A Classification Method of Coal and Gangue Based on XGBoost and Visible-Near Infrared Spectroscopy
文献类型: 外文期刊
第一作者: Li Rui
作者: Li Rui;Li Bo;Wang Xue-wen;Liu Tao;Li Lian-jie;Li Lian-jie;Fan Shu-xiang
作者机构:
关键词: XGBoost; Visible and near-infrared; Coal and gangue separation; Black background; Nondestructive detection
期刊名称:SPECTROSCOPY AND SPECTRAL ANALYSIS ( 影响因子:0.609; 五年影响因子:0.516 )
ISSN: 1000-0593
年卷期: 2022 年 42 卷 9 期
页码:
收录情况: SCI
摘要: Intelligent recognition of coal and gangue is a new technology that needs to be developed urgently to realize the intelligentization of fully mechanized caving mining. Visible-near infrared spectroscopy technology has many advantages such as environmental friendly and real-time, which meets the requirements of intelligent separation of coal and gangue. The Extreme Gradient Boosting Tree (XGBoost) algorithm which performed well in data science competitions, was introducedto achieve the recognition of coal and gangue based on visible-near infrared spectroscopy. Firstly, a visible-near infrared spectroscopy experimental platform was built to collect the reflectance spectra of lump coal and gangue samples from Shanxi Ximing, Shaanxi Shenmu, and Inner Mongolia Balongtu coal mines in the range of 370 1 049 nm. The collected original spectra were preprocessed through black and white correction, method of removing the start and end bands, Savitzky-Golay (SG) smoothing and standard normal variable transformation (SNV) to reduce the effects of uneven illumination, noise and optical path difference. Secondly, the experimental group and test group were divided according to the difference of reflection spectrum of samples from different mines. The experimental group had a minor difference, which was used to compare the performance of different models and select the best algorithm; the difference of test groups was obvious, which was used to test the performance of the best algorithm in other coal mines and verified the applicability of the algorithm to different coal mines. In the experiment of the experimental group, the coal and gangue classification model was established based on the XGBoost algorithm, and the commonly used machine learning classification algorithms k-nearest neighbor method (KNN), random forest (RF), support vector machine (SVM), which were introduced for comparison. The results showed XGBoost performed best. The average accuracy of 10 -fold cross-validation (ACC,), classification accuracy (ACC), and AUC values respectively reached 0. 957 2, 0. 970 5, and 0. 971 6, showing strong stability and classification capabilities. Then in order to reduce the data dimension and calculations, recursive feature elimination (RFE), successive projections algorithm (SPA) and competitive adaptive reweighted sampling (CARS) were used to select the characteristic wavelength and combined with the above four classification algorithms to construct a simplified classification model, respectively. The simplified model of the combination of RFE and XGBoost (RFEXGB) performed best in the test. The ACC,, ACC, AUC was 0. 965 7, 0. 980 3, 0. 980 3, respectively, and the data dimension reduced to 9. Simplified model improved the stability and classification ability of the model while reducing the data dimension. In the experiment of the test group, the model based on XGBoost and RFE-XGB algorithms can also achieve stable and accurate recognition of coal and gangue in other coal mines, and the simplified model performed better, which was consistent with the results of the experimental group.
分类号:
- 相关文献
作者其他论文 更多>>
-
Online Detection of Soluble Solids Content in Different Parts of Watermelons Based on Full Transmission Near Infrared Spectroscopy
作者:Yan Zhong-Wei;Liu San-Ging;Yan Zhong-Wei;Tian Xi;Zhang Yi-Fei;Li Lian-Jie;Liu San-Ging;Huang Wen -Giat;Yan Zhong-Wei;Tian Xi;Zhang Yi-Fei;Li Lian-Jie;Liu San-Ging;Huang Wen -Giat
关键词:Near infrared spectroscopy; Watermelon; Soluble solids content; Online detection; Model optimization
-
Effect of Exogenous Abscisic Acid (ABA), a Potential Growth Regulator on Physiological Response to Chilling Stress of Adzuki Bean (Vigna angularis) at Flowering Stage
作者:Xiang Hong-Tao;Xie Hong-Chang;Wang De-Ming;Xiang Hong-Tao;Li Wan;Liu Jia;He Ning;Wang Xue-Yang;Li Bo;Li Wan;Li Bo
关键词:Adzuki bean; Anti-adversity defense system; Chilling; Exogenous ABA; Yield.
-
Classification Method of Coal and Gangue Based on Hyperspectral Imaging Technology
作者:Li Lian-jie;Fan Shu-xiang
关键词:Hyperspectral image; Coal; Gangue; Black background; Nondestructive detection
-
The metabolomics variations among rice, brown rice, wet germinated brown rice, and processed wet germinated brown rice
作者:Ren Chuan-ying;Lu Wei-hong;Ren Chuan-ying;Lu Shu-wen;Guan Li-jun;Hong Bin;Zhang Ying-lei;Li Bo;Huang Wen-gong;Liu Wei
关键词:brown rice; germination; metabolomics; metabolic pathway; high temperature and pressure
-
Optimization of Online Determination Model for Sugar in a Whole Apple Using Full Transmittance Spectrum
作者:Tian Xi;Tian Xi;Chen Li-ping;Wang Qing-yan;Li Jiang-bo;Yang Yi;Fan Shu-xiang;Huang Wen-qian;Tian Xi;Chen Li-ping;Wang Qing-yan;Li Jiang-bo;Yang Yi;Fan Shu-xiang;Huang Wen-qian
关键词:Online detection; Full transmittance spectrum; Universal prediction model; Apple; Sugar content
-
Development and Experiment of a Handheld Visible/Near Infrared Device for Nondestructive Determination of Fruit Sugar Content
作者:Fan Shu-xiang;Wang Qing-yan;Li Jiang-bo;Zhang Chi;Tian Xi;Huang Wen-qian;Yang Yu-sen
关键词:Nondestructive detection; Fruit; Visible-near infrared spectrum; Spectral analysis; Sugar content; Model transfer
-
Rapid determination of leaf water content for monitoring waterlogging in winter wheat based on hyperspectral parameters
作者:Yang Fei-fei;Du Ming-zhu;Liu Da-zhong;Li Shi-juan;Liu Sheng-ping;Liu Tao;Yang Tian-le;Wang Qi-yuan
关键词:winter wheat; hyperspectral remote sensing; leaf water content; new vegetation index; BP neural network