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Support vector machine regression on selected wavelength regions for quantitative analysis of caffeine in tea leaves by near infrared spectroscopy

机译:近红外光谱法通过近红外光谱分析茶叶中咖啡因定量分析的选定波长区的向量机回归

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摘要

Caffeine is an important component that determines the quality of tea, and its rapid estimation is very much needed for the industry. In this pursuit, a near-infrared (NIR) spectroscopy-based technique for the estimation of caffeine is developed and presented in this paper. On the basis of responses of the different bonds present in caffeine, four specific wavelength windows-(a) 1075 to 1239.5 nm (C?H stretch second overtone); (b) 1339.25 to 1440.75 nm (C?H stretch and C?H deformation); (c) 1640.25 to 1700 nm (C?H stretch first overtone, CH & amp; ?CH3 asymmetric); and (d) 900 to 1700 nm (whole range of the spectrometer)-were analyzed in details for model development and to obtain the effective wavelength (EW). Five different preprocessing techniques followed by two regression techniques-(a) the partial least-squares (PLS) and (b) the support vector regression (SVR) were implemented on raw data for analysis. Comparing all the models, the wavelength band of 1075 to 1239.5 nm and 1339.25 to 1440.75 nm were found to produce satisfactory results. The best discrimination result was obtained using the combination of standard normal variate (SNV) preprocessing with SVR at the 1075 to 1239.5 nm wavelength region. The SVR regression with 105 samples in the training set and 15 samples in the testing set resulted in the performance parameters as RMSECV = 0.134, RMSEP = 0.069, r(cv)(2) = 0.869, r(p)(2) = 0.65, and RPD = 5.626 at 1075 to 1239.5 nm, whereas the PLS model produced the best RMSECV = 0.287, RMSEP = 0.077, r(cv)(2) = 0.637, r(p)(2) = 0.675, and RPD = 5.218 at 1339.25 to 1440.75-nm wavelength band.
机译:咖啡因是决定茶度质量的重要组成部分,其快速估计是该行业的需求。在这种追求中,在本文中开发并介绍了一种近红外(NIR)基于咖啡因的基于咖啡因的技术。基于咖啡因中存在的不同键的反应,四个特定波长窗-(a)1075至1239.5nm(c?h伸展秒锯齿); (b)1339.25至1440.75 nm(c?h stresst和c?h变形); (c)1640.25至1700nm(c?h伸展首先泛孔,Ch&Δch3不对称); (d)900至1700nm(光谱仪的整个范围) - 详细分析了模型开发和获得有效波长(EW)。五种不同的预处理技术,然后是两个回归技术 - (a)部分最小二乘(PLS)和(B)在用于分析的原始数据上实现了支持向量回归(SVR)。比较所有模型,发现1075至1239.5nm和1339.25至1440.75nm的波长带产生令人满意的结果。使用在1075至1239.5nm波长区域的标准正常变化(SNV)预处理的标准正常变化(SNV)的组合获得了最佳辨别结果。在训练集105个样本中的SVR回归和测试集中的15个样本导致性能参数为RMSECV = 0.134,RMSEP = 0.069,R(CV)(2)= 0.869,R(P)(2)= 0.65 ,RPD = 5.626在1075至1239.5nm,而PLS模型生产的最佳RMSECV = 0.287,RMSEP = 0.077,R(CV)(2)= 0.637,R(P)(2)= 0.675,以及RPD = 5.218在1339.25至1440.75nm波长带。

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