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首页> 外文期刊>Spectrochimica Acta, Part B. Atomic Spectroscopy >Clustering and training set selection methods for improving the accuracy of quantitative laser induced breakdown spectroscopy
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Clustering and training set selection methods for improving the accuracy of quantitative laser induced breakdown spectroscopy

机译:聚类和训练集选择方法可提高定量激光诱导击穿光谱的准确性

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We investigated five clustering and training set selection methods to improve the accuracy of quantitative chemical analysis of geologic samples by laser induced breakdown spectroscopy (LIBS) using partial least squares (PLS) regression. The LIBS spectra were previously acquired for 195 rock slabs and 31 pressed powder geostandards under 7 Torr CO2 at a stand-off distance of 1 m at 17 mJ per pulse to simulate the operational conditions of the ChemCam LIBS instrument on the Mars Science Laboratory Curiosity rover. The clustering and training set selection methods, which do not require prior knowledge of the chemical composition of the test-set samples, are based on grouping similar spectra and selecting appropriate training spectra for the partial least squares (PLS2) model. These methods were: (1) hierarchical clustering of the full set of training spectra and selection of a subset for use in training; (2) k-means clustering of all spectra and generation of PLS2 models based on the training samples within each cluster; (3) iterative use of PLS2 to predict sample composition and k-means clustering of the predicted compositions to subdivide the groups of spectra; (4) soft independent modeling of class analogy (SIMCA) classification of spectra, and generation of PLS2 models based on the training samples within each class; (5) use of Bayesian information criteria (B1C) to determine an optimal number of clusters and generation of PLS2 models based on the training samples within each cluster. The iterative method and the k-means method using 5 clusters showed the best performance, improving the absolute quadrature root mean squared error (RMSE) by -3 wt.%. The statistical significance of these improvements was -85%. Our results show that although clustering methods can modestly improve results, a large and diverse training set is the most reliable way to improve the accuracy of quantitative LIBS. In particular, additional sulfate standards and specifically fabricated analog samples with Mars-like compositions may improve the accuracy of ChemCam measurements on Mars. Refinement of the iterative method, modifications of the basic k-means clustering algorithm, and classification based on specifically selected S, C and Si emission lines may also prove beneficial and merit further study.
机译:我们研究了五种聚类和训练集选择方法,以通过使用偏最小二乘(PLS)回归的激光诱导击穿光谱法(LIBS)提高地质样品定量化学分析的准确性。 LIBS光谱以前是在7 Torr CO2下以195 mJ的间隔在1 Torn的距离下以每脉冲17 mJ的频率获取195块岩石板和31个压制粉末地标的,以模拟ChemCam LIBS仪器在火星科学实验室好奇号流动站上的操作条件。不需要先验知识的测试集样本的化学组成的聚类和训练集选择方法是基于对相似光谱进行分组并为偏最小二乘(PLS2)模型选择合适的训练光谱。这些方法是:(1)整套训练频谱的层次聚类和用于训练的子集的选择; (2)所有光谱的k均值聚类,并基于每个聚类中的训练样本生成PLS2模型; (3)迭代使用PLS2预测样品成分,并使用k-均值聚类预测成分,以细分光谱组; (4)对类的类比(SIMCA)分类进行软独立建模,并基于每个类内的训练样本生成PLS2模型; (5)使用贝叶斯信息标准(B1C)确定最佳群集数,并基于每个群集内的训练样本生成PLS2模型。使用5个簇的迭代方法和k均值方法显示出最佳性能,将绝对正交均方根误差(RMSE)提高了-3 wt。%。这些改善的统计学意义为-85%。我们的结果表明,尽管聚类方法可以适度地改善结果,但是大量多样的训练集是提高定量LIBS准确性的最可靠方法。特别是,额外的硫酸盐标准液和特制的类似火星成分的类似物样品可以提高ChemCam在火星上的测量精度。迭代方法的改进,基本k均值聚类算法的修改以及基于特定选择的S,C和Si发射谱线的分类也可能被证明是有益的,值得进一步研究。

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