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Determination of Catechin Monomers in Tea Polyphenols Powder Using NIR and ANN

机译:近红外和人工神经网络测定茶多酚粉中儿茶素单体

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Near infrared diffuse reflectance spectra of 52 tea polyphenol powder samples were collected with FT-NIR spectrometer. The calibration models of total catechins(TC) were established with back-propagation artificial neuron network(BP-ANN) and radical based function artificial neuron network (RBF-ANN) and optimized with prediction sample set. The result showed that the RBF-ANN model is better than the BP-ANN model. Calibration models of total ester catechins(TEC), total simple catechins(TSC), catechin monomers (EGCG, GCG, ECG, D,L-C, EC and EGC) were established with RBF-ANN. The models of TC, TEC, TSC, EGCG, ECG were robust with prediction correlation coefficient(R) above 0.9 and prediction relative standard error (RSE) less than 0.10%. The models of GCG, D,L-C, EC, EGC had much higher RSE of over 0.15%. This result suggests that it is feasible to rapidly determinate the contents of TC, TEC, TSC, EGCG, ECG in tea polyphenols powder with NIR spectroscopy combined with RBF-ANN models.
机译:用FT-NIR光谱仪收集了52种茶多酚粉样品的近红外漫反射光谱。利用反向传播人工神经元网络(BP-ANN)和基于自由基的功能人工神经元网络(RBF-ANN)建立总儿茶素(TC)的校准模型,并用预测样本集对其进行优化。结果表明,RBF-ANN模型优于BP-ANN模型。利用RBF-ANN建立了总酯儿茶素(TEC),总简单儿茶素(TSC),儿茶素单体(EGCG,GCG,ECG,D,L-C,EC和EGC)的校准模型。 TC,TEC,TSC,EGCG,ECG模型具有较强的鲁棒性,预测相关系数(R)大于0.9,预测相对标准误差(RSE)小于0.10%。 GCG,D,L-C,EC,EGC的模型具有更高的RSE,超过0.15%。该结果表明,采用近红外光谱结合RBF-ANN模型快速测定茶叶多酚粉中TC,TEC,TSC,EGCG,ECG的含量是可行的。

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