Guo Jun-Xian, Rao Xiu-Qin, Cheng Fang, Ying Yi-Bin, Kang Yu-Guo, Li Fu-Tang
College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310029, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2010 Mar;30(3):649-53.
Near infrared (NIR) spectroscopy was investigated to predict trash content and classify types of ginned cotton by using a fiberoptic in diffuse reflectance mode. Different spectra preprocessing methods were compared, and partial least-squares (PLS) regression was established to predict the trash content of ginned cotton. Discriminant analysis (DA) was used to classify various types of lint and content level of trash. The correlation coefficient r was 0.906 for optimal PLS model using three factors based on first-order derivative spectra, and RMSEC and RMSEP was 0.440 and 0.823 respectively. To classify ginned cotton with and without plant trash, the accuracy rate reached 95.4% using 15 principal components (PCs) via DA, whereas the prediction accuracy rate was only 80.9% for the classification of sample types due to containing foreign fiber, and the classification result for the content level of trash in lint was not good for the samples without any preprocessing. The result indicated that the NIR spectra of sample can be used to predict trash content in ginned cotton, which is often disturbed by type, content and distribution of foreign matters, and the accuracy of some prediction model is unsatisfactory. In order to improve the prediction accuracy, some methods would be applied in future research, such as pretreatment according to acquisition request of solid sample, or using transmission mode.
研究了近红外(NIR)光谱法,以使用漫反射模式下的光纤来预测皮棉的杂质含量并对其类型进行分类。比较了不同的光谱预处理方法,并建立了偏最小二乘(PLS)回归模型来预测皮棉的杂质含量。采用判别分析(DA)对各种皮棉类型和杂质含量水平进行分类。基于一阶导数光谱的三因子最优PLS模型的相关系数r为0.906,RMSEC和RMSEP分别为0.440和0.823。对于有植物杂质和无植物杂质的皮棉进行分类时,通过DA使用15个主成分(PC)的准确率达到95.4%,而对于因含有外来纤维的样品类型分类,预测准确率仅为80.9%,且对于未经过任何预处理的样品,皮棉中杂质含量水平的分类结果不佳。结果表明,样品的近红外光谱可用于预测皮棉中的杂质含量,杂质含量常受杂质类型、含量和分布的干扰,且一些预测模型的准确性不尽人意。为提高预测准确性,未来研究中将应用一些方法,如根据固体样品采集要求进行预处理,或采用透射模式。