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The classification of tea according to region of origin using pattern recognition techniques and trace metal data

机译:使用模式识别技术和痕量金属数据按产地对茶进行分类

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Trace metals in tea originating from various Asian and African countries were determined by using inductively coupled plasma-atomic emission spectrometry and inductively coupled plasma-mass spectrometry. Pattern recognition techniques were then used to classify the tea according to its geographical origin. Principal component analysis (PCA) and cluster analysis (CA), as exploratory techniques, and linear discriminant analysis (LDA) and soft independent modelling of class analogy (SIMCA), were used as classification procedures. In total, 17 elements (Al, Ba, Ca, Cd, Co, Cr, Cu, Cs, Mg, Mn, Ni, Pb, Rb, Sr, Ti, V, Zn) were determined in a range of 85 tea samples (36 samples from Asian countries, 18 samples from African countries, 24 commercial blends and seven samples of unknown origin). Natural groupings of the samples (Asian and African teas) were observed using PCA and CA (squared Euclidean distance between objects and Ward's method as clustering procedure). The application of LDA gave correct assignation percentages of 100.0% and 94.4% for the African and Asian teas, respectively, at a significance level of 5%. SIMCA offered percentages of 100.0% and 91.7% for African and Asian groups, respectively, at the same significance level. LDA, also at a significance level of 5%, allowed a 100% of correct case identification for the three classes China, India and Sri Lanka. However, a satisfactory classification using SIMCA was only obtained for the Chinese teas (100% of cases correctly classified), while teas from India and Sri Lanka appear to form the same class.
机译:通过使用电感耦合等离子体原子发射光谱法和电感耦合等离子体质谱法测定源自亚洲和非洲国家的茶叶中的痕量金属。然后使用模式识别技术根据茶的地理来源对茶进行分类。作为探索性技术,使用主成分分析(PCA)和聚类分析(CA)以及线性判别分析(LDA)和类别模拟的软独立建模(SIMCA)作为分类程序。在85个茶样品中,总共测定了17种元素(Al,Ba,Ca,Cd,Co,Cr,Cu,Cs,Mg,Mn,Ni,Pb,Rb,Sr,Ti,V,Zn)(来自亚洲国家的36个样本,来自非洲国家的18个样本,24个商业混合物和七个来源不明的样本)。使用PCA和CA(对象之间的平方欧氏距离和Ward方法作为聚类程序)观察到样品的自然分组(亚洲和非洲茶)。 LDA的应用对非洲和亚洲茶的正确分配百分比分别为100.0%和94.4%,显着水平为5%。 SIMCA为非洲和亚洲群体分别提供了100.0%和91.7%的百分比,并且具有相同的显着性水平。 LDA的显着性水平也为5%,可以对中国,印度和斯里兰卡这三个类别的病例进行100%的正确识别。但是,仅对中国茶(使用100%正确分类的案例)获得了使用SIMCA的令人满意的分类,而印度和斯里兰卡的茶似乎形成了同一分类。

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