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Predicting the Age and Type of Tuocha Tea by Fourier Transform Infrared Spectroscopy and Chemometric Data Analysis

机译:傅里叶变换红外光谱法和化学计量学数据预测Tu茶的年龄和类型

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Fourier transform infrared (FTIR) spectroscopy combined with chemometric multivariate methods was proposed to discriminate the type (unfermented and fermented) and predict the age of tuocha tea. Transmittance FTIR spectra ranging from 400 to 4000 cm~ of 80 fermented and 98 unfermented tea samples from Yunnan province of China were measured. Sample preparation involved finely grinding tea samples and formation of thin KBr disks (under 120 kg/cm~2 for 5 min). For data analysis, partial least-squares (PLS) discriminant analysis (PLSDA) was applied to discriminate unfermented and fermented teas. The sensitivity and specificity of PLSDA with first-derivative spectra were 93 and 96%, respectively. Multivariate calibration models were developed to predict the age of fermented and unfermented teas. Different options of data preprocessing and calibration, models were investigated. Whereas linear PLS based on standard normal variate (SNV) spectra was adequate for modeling the age of unfermented tea samples (RMSEP = 1.47 months), a nonlinear back-propagation-artificial neutral network was required for calibrating the age of fermented tea (RMSEP = 1.67 months with second-derivative spectra). For type discrirhination and calibration of tea age, SNV and derivative preprocessing played an important role in reducing the spectral variations caused by scattering effects and baseline shifts.
机译:提出了傅里叶变换红外光谱(FTIR)结合化学计量学多元方法来区分类型(未发酵和发酵)并预测tu茶的年龄的方法。测量了来自中国云南省的80份发酵和98份未发酵茶样品的透射FTIR光谱,范围为400至4000 cm〜。样品制备涉及对茶叶样品进行精细研磨并形成薄的KBr圆盘(在120 kg / cm〜2下5分钟)。对于数据分析,应用偏最小二乘(PLS)判别分析(PLSDA)来辨别未发酵和发酵茶。一阶导数光谱对PLSDA的敏感性和特异性分别为93%和96%。开发了多变量校准模型来预测发酵和未发酵茶的年龄。研究了数据预处理和校准,模型的不同选项。尽管基于标准正态变量(SNV)光谱的线性PLS足以模拟未发酵茶样品的年龄(RMSEP = 1.47个月),但需要使用非线性反向传播人工中性网络来校准发酵茶的年龄(RMSEP =二阶导数光谱图为1.67个月)。对于茶龄的类型脱除和校准,SNV和衍生物预处理在减少由散射效应和基线偏移引起的光谱变化中起着重要作用。

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