E-nose and colorimetric sensor array combining homologous data fusion strategy discriminating the roasting degree of large-leaf yellow tea

Luqing Li,Shuai Dong,Shuci Cao, Yurong Chen, Jingfei Shen,Menghui Li,Qingqing Cui, Ying Zhang, Chuxuan Huang,Qianying Dai,Jingming Ning

FOOD CHEMISTRY-X(2024)

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Abstract
Different degrees of roasting result in differences in the quality and flavor of large-leaf yellow tea. The current sensory evaluation and chemical detection methods cannot meet the requirement of online differentiation of LYT roasting degree, so an accurate and comprehensive assessment method needs to be developed urgently. First, the two aroma sensing technologies were compared. Two variable screening methods and three recognition algorithms were employed to build discriminant models. The results showed that the discrimination rate of the colorimetric sensor array (CSA) in the prediction set reached 91.89 %, outperforming that of the E-nose. Subsequently, three fusion strategies were applied to improve the discrimination accuracy. The discrimination rate of the middle fusion strategy resulted in an optimal resolution of 94.59 %. The results obtained from the homologous fusion were able to evaluate the roasting degree comprehensively and accurately, which provides a new method and idea for tea aroma quality.
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Key words
Large -leaf yellow tea,Roasting degree,Colorimetric sensor array,Electronic nose,Homologous data fusion
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