1998
DOI: 10.1080/10934529809376796
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Comparison of multivariate calibration methods for quantitative analysis of multicomponent mixture of air toxic organic compounds by FTIR

Abstract: 1998)Comparison of multivariate calibration methods for quantitative analysis of multicomponent mixture of air toxic organic compounds by FTIR, ABSTRACTThe quantitative prediction abilities of three competing multivariate calibration methods for concentration analysis of FTIR Spectra are compared. The calibration methods compared include classical least squares method (CLS), Kaiman filter method (KFM) and partial least squares method (PLS). The mixtures of seven air toxic organic compounds whose FTIR Spectra a… Show more

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Cited by 5 publications
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“…The quantitative analysis of multi-component mixtures using spectroscopic-based techniques is very difficult, because the presence of the spectral overlapping among the analytes of interest in the complex mixture [8]. Currently, the use of multivariate calibrations for analysis of complex mixtures has grown fast and is receiving popularity for the quantification of edible fats and oils in the mixture due to its ability to use the complete spectral information, frequently with no excessive sample separation [2].…”
Section: Introductionmentioning
confidence: 99%
“…The quantitative analysis of multi-component mixtures using spectroscopic-based techniques is very difficult, because the presence of the spectral overlapping among the analytes of interest in the complex mixture [8]. Currently, the use of multivariate calibrations for analysis of complex mixtures has grown fast and is receiving popularity for the quantification of edible fats and oils in the mixture due to its ability to use the complete spectral information, frequently with no excessive sample separation [2].…”
Section: Introductionmentioning
confidence: 99%