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The Application of Machine-Learning and Raman Spectroscopy for the Rapid Detection of Edible Oils Type and Adulteration
- Source :
- Food Chem, Food chemistry, vol 373, iss Pt B
- Publication Year :
- 2021
-
Abstract
- Raman spectroscopy is an emerging technique for the rapid detection of oil qualities. But the spectral analysis is time-consuming and low-throughput, which has limited the broad adoption. To address this issue, nine supervised machine learning (ML) algorithms were integrated into a Raman spectroscopy protocol for achieving the rapid analysis. Raman spectra were obtained for ten commercial edible oils from a variety of brands and the resulting spectral dataset was analyzed with supervised ML algorithms and compared against a principal component analysis (PCA) model. A ML-derived model obtained an accuracy of 96.7% in detecting oil type and an adulteration prediction of 0.984 (R2). Several ML algorithms also were superior than PCA in classifying edible oils based on fatty acid compositions by gas chromatography, with a faster readout and 100% accuracy. This study provided an exemplar for combining conventional Raman spectroscopy or gas chromatography with ML for the rapid food analysis.
- Subjects :
- Oil type
Materials science
Food Contamination
Machine learning
computer.software_genre
Spectrum Analysis, Raman
Rapid detection
Article
Analytical Chemistry
Machine Learning
symbols.namesake
Plant Oils
Spectral analysis
Raman
Principal Component Analysis
business.industry
Edible oil quality
Spectrum Analysis
General Medicine
Principal component analysis
Raman spectroscopy
symbols
Food adulteration
Artificial intelligence
Gas chromatography
business
computer
Food Science
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- Food Chem, Food chemistry, vol 373, iss Pt B
- Accession number :
- edsair.doi.dedup.....4c5a7d60b4a3f53c53f44acf80758f2b