A Fast Raman Spectroscopy Classification Method for Fuels Combining the Fluorescence Background Correction Based on GCB Preprocess and Modified Hierarchical Clustering
YU Xing-chen1, 2, GUAN Liang1*, LI Zi-cun1, GONG Ying-zhong1, MA Jun1, XU Xian3
1. Oil Department, Army Logistical University of PLA, Chongqing 401311, China
2. 76174 Army, Guilin Logistical Support Center, Guilin 512200, China
3. Military Energy and Supply Technical Service Center, Logistics Support Department of PLA, Beijing 100036, China
Abstract:In this article, a Raman spectroscopy classification method combining the fluorescence background rejection based on graphitized carbon black (GCB) preprocessing and modified hierarchical clustering analysis (HCA) has been put forward, by which 39 fuel samples have been classified correctly and automatically into six types of 0# automobile diesel fuel, 0# general diesel fuel, 97# gasoline, 93# gasoline and 3# jet fuel. GCB preprocessing, during which 50mg GCB is used to filter 0.75 mL fuel sample once, has no influence on those samples which have no fluorescence background such as 3# jet fuels and gasolines and can reject effectively the weak fluorescence background of gasoline and automobile diesel fuel samples and strong fluorescence background of gasoline and general diesel fuel samples. Firstly, the Procrustes distance in the Procrustes analysis (PA) was adopted to measure the similarity between the samples for the classical HCA which was regarded as the modeling stage in the modified HCA algorithm. And the centroid vectors belonging to the different clusters were calculated according to the results of the HCA. Secondly, the types of the unknown test samples could be determined by calculating and comparing the Procrustes distances between the test samples and the centroid vectors of the clusters. The “leave-one-out” cross validation results based on the 39 samples belonging to 6 classes have shown that the GCB preprocessing is an effective fluorescence rejection method for Raman spectra of light fuels which can be applied to qualitative and quantitative analysis.
喻星辰,管 亮,李子存,龚应忠,马 骏,许 贤. 一种基于石墨化炭黑过滤吸附处理荧光抑制和改进系统聚类分析的轻质燃油种类拉曼光谱快速识别方法[J]. 光谱学与光谱分析, 2019, 39(03): 807-812.
YU Xing-chen, GUAN Liang, LI Zi-cun, GONG Ying-zhong, MA Jun, XU Xian. A Fast Raman Spectroscopy Classification Method for Fuels Combining the Fluorescence Background Correction Based on GCB Preprocess and Modified Hierarchical Clustering. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2019, 39(03): 807-812.