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Multivariate data analysis as a tool for evaluating emission intensity, background equivalent concentration and detection limit obtained for different plasma positions in direct current plasma-atomic emission spectrometry

机译:多元数据分析作为评估直流等离子体原子发射光谱法中不同等离子体位置获得的发射强度,背景等效浓度和检测限的工具

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Relative emission intensity, background emission concentration (BEC) and detection limit (DL) obtained for different analytes and different plasma positions are examples of multivariate data sets. The observations can be related to the emission distribution in the plasma for the different elements (the spatial profiles). Principal component analysis (PCA) as a tool for modelling, interpretation and visualisation of such data sets was applied (i) to elucidate the data structure caused by the profiles, (ii) to enhance structural information using replicate or similar data sets, (iii) to predict model results that are less prone to errors and random variations, and (iv) to compare data sets of different origin (e.g. directly observed results with those calculated from the profiles). The selection of a suitable optimisation element can be guided by visual procedures or rather simple calculations based on the PCA model. (C) 1997 Elsevier Science B.V.
机译:针对不同分析物和不同血浆位置获得的相对发射强度,背景发射浓度(BEC)和检测极限(DL)是多元数据集的示例。这些观察结果可能与等离子体中不同元素的发射分布(空间分布)有关。应用主成分分析(PCA)作为此类数据集的建模,解释和可视化工具(i)阐明由配置文件引起的数据结构,(ii)使用重复或相似数据集增强结构信息,(iii )以预测不太容易出现错误和随机变化的模型结果,以及(iv)比较不同来源的数据集(例如,直接观察到的结果与根据配置文件计算得出的结果)。合适的优化元素的选择可以通过可视化过程或基于PCA模型的简单计算来指导。 (C)1997年Elsevier Science B.V.

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