Rapid identification of edible oil species using supervised support vector machine based on low-field nuclear magnetic resonance relaxation features

Food Chem. 2019 May 15:280:139-145. doi: 10.1016/j.foodchem.2018.12.031. Epub 2018 Dec 13.

Abstract

Aimed to rapidly identify the edible oils according to their botanical origin, a novel method was proposed using supervised support vector machine based on low-field nuclear magnetic resonance and relaxation features. The low-field (LF) nuclear magnetic resonance (NMR) signals of 11 types of edible oils were acquired, and 5 features were extracted from the transverse relaxation decay curves and modeled using support vector machines (SVM) for the identification of edible oils. Two SVM classification strategies have been applied and discussed. Good performance can be achieved when the relative position of each edible oil has been determined by PCA before the designing of binary tree structure of SVM model, and the classification accuracy is 99.04%. The good robustness of this method has been verify at different data sets. It is almost a real time method, and the entire process takes only 144 s.

Keywords: Edible oil species; LF-NMR; PCA; Rapid identification; SVM.

MeSH terms

  • Food Analysis / methods
  • Food Analysis / statistics & numerical data
  • Magnetic Resonance Spectroscopy / methods*
  • Magnetic Resonance Spectroscopy / statistics & numerical data
  • Plant Oils / analysis*
  • Plant Oils / chemistry
  • Plant Oils / classification
  • Support Vector Machine

Substances

  • Plant Oils