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热红外光谱的石榴子石亚类识别方法
引用本文:刘婷玥,代晶晶,田淑芳. 热红外光谱的石榴子石亚类识别方法[J]. 光谱学与光谱分析, 2021, 41(6): 1758-1763. DOI: 10.3964/j.issn.1000-0593(2021)06-1758-06
作者姓名:刘婷玥  代晶晶  田淑芳
作者单位:中国地质大学(北京) ,北京 100083;自然资源部成矿作用与资源评价重点实验室,中国地质科学院矿产资源研究所,北京 100037
基金项目:国家重点研发计划深地资源勘探开采课题(2018YFC0604101)及中央级公益性科研院所基本科研业务费专项资金项目(KK1919, KK2017, KK2102)资助
摘    要:高光谱技术快速、无损、精确探测矿物,能够清楚的反映矿物化学成分的改变.石榴子石在热红外波段具有诊断性的三峰式特征.反射峰波长与化学成分关系密切,所以可以依据石榴子石在热红外波段的光谱特征开展其亚类分类研究.钙铬榴石和锰铝榴石反射峰位置易于与其他亚类区分,而铁铝榴石和镁铝榴石、钙铁榴石和钙铝榴石的反射峰位置有较大重叠区域...

关 键 词:石榴子石  矿物识别  热红外光谱  聚类分析  多元线性判别  BP神经网络
收稿时间:2020-06-09

A Neural Network Recognition Method for Garnets Subclass Based on Hyper Spectroscopy
LIU Ting-yue,DAI Jing-jing,TIAN Shu-fang. A Neural Network Recognition Method for Garnets Subclass Based on Hyper Spectroscopy[J]. Spectroscopy and Spectral Analysis, 2021, 41(6): 1758-1763. DOI: 10.3964/j.issn.1000-0593(2021)06-1758-06
Authors:LIU Ting-yue  DAI Jing-jing  TIAN Shu-fang
Affiliation:1. China University of Geosciences (Beijing), Beijing 100083, China2. MLR Key Laboratory of Metallogeny and Mineral Assessment, Institute of Mineral Resources, Chinese Academy of Geological Sciences, Beijing 100037, China
Abstract:Hyperspectral technology is a rapid, nondestructive and accurate means of mineral detection, which can clearly reflect mineral chemical composition change. Garnets have the characteristic of three diagnostic peaks in the thermal infrared wavebands, and the wavelength positions of the reflection peaks are closely related to the chemical composition, so the subclass classification of garnets can be studied according to the thermal infrared wave spectrum characteristics. Reflection peak wavelength positions of uvarovite and spessartine are easy to distinguish with other types. However, that of almandine and pyrope, andradite and grossular have a large overlap and are difficult to distinguish with each other. Therefore, a fast and accurate classification method based on the thermal infrared spectrum is urgently needed. In this paper, the information about wavelength position and difference between wavelengths of the three reflection peaks of 85 different types of garnet samples were obtained from the thermal infrared spectroscopy library. Three nonlinear BP neural network methods, cluster analysis and multiple linear discrimination analysis were used to carry out garnet subclass recognition experiments, and the accuracy rate, recall rate and F1 value were used to evaluate the classification accuracy. The experimental results showed that the accuracy rate, recall rate and F1 value of BP neural network algorithm after classification could all reach 100%, and all types of garnets got a good distinction; the accuracy rate, recall rate and F1 value of clustering analysis and multivariate linear discriminant analysis were 86.1%, 80%, 79.2% and 84.2%, 80%, 79.5% separately, the four types of garnets with overlapping reflection peaks could not be well differentiated. According to the results, the nonlinear BP neural network is more suitable for the subclassification of garnets. Our study used powerful automatic nonlinear mapping ability of the BP neural network, has found the complex mapping relationship between the wavelength positions of the reflection peak in the thermal infrared spectrum of the garnets and the subclass types, and proved the feasibility and superiority of BP neural network method combined with thermal infrared spectrum characteristics. The identification of garnet subclass provided is fast and effective, and it can give good technical enlightenment for the rapid and effective identification of other minerals.
Keywords:Garnets  Mineral recognition  Thermal infrared spectrum  Cluster analysis  Multiple linear discrimination  BP neural network  
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