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Multivariate analysis of remote laser-induced breakdown spectroscopy spectra using partial least squares,principal component analysis,and related techniques
Authors:Samuel M. Clegg  Elizabeth Sklute  M. Darby Dyar  James E. Barefield  Roger C. Wiens
Affiliation:1. Chemistry Division, Los Alamos National Laboratory, Los Alamos, NM 87544, United States;2. Mount Holyoke College, South Hadley, Massachusetts 01075, United States;3. International, Space & Response Division, Los Alamos National Laboratory, Los Alamos, NM 87544, United States
Abstract:Quantitative analysis with laser-induced breakdown spectroscopy traditionally employs calibration curves that are complicated by chemical matrix effects. These chemical matrix effects influence the laser-induced breakdown spectroscopy plasma and the ratio of elemental composition to elemental emission line intensity. Consequently, laser-induced breakdown spectroscopy calibration typically requires a priori knowledge of the unknown, in order for a series of calibration standards similar to the unknown to be employed. In this paper, three new Multivariate Analysis techniques are employed to analyze the laser-induced breakdown spectroscopy spectra of 18 disparate igneous and highly-metamorphosed rock samples. Partial Least Squares analysis is used to generate a calibration model from which unknown samples can be analyzed. Principal Components Analysis and Soft Independent Modeling of Class Analogy are employed to generate a model and predict the rock type of the samples. These Multivariate Analysis techniques appear to exploit the matrix effects associated with the chemistries of these 18 samples.
Keywords:Remote laser-induced breakdown spectroscopy   Multivariate analysis   Principal components analysis   Partial least squares
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