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FT-NIR combined with machine learning was used to rapidly detect the adulteration of pericarpium citri reticulatae (chenpi) and predict the adulteration concentration

Chen Ying, Si Li, Jia Jia, Chuanduo Sun, Enzhong Cui, Yun‐Yan Xu, Fangchao Shi, Anfu Tang

2024Food Chemistry X18 citationsDOIOpen Access PDF

Abstract

Pericarpium citri reticulatae (PCR) has been used as a food and spice for many years and is known for its rich nutritional content and unique aroma. However, price increases are often accompanied by adulteration. In this study, two kinds of adulterants (Orange peel-OP and Mandarin Rind-MR) were identified by chromaticity analysis, FT-NIR and machine learning algorithm, and the doping concentration was predicted quantitatively. The results show that colorimetric analysis cannot completely differentiate between PCR and adulterants. Using spectral preprocessing combined with machine learning algorithms, PCR and two adulterants were successfully distinguished, with classification accuracy reaching 99.30 % and 98.64 % respectively. After selecting characteristic wavelengths, the R2P of the adulterated quantitative model is greater than 0.99. Generally, this study proposes to use FT-NIR to study the adulteration of PCR for the first time, which fills the technical gap in the adulteration research of PCR, and provides an important method to solve the increasingly serious adulteration problem of PCR.

Topics & Concepts

AromaArtificial intelligencePattern recognition (psychology)MathematicsChemistryOrange (colour)Food scienceChromatographyComputer scienceSpectroscopy and Chemometric AnalysesPhytochemicals and Antioxidant ActivitiesAdvanced Chemical Sensor Technologies
FT-NIR combined with machine learning was used to rapidly detect the adulteration of pericarpium citri reticulatae (chenpi) and predict the adulteration concentration | Litcius