Revealing the adulteration of sesame oil products by portable Raman spectrometer and 1D CNN vector regression: A comparative study with chemometrics and colorimetry

Food Chem. 2024 Mar 15:436:137694. doi: 10.1016/j.foodchem.2023.137694. Epub 2023 Oct 14.

Abstract

Identification and quantification of sesame oil products are crucial due to the existing problems of adulteration with lower-priced oils and false labeling of sesame proportions. In this study, 1D CNN models were established to achieve discrimination of oil types and multiple quantification of adulteration using portable Raman spectrometer. An improved data augmentation method involving discarding transformations that alter peak positions was proposed, and synchronously injecting noise during geometric transformations. Furthermore, a novel neural network structure was introduced incorporating vector regression to accurately predict each component simultaneously. The proposed method has achieved higher accuracy in detecting multi-component adulteration compared with chemometrics (100 % accuracy in classifying different oils; R2 over 0.99 and RMSE within 2 % in predicting unknown adulterated samples). Finally, commercially available sesame oil products were tested and compared with gas chromatography and colorimetric methods, demonstrating the effectiveness of our proposed model in achieving higher detection accuracy at low-concentration adulteration.

Keywords: 1D CNN; Multiple adulteration quantification; Raman spectroscopy; Sesame oil products; Vector regression.

MeSH terms

  • Chemometrics
  • Colorimetry
  • Food Contamination / analysis
  • Neural Networks, Computer
  • Plant Oils* / chemistry
  • Sesame Oil* / chemistry

Substances

  • Sesame Oil
  • Plant Oils