Coal and Rock Classification with Rib Images and Machine Learning Techniques

被引:0
作者
Yuting Xue
机构
[1] CDC NIOSH Pittsburgh Mining Research Division,
来源
Mining, Metallurgy & Exploration | 2022年 / 39卷
关键词
Rock classification; Image processing; Patch; Machine learning; SVM; Random forest;
D O I
暂无
中图分类号
学科分类号
摘要
Classification of rock and coal is one preliminary problem for fully automated or intelligent mining. It assists for the automated rib stability analysis and enables the shearer to adjust the drums without human intervention. In this paper, the classification of rock from coal on rib images has been studied with machine learning techniques. A database of rock and coal image has been created by filtering photographs taken by NIOSH researchers in gateroad during site visits and only the images with fresh areas of rock and coal on the rib were selected. Machine learning was conducted on patches with a determined size, which are smaller images randomly extracted from each rock or coal image. After training, the classifier was validated with the testing dataset and an accuracy score of 0.9 was obtained. The influence of patch size and classifier was also investigated. The trained classifier was then applied to classify rock and coal on a new rib image with three rock layers of different thicknesses and good agreement was achieved.
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页码:453 / 465
页数:12
相关论文
共 88 条
[1]  
Pappas DM(2012)Roof and rib fall incident trends: a 10-year profile Trans Soc Mining, Metall Explor 330 462-478
[2]  
Mark C(2017)Longwall automation: trends, challenges and opportunities Int J Min Sci Technol 27 733-739
[3]  
Ralston JC(2019)Automation in U.S. longwall coal mining: A state-of-the-art review Int J Min Sci Technol 29 151-9
[4]  
Hargrave CO(2015)Longwall automation: Delivering enabling technology to achieve safer and more productive underground mining Int J Min Sci Technol 25 865-876
[5]  
Dunn MT(2019)Dynamic identification of coal-rock interface based on adaptive weight optimization and multi-sensor information fusion Inf Fusion 51 114-128
[6]  
Peng SS(1996)Towards a texture naming system: Identifying relevant dimensions of texture Vision Res 36 1649-1669
[7]  
Du F(2013)Coal–rock interface detection on the basis of image texture features Int J Min Sci Technol 23 681-687
[8]  
Cheng J(1982)Automated petrographic characterization of coal lithotypes Int J Coal Geol 1 347-359
[9]  
Li Y(1989)Characterization of coals by automated optical image analysis 1 Vitrinite reflectance J Microsc 156 313-326
[10]  
Ralston JC(1985)Image analyser measurements of coal reflectance J Microsc 137 145-154