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首页> 外文期刊>Icarus: International Journal of Solar System Studies >The influence of multivariate analysis methods and target grain size on the accuracy of remote quantitative chemical analysis of rocks using laser induced breakdown spectroscopy
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The influence of multivariate analysis methods and target grain size on the accuracy of remote quantitative chemical analysis of rocks using laser induced breakdown spectroscopy

机译:多元分析方法和目标粒度对激光诱导击穿光谱法对岩石进行远程定量化学分析的准确性的影响

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摘要

Laser-induced breakdown spectroscopy (LIBS) was used to quantitatively analyze 195 rock slab samples with known bulk chemical compositions, 90 pressed-powder samples derived from a subset of those rocks, and 31 pressed-powder geostandards under conditions that simulate the ChemCam instrument on the Mars Science Laboratory Rover (MSL), Curiosity. The low-volatile (<2wt.%) silicate samples (90 rock slabs, corresponding powders, and 22 geostandards) were split into training, validation, and test sets. The LIBS spectra and chemical compositions of the training set were used with three multivariate methods to predict the chemical compositions of the test set. The methods were partial least squares (PLS), multilayer perceptron artificial neural networks (MLP ANNs) and cascade correlation (CC) ANNs. Both the full LIBS spectrum and the intensity at five pre-selected spectral channels per major element (feature selection) were used as input data for the multivariate calculations. The training spectra were supplied to the algorithms without averaging (i.e. five spectra per target) and with averaging (i.e. all spectra from the same target averaged and treated as one spectrum). In most cases neural networks did not perform better than PLS for our samples. PLS2 without spectral averaging outperformed all other procedures on the basis of lowest quadrature root mean squared error (RMSE) for both the full test set and the igneous rocks test set. The RMSE for PLS2 using the igneous rock slab test set is: 3.07wt.% SiO_2, 0.87wt.% TiO_2, 2.36wt.% Al_2O_3, 2.20wt.% Fe_2O_3, 0.08wt.% MnO, 1.74wt.% MgO, 1.14wt.% CaO, 0.85wt.% Na_2O, 0.81wt.% K_2O. PLS1 with feature selection and averaging had a higher quadrature RMSE than PLS2, but merits further investigation as a method of reducing data volume and computation time and potentially improving prediction accuracy, particularly for samples that differ significantly from the training set. Precision and accuracy were influenced by the ratio of laser beam diameter (~490μm) to grain size, with coarse-grained rocks often resulting in lower accuracy and precision than analyses of fine-grained rocks and powders. The number of analysis spots that were normally required to produce a chemical analysis within one standard deviation of the true bulk composition ranged from ~10 for fine-grained rocks to >20 for some coarse-grained rocks.
机译:在模拟ChemCam仪器的条件下,使用激光诱导击穿光谱(LIBS)定量分析了195种具有已知大块化学成分的岩石板样品,90种衍生自这些岩石子集的压粉样品和31压粉几何标准。好奇号火星科学实验室漫游者(MSL)。将低挥发性(<2wt。%)的硅酸盐样品(90块岩板,相应的粉末和22个土工标准)分为训练,验证和测试集。训练集的LIBS光谱和化学成分与三种多元方法一起用于预测测试集的化学成分。方法是偏最小二乘(PLS),多层感知器人工神经网络(MLP ANN)和级联相关(CC)ANN。完整的LIBS光谱和每个主要元素在五个预选光谱通道上的强度(特征选择)都用作多元计算的输入数据。将训练光谱提供给算法时不求平均(即每个目标五个光谱),而是取平均(即来自同一目标的所有光谱取平均值并视为一个光谱)。在大多数情况下,对于我们的样本,神经网络的性能并不比PLS好。在完整测试集和火成岩测试集的最低正交均方根误差(RMSE)的基础上,没有频谱平均的PLS2胜过所有其他程序。使用火成岩平板测试仪的PLS2的RMSE为:3.07wt。%SiO_2,0.87wt。%TiO_2,2.36wt。%Al_2O_3,2.20wt。%Fe_2O_3,0.08wt。%MnO,1.74wt。%MgO,1.14重量百分比的CaO,0.85重量百分比的Na_2O,0.81重量百分比的K_2O。具有特征选择和平均功能的PLS1具有比PLS2更高的正交RMSE,但是作为减少数据量和减少计算时间并潜在地提高预测准确性的方法,值得进一步研究,特别是对于与训练集明显不同的样本。精度和精度受激光束直径(〜490μm)与晶粒尺寸之比的影响,与细颗粒岩石和粉末的分析相比,粗颗粒岩石常常导致较低的精度和精确度。进行化学分析所需的分析斑点数量通常在真实体积组成的一个标准偏差之内,范围从细粒岩石的〜10到某些粗粒岩石的> 20。

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