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Application of Least-Square Support Vector Machines in Qualitative Analysis of Visible and Near Infrared Spectra: Determination of Species and Producing Area of Panax

机译:最小二乘支持向量机在可见和近红外光谱定性分析中的应用:Panax的种类和生产区域的测定

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Visible and near infrared (Vis&NIR) spectra of a sample can be treated as a signature, allowing samples to be grouped on basis of their spectral similarities. Vis&NIR spectra combined with LS-SVM have been used to discriminate species and producing area of panax. American Panax quinquefoliumI, Chinese Panax quinquefolium and Panax ginseng were analyzed in this study. Principal component analysis (PCA) was applied before LS-SVM modeling and the results indicated that the mass points of the spectral data (376-1025 nm) can be effectively reduced. For each model, half samples were used for calibration and the remaining half were used for prediction. The results of the PCA-LS-SVM models for discriminating the both species and producing area of panax samples can reach 100% correct answer rate. The results of this study show that Vis-NIR spectroscopy technique combined with PCA-LS-SVM is a feasible way for qualitative analysis of discriminating herb producing areas and species.
机译:样品的可见和近红外(VIR和NIR)光谱可以被视为签名,允许基于它们的光谱相似性进行分组。与LS-SVM相结合的VIAR和NIR光谱已被用于区分Panax的物种和产生区域。在这项研究中分析了美国Panax Quinquefolumi,ChinesePanax Quinquefolium和Panax人参。在LS-SVM建模之前施加主成分分析(PCA),结果表明,可以有效地减少光谱数据(376-1025nm)的质量点。对于每个模型,使用半个样本用于校准,并且其余的一半用于预测。用于区分Panax样本的PCA-LS-SVM模型的PCA-LS-SVM模型可以达到100%正确的答案率。该研究的结果表明,与PCA-LS-SVM相结合的Vis-Nir光谱技术是一种可行的方式,用于定性分析鉴别草本植物产生区域和物种。

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