Centre for Molecular and Biophysics Research, Department of Physics, Mar Ivanios College, Thiruvananthapuram 695 015, Kerala, India.
Spectrochim Acta A Mol Biomol Spectrosc. 2013 Nov;115:568-73. doi: 10.1016/j.saa.2013.06.076. Epub 2013 Jul 1.
Determination of the authenticity of essential oils has become more significant, in recent years, following some illegal adulteration and contamination scandals. The present investigative study focuses on the application of near infrared spectroscopy to detect sample authenticity and quantify economic adulteration of sandalwood oils. Several data pre-treatments are investigated for calibration and prediction using partial least square regression (PLSR). The quantitative data analysis is done using a new spectral approach - full spectrum or sequential spectrum. The optimum number of PLS components is obtained according to the lowest root mean square error of calibration (RMSEC=0.00009% v/v). The lowest root mean square error of prediction (RMSEP=0.00016% v/v) in the test set and the highest coefficient of determination (R(2)=0.99989) are used as the evaluation tools for the best model. A nonlinear method, locally weighted regression (LWR), is added to extract nonlinear information and to compare with the linear PLSR model.
近年来,由于一些非法掺假和污染丑闻,对精油真实性的鉴定变得更加重要。本研究旨在应用近红外光谱法检测样本真实性并量化檀香油的经济掺假情况。使用偏最小二乘回归(PLSR)对几种数据预处理方法进行了校准和预测研究。通过全新的光谱方法——全谱或顺序谱进行定量数据分析。根据最低校准均方根误差(RMSEC=0.00009% v/v)确定最佳 PLS 成分数。测试集的最低预测均方根误差(RMSEP=0.00016% v/v)和最高决定系数(R(2)=0.99989)被用作最佳模型的评估工具。局部加权回归(LWR)作为一种非线性方法被添加到模型中以提取非线性信息并与线性 PLSR 模型进行比较。