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Discrimination of the Production Season of Chinese Green Tea by Chemical Analysis in Combination with Supervised Pattern Recognition

机译:化学分析与模式识别相结合判别中国绿茶的生产季节

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摘要

High-performance liquid chromatography (HPLC) has been used to quantify levels of free amino acids, catechins, and caffeine in Chinese green tea. Levels of free amino acids and catechins in green tea leaves show obvious variation from spring to summer, which is useful information to identify the production season of commercial green tea. Supervised pattern recognition methods such as the K-nearest neighbor (KNN) method and Bayesian discriminant method (a type of linear discriminant analysis (LDA)) were used to discriminate between the production seasons of Chinese green tea. The optimal accuracy of the KNN method was ≤97.6l and ≤94.80% as validated by resubstitution and cross-validation tests, respectively, and that of LDA was ≤95.22 and ≤93.54%, respectively. Compared with LDA, the KNN method did not require a Gaussian distribution and was more accurate than LDA The KNN method in combination with chemical analysis is recommended for discrimination of the production seasons of Chinese green tea.
机译:高效液相色谱(HPLC)已用于定量中国绿茶中的游离氨基酸,儿茶素和咖啡因的含量。春季至夏季,绿茶叶片中游离氨基酸和儿茶素的含量存在明显差异,这对于确定商品绿茶的生产季节非常有用。有监督的模式识别方法,例如K最近邻法(KNN)和贝叶斯判别法(一种线性判别分析(LDA)),用于区分中国绿茶的生产季节。经重新替代和交叉验证测试,KNN方法的最佳准确度分别为≤97.6l和≤94.80%,LDA的最佳准确度分别为≤95.22和≤93.54%。与LDA相比,KNN方法不需要高斯分布,并且比LDA更加准确。建议将KNN方法与化学分析相结合来区分中国绿茶的生产季节。

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