多元统计
近红外光谱
数学
提取器
人工智能
掺假者
模式识别(心理学)
计算机科学
统计
色谱法
化学
工程类
物理
量子力学
工艺工程
作者
Mingxuan Li,Ya-Bo Shi,Jiu-ba Zhang,Xin Wan,Jun Fang,Yi Wu,Rao Fu,Haijun Yu,Lin Li,Lianlin Su,De Ji,Tulin Lu,Zhenhua Bian
标识
DOI:10.1016/j.fochx.2023.101022
摘要
Ziziphi Spinosae Semen (ZSS) is a valued seed renowned for its sedative and sleep-enhancing properties. However, the price increase has been accompanied by adulteration. In this study, chromaticity analysis and Fourier transform near-infrared (FT-NIR) combined with multivariate algorithms were employed to identify the adulteration and quantitatively predict the adulteration ratio. The findings suggested that the utilization of chromaticity extractor was insufficient for identification of adulteration ratio. The raw spectrum of ZMS and HAS adulterants extracted by FT-NIR was processed by SNV + CARS and 1d + SG + ICO respectively, the average accuracy of machine learning classification model was improved from 77.06 % to 97.58 %. Furthermore, the R2 values of the calibration and prediction set of the two quantitative prediction regression models of adulteration ratio are greater than 0.99, demonstrating excellent linearity and predictive accuracy. Overall, this study demonstrated that FT-NIR combined with multivariate algorithms provided a significant approach to addressing the growing issue of ZSS adulteration.
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