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荧光高光谱技术与机器学习结合的火锅油品质无损检测研究。

Research on non-destructive testing of hotpot oil quality by fluorescence hyperspectral technology combined with machine learning.

机构信息

College of Mechanical and Electrical Engineering, Sichuan Agricultural University, Xin Kang Road, Yucheng District, Ya'an 625014, PR China.

College of Food Sciences, Sichuan Agricultural University, Xin Kang Road, Yucheng District, Ya'an 625014, PR China.

出版信息

Spectrochim Acta A Mol Biomol Spectrosc. 2023 Jan 5;284:121785. doi: 10.1016/j.saa.2022.121785. Epub 2022 Aug 28.

Abstract

Eating repeatedly used hotpot oil will cause serious harm to human health. In order to realize rapid non-destructive testing of hotpot oil quality, a modeling experiment method of fluorescence hyperspectral technology combined with machine learning algorithm was proposed. Five preprocessing algorithms were used to preprocess the original spectral data, which realized data denoising and reduces the influence of baseline drift and tilt. The feature bands extracted from the spectral data showed that the best feature bands for the two-classification model and the six-classification model were concentrated between 469 and 962 nm and 534-809 nm, respectively. Using the PCA algorithm to visualize the spectral data, the results showed the distribution of the six types of samples intuitively, and indicated that the data could be classified. Based on the modeling analysis of the feature bands, the results showed that the best two-classification models and the best six-classification models were MF-RF-RF and MF-XGBoost-LGB models, respectively, and the classification accuracy reached 100 %. Compared with the traditional model, the error was greatly reduced, and the calculation time was also saved. This study confirmed that fluorescence hyperspectral technology combined with machine learning algorithm could effectively realize the detection of reused hotpot oil.

摘要

反复食用火锅老油会对人体健康造成严重危害。为了实现火锅老油品质的快速无损检测,提出了一种基于荧光高光谱技术和机器学习算法的建模实验方法。使用五种预处理算法对原始光谱数据进行预处理,实现数据去噪,降低基线漂移和倾斜的影响。从光谱数据中提取的特征波段表明,两类分类模型和六类分类模型的最佳特征波段分别集中在 469-962nm 和 534-809nm 之间。使用 PCA 算法对光谱数据进行可视化,结果直观地显示了六种类型样品的分布,表明数据可以进行分类。基于特征波段的建模分析,结果表明,最佳的两类分类模型和最佳的六类分类模型分别是 MF-RF-RF 和 MF-XGBoost-LGB 模型,分类准确率达到 100%。与传统模型相比,误差大大降低,计算时间也得到了节省。本研究证实,荧光高光谱技术与机器学习算法相结合可以有效地实现对火锅老油的检测。

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