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Classification of biodiesel using NIR spectrometry and multivariate techniques
Authors:Veras Germano  Gomes Adriano de Araujo  da Silva Adenilton Camilo  de Brito Anna Luiza Bizerra  de Almeida Pollyne Borborema Alves  de Medeiros Everaldo Paulo
Institution:a Universidade Estadual da Paraíba, Departamento de Química, 58.429-500, Campina Grande, PB, Brazil
b Empresa Brasileira de Pesquisa Agropecuária, Centro Nacional de Pesquisa de Algodão, 58.428-095, Campina Grande, PB, Brazil
Abstract:This article describes the classification of biodiesel samples using NIR spectroscopy and chemometric techniques. A total of 108 spectra of biodiesel samples were taken (being three samples each of four types of oil, cottonseed, sunflower, soybean and canola), from nine manufacturers. The measurements for each of the three samples were in the spectral region between 12,500 and 4000 cm−1. The data were preprocessed by selecting a spectral range of 5000-4500 cm−1, and then a Savitzky-Golay second-order polynomial was used with 21 data points to obtain second derivative spectra. Characterization of the biodiesel was done using chemometric models based on hierarchical cluster analysis (HCA), principal component analysis (PCA) and soft independent modeling of class analogy (SIMCA) elaborated for each group of biodiesel samples (cotton, sunflower, soybean and canola). For the HCA and PCA, the formation of clusters for each group of biodiesel was observed, and SIMCA models were built using 18 spectral measurements for each type of biodiesel (training set), and nine spectral measurements to construct a classification set (except for the canola oil which used eight spectra). The SIMCA classifications obtained 100% accurate identifications. Using this strategy, it was feasible to classify biodiesel quickly and nondestructively without the need for various analytical determinations.
Keywords:Biodiesel  NIR  Pattern recognition
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