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Rapid determination of Panax notoginseng origin by terahertz spectroscopy combined with the machine learning method.

Authors :
Zhang, Huo
Huang, Lanjuan
Xu, Chuanpei
Li, Zhi
Yin, Xianhua
Chen, Tao
Wang, Yuee
Source :
Spectroscopy Letters. 2022, Vol. 55 Issue 9, p566-578. 13p.
Publication Year :
2022

Abstract

Panax notoginseng is a valuable herb with geographical indication, and the quality and price of P. notoginseng from different origins are very different. Therefore, this paper proposes a rapid and accurate method for identifying the origins of P. notoginseng by collecting the roots of P. notoginseng. This paper improves the whale optimization algorithm in terms of global convergence and convergence speed, introduces the Levy flight strategy and reconstructed whale synergy factor A, and applies it to the parameter optimization of support vector machines, to obtain a high-performance classification model. The improved whale optimization algorithm model identifies the origin of P. notoginseng by discriminating their terahertz spectra. Compared with the commonly used genetic algorithm and the original whale optimization algorithm, improvement in the whale optimization algorithm was able to avoid falling into local optimum solutions more effectively while having a high convergence rate. Accordingly, the improved whale optimization algorithm optimized support vector machine model obtained an overall accuracy of 98.44%, which was significantly higher than the 95.31% overall accuracy of the genetic algorithm optimized support vector machine model and the 96.88% overall accuracy of the whale optimization algorithm optimized support vector machine model. It was concluded that terahertz spectroscopy together with machine learning would be a promising technique for identifying the origins of P. notoginseng. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00387010
Volume :
55
Issue :
9
Database :
Academic Search Index
Journal :
Spectroscopy Letters
Publication Type :
Academic Journal
Accession number :
160050248
Full Text :
https://doi.org/10.1080/00387010.2022.2125017