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利用便携式近红外光谱法优化橄榄油质量评估的变量选择和机器学习模型。

Optimized variable selection and machine learning models for olive oil quality assessment using portable near infrared spectroscopy.

机构信息

University Sidi Mohamed Ben Abdellah, Faculty of Sciences and Techniques of Fez, Laboratory of Applied Organic Chemistry, Fez, Morocco; Moroccan Foundation for Advanced Science, Innovation & Research, MAScIR Rabat, Morocco.

University Sidi Mohamed Ben Abdellah, Faculty of Sciences and Techniques of Fez, Laboratory of Applied Organic Chemistry, Fez, Morocco.

出版信息

Spectrochim Acta A Mol Biomol Spectrosc. 2023 Dec 15;303:123213. doi: 10.1016/j.saa.2023.123213. Epub 2023 Jul 27.

Abstract

Olive oil is a key component of the Mediterranean diet, rich in antioxidants and beneficial monounsaturated fatty acids. As a result, high-quality olive oil is in great demand, with its price varying depending on its quality. Traditional chemical tests for assessing olive oil quality are expensive and time-consuming. To address these limitations, this study explores the use of near infrared spectroscopy (NIRS) in predicting key quality parameters of olive oil, including acidity, K232, and K270. To this end, a set of 200 olive oil samples was collected from various agricultural regions of Morocco, covering all three quality categories (extra virgin, virgin, and ordinary virgin). The findings of this study have implications for reducing analysis time and costs associated with olive oil quality assessment. To predict olive oil quality parameters, chemical analysis was conducted in accordance with international standards, while the spectra were obtained using a portable NIR spectrometer. Partial least squares regression (PLSR) was employed along with various variable selection algorithms to establish the relationship between wavelengths and chemical data in order to accurately predict the quality parameters. Through this approach, the study aimed to enhance the efficiency and accuracy of olive oil quality assessment. The obtained results show that NIRS combined with machine learning accurately predicted the acidity using iPLS methods for variable selection, it generates a PLSR with coefficients of determination R = 0.94, root mean square error RMSE = 0.32 and ratios of standard error of performance to standard deviation RPD = 4.2 for the validation set. Also, the use of variable selection methods improves the quality of the prediction. For K232 and K270 the NIRS shows moderate prediction performance, it gave an R between 0.60 and 0.75. Generally, the results showed that it was possible to predict acidity K232, and K270 parameters with excellent to moderate accuracy for the two last parameters. Moreover, it was also possible to distinguish between different quality groups of olive oil using the principal component analysis PCA, and the use of variable selection helps to use the useful wavelength for the prediction olive oil using a portable NIR spectrometer.

摘要

橄榄油是地中海饮食的重要组成部分,富含抗氧化剂和有益的单不饱和脂肪酸。因此,高品质的橄榄油需求量很大,其价格取决于质量。传统的化学测试方法评估橄榄油质量既昂贵又耗时。为了解决这些限制,本研究探讨了近红外光谱(NIRS)在预测橄榄油关键质量参数方面的应用,包括酸度、K232 和 K270。为此,从摩洛哥的不同农业地区收集了一组 200 个橄榄油样本,涵盖了所有三个质量等级(特级初榨、初榨和普通初榨)。本研究的结果有望减少与橄榄油质量评估相关的分析时间和成本。为了预测橄榄油质量参数,按照国际标准进行了化学分析,同时使用便携式 NIR 光谱仪获得了光谱。采用偏最小二乘回归(PLSR)和各种变量选择算法,建立了波长与化学数据之间的关系,以准确预测质量参数。通过这种方法,旨在提高橄榄油质量评估的效率和准确性。研究结果表明,NIRS 结合机器学习,使用 iPLS 变量选择方法准确预测了酸度,为验证集生成的 PLSR 系数决定系数 R=0.94、均方根误差 RMSE=0.32 和性能标准差比 RPD=4.2。此外,变量选择方法的使用提高了预测质量。对于 K232 和 K270,NIRS 显示出中等的预测性能,其 R 值在 0.60 到 0.75 之间。总的来说,结果表明可以用极好到中等的准确度预测酸度、K232 和 K270 参数,对于后两个参数。此外,还可以使用主成分分析 PCA 区分不同质量等级的橄榄油,并且使用变量选择有助于使用便携式 NIR 光谱仪预测橄榄油的有用波长。

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