Department of Physics, University of Patras, 26504, Patras, Greece.
Institute of Chemical Engineering Sciences (ICE-HT), Foundation for Research and Technology-Hellas (FORTH), Patras, Greece.
Sci Rep. 2021 Mar 8;11(1):5360. doi: 10.1038/s41598-021-84941-z.
Olive oil is a basic element of the Mediterranean diet and a key product for the economies of the Mediterranean countries. Thus, there is an added incentive in the olive oil business for fraud through practices like adulteration and mislabeling. In the present work, Laser Induced Breakdown Spectroscopy (LIBS) assisted by machine learning is used for the classification of 139 virgin olive oils in terms of their geographical origin. The LIBS spectra of these olive oil samples were used to train different machine learning algorithms, namely LDA, ERTC, RFC, XGBoost, and to assess their classification performance. In addition, the variable importance of the spectral features was calculated, for the identification of the most important ones for the classification performance and to reduce their number for the algorithmic training. The algorithmic training was evaluated and tested by means of classification reports, confusion matrices and by external validation procedure as well. The present results demonstrate that machine learning aided LIBS can be a powerful and efficient tool for the rapid authentication of the geographic origin of virgin olive oil.
橄榄油是地中海饮食的基本元素,也是地中海国家经济的关键产品。因此,橄榄油行业存在着通过掺假和标签错误等行为进行欺诈的额外动机。在本工作中,利用机器学习辅助的激光诱导击穿光谱(LIBS)对 139 种特级初榨橄榄油的地理来源进行分类。使用这些橄榄油样品的 LIBS 光谱来训练不同的机器学习算法,即 LDA、ERTC、RFC、XGBoost,并评估它们的分类性能。此外,还计算了光谱特征的重要性,以确定对分类性能最重要的特征,并减少算法训练的特征数量。通过分类报告、混淆矩阵以及外部验证程序对算法训练进行了评估和测试。目前的结果表明,机器学习辅助的 LIBS 可以成为快速验证特级初榨橄榄油地理来源的强大而有效的工具。