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Qualitative discrimination of Chinese dianhong black tea grades based on a handheld spectroscopy system coupled with chemometrics

机译:基于手持式光谱系统与化学计量学的手持光谱系统进行定性辨别

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The evaluation of Chinese dianhong black tea (CDBT) grades was an important indicator to ensure its quality. A handheld spectroscopy system combined with chemometrics was utilized to assess CDBT from eight grades. Both variables selection methods, namely genetic algorithm (GA) and successive projections algorithm (SPA), were employed to acquire the feature variables of each sample spectrum. A partial least‐squares discriminant analysis (PLS‐DA) and support vector machine (SVM) algorithms were applied for the establishment of the grading discrimination models based on near‐infrared spectroscopy (NIRS). Comparisons of the portable and benchtop NIRS systems were implemented to obtain the optimal discriminant models. Experimental results showed that GA‐SVM models by the handheld sensors yielded the best predictive performance with the correct discriminant rate (CDR) of 98.75% and 100% in the training set and prediction set, respectively. This study demonstrated that the handheld system combined with a suitable chemometric and feature information selection method could successfully be used for the rapid and efficient discrimination of CDBT rankings. It was promising to establish a specific economical portable NIRS sensor for in situ quality assurance of CDBT grades.
机译:中国滇红茶(CDBT)等级的评价是确保其质量的重要指标。使用与化学计量学相结合的手持光谱系统来评估八个等级的CDBT。可以采用变量选择方法,即遗传算法(GA)和连续投影算法(SPA)来获取每个样本谱的特征变量。应用部分最小二乘判别分析(PLS-DA)和支持向量机(SVM)算法用于建立基于近红外光谱(NIRS)的分级鉴别模型。实施了便携式和卧本内NIRS系统的比较以获得最佳判别模型。实验结果表明,手持式传感器的GA-SVM模型在训练集和预测集中分别产生了98.75%和100%的正确判别率(CDR)的最佳预测性能。本研究表明,手持系统与合适的化学计量统计学和特征信息选择方法结合使用,可以成功地用于CDBT排名的快速有效地辨别。它很有希望建立一个特定的经济便携式NIRS传感器,以便于CDBT等级的原位质量保证。

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