (MPEA) is a type of metallic alloy that is composed of multiple metallic elements, with each element making up a significant portion of the alloy. In this study, the initial atomic percentage of elements in an (AlFeNiTiVZr)1-xCrx MPEA alloy as a function of the position on the surface was investigated using machine learning algorithms. Given the absence of a linear relationship between the atomic percentage of elements and their location on the surface, it is not possible to discern any clear association from the dataset. To overcome this non-linear relationship, the prediction of the atomic percentage of elements was accomplished using both decision tree (DT) and random forest (RF) regression models. The models were compared, and the results were found to be consistent with the experimental findings (a coefficient of determination R2 of 0.98 is obtained with the DT algorithm and 0.99 with the RF one). This research demonstrates the potential of machine learning algorithms in the analysis of wavelength-dispersive X-ray spectroscopy (WDS) datasets.
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