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首页> 外文期刊>Analytical Letters >Classification of Chinese Herbal Medicine by Laser-Induced Breakdown Spectroscopy with Principal Component Analysis and Artificial Neural Network
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Classification of Chinese Herbal Medicine by Laser-Induced Breakdown Spectroscopy with Principal Component Analysis and Artificial Neural Network

机译:具有激光诱导的击穿光谱与主成分分析和人工神经网络的分类中草药分类

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摘要

Chinese herbal medicine has attracted increasing attention because of the unique and significant efficacy in various diseases. In this paper, three types of Chinese herbal medicine, the roots of Angelica pubescens, Codonopsis pilosula, and Ligusticum wallichii with different places of origin or parts, are analyzed and identified using laser-induced breakdown spectroscopy (LIBS) combined with principal component analysis (PCA) and artificial neural network (ANN). The study of the roots of A. pubescens was performed. The score matrix is obtained by principal component analysis, and the backpropagation artificial neural network (BP-ANN) model is established to identify the origin of the medicine based on LIBS spectroscopy of the roots of A. pubescens with three places of origin. The results show that the average classification accuracy is 99.89%, which exhibits better prediction of classification than linear discriminant analysis or support vector machine learning methods. To verify the effectiveness of PCA combined with the BP-ANN model, this method is used to identify the origin of C. pilosula. Meanwhile, the root and stem of L. wallichii are analyzed by the same method to distinguish the medicinal materials accurately. The recognition rate of C. pilosula is 95.83%, and that of L. wallichii is 99.85%. The results present that LIBS combined with PCA and BP-ANN is a useful tool for identification of Chinese herbal medicine and is expected to achieve automatic real-time, fast, and powerful measurements.
机译:由于各种疾病的独特和显着的疗效,中草药引起了越来越大的关注。本文采用激光诱导的击穿光谱(Libs)分析并鉴定了三种中草药,Angelica Pubescens,Codonopsis pilosula和Ligusticum Wallichii的三种类型的中草药,Codonopsis pilosula和Ligusticum Wallichii,与主要成分分析相结合( PCA)和人工神经网络(ANN)。进行了对蚜毒素的研究。评分矩阵是通过主成分分析获得的,建立了反向化人工神经网络(BP-ANN)模型以基于具有三个原产地的戒指的Libs光谱来识别药物的起源。结果表明,平均分类精度为99.89%,其表现出比线性判别分析或支持向量机学习方法更好地预测分类。为了验证PCA与BP-Ann模型的有效性,该方法用于识别C. pilosula的起源。同时,通过相同的方法分析L. Wallichii的根和茎,以准确地区分药物。 C. pilosula的识别率为95.83%,L. wallichii的识别率为99.85%。结果表明,LIB与PCA和BP-ANN结合的是一种有用的工具,用于鉴定中草药,预计将实现自动实时,快速和强大的测量。

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