4.5 Article

Evaluation of SIMCA and PLS algorithms to detect adulterants in canola oil by FT-IR

期刊

出版社

WILEY
DOI: 10.1111/ijfs.14866

关键词

Canola oil; chemometric analysis; food adulteration; FT‐ IR; OC‐ PLS; PLS‐ DA; SIMCA

资金

  1. Agencia Nacional de Promocion Cientifica y Tecnologica [PICT 2018-01822]
  2. Programacion UBACYT 2014-2017 [20020130100443BA]

向作者/读者索取更多资源

In this study, adulteration of canola oil with four potential edible oils was analyzed using FT-IR and chemometric methods. Excellent classification results were obtained with multi-class approaches, while the selection of variables was necessary to improve the classification error with one-class approaches. The differences observed using different methods were related to the nature of each model depending on how the boundaries are set in each of them.
Adulteration of canola oil with four potential edible oils was analysed using FT-IR and chemometric methods. The adulterants (corn, peanut, soya bean and sunflower oils) were studied in four different proportions (canola oil + adulterant oils: 90 + 10, 95 + 5, 98 + 2 and 99 + 1 in volume). Excellent classification results were obtained when multi-class approaches were performed with a maximum error of 3%, using 1630 or 16 wavenumbers as variables. In the case of one-class approaches, the selection of variables (16 wavenumbers) was necessary, improving the classification error to 5%. The differences observed using the different methods were related to the nature of each model depending on how the boundaries are set in each of them, responding either to a PCA-based or PLS-based algorithm.

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