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Monitoring of frying process in canola oil blend using fourier transform infrared and chemometrics techniques.

Muhammad Haseeb AhmadZainab ShahbazMuhammad ImranMuhammad Kamran KhanNiaz MuhammadSanaullah IqbalWaqas AhmedTanvir Ahmad
Published in: Food science & nutrition (2021)
The production of trans-fats and chemical changes during the process of frying are serious public health concerns and must be monitored efficiently. For this purpose, the canola oil was formulated with different ratio of extra virgin olive oil and palm olein using D-optimal mixture design, and the best formulation (67:22:11) based on free fatty acid (FFA) content, peroxide value (PV), and iodine value (IV) as responses was selected for multiple frying process. The data on FFA, PV, and IV along with Fourier transform-infrared (FT-IR) spectra were taken after each frying up to ten frying. The spectral data were preprocessed with standard normal variate followed by principal component analysis which is clearly showing the differentiation for various frying. Similarly, partial least square regression was applied to predict the FFA (0.37%-1.63%), PV (4.47-13.85 meqO2/kg), and IV (111.51-51.39 I2/100 g) which demonstrated high coefficient of determination (R2) 0.84, 0.83, and 0.81, respectively. It can be summarized that FT-IR can be used as a novel tool for fast and noninvasive quality determination of frying oils.
Keyphrases
  • fatty acid
  • public health
  • electronic health record
  • machine learning
  • mass spectrometry
  • molecular dynamics
  • density functional theory