Integration of near-infrared spectroscopy and comparative principal component analysis for flour adulteration identification

Jinchao Qu , Chu Zhang , Shichen Gao , Hongwu Tian , Daming Dong
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Abstract

Flour, as a critical component of the dietary structure, its quality and safety assurance is of great significance. The combination of near-infrared (NIR) spectroscopy and chemometrics was proposed to identify the adulterated flour in three different brands. This study obtained the adulterated samples with different concentrations of talcum powder, and measured 20 spectral data corresponding to each concentration. Comparative Principal Component Analysis (cPCA) has a constraint effect on the background dataset and can reduce the interference of background factors. The results showed that the cPCA algorithm successfully eliminated brand-related factors when identifying adulterated flour, and achieved adulterated discrimination with a concentration as low as 0.3%. This study presents a practical approach for identifying flour adulteration, effectively tackling the challenge of background factors on feature extraction in data dimensionality reduction models. By addressing this issue, it paves the way for developing more accurate and reliable adulteration detection models.
近红外光谱与比较主成分分析相结合用于面粉掺假鉴定
面粉作为膳食结构的重要组成部分,其质量安全保障具有重要意义。采用近红外光谱法和化学计量学相结合的方法对三种不同品牌的掺假面粉进行了鉴别。本研究获得了不同浓度滑石粉的掺假样品,并测量了每种浓度对应的20个光谱数据。比较主成分分析(cPCA)对背景数据集具有约束作用,可以减少背景因素的干扰。结果表明,cPCA算法在识别掺假面粉时成功地消除了品牌相关因素,并实现了浓度低至0.3%的掺假鉴别。本研究提出了一种实用的面粉掺假识别方法,有效解决了数据降维模型中背景因素对特征提取的挑战。通过解决这个问题,它为开发更准确和可靠的掺假检测模型铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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