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The identification of coal texture in different rank coal reservoirs by using geophysical logging data in northwest Guizhou, China: Investigation by principal component analysis

•The logging evaluation method for different rank coal texture was established.•The identification index was constructed by using principal component analysis.•The method was applied in multiple coal seams of western Guizhou Province. Coal texture properties are one of important factors for determin...

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Published in:Fuel (Guildford) 2018-10, Vol.230, p.258-265
Main Authors: Ren, Pengfei, Xu, Hao, Tang, Dazhen, Li, Yukui, Sun, Changhua, Tao, Shu, Li, Song, Xin, Fudong, Cao, Likun
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cited_by cdi_FETCH-LOGICAL-c328t-d1cc6a78d1b072a030f6062b267b1700cc8047e5c1a65140bf0d967e187218283
cites cdi_FETCH-LOGICAL-c328t-d1cc6a78d1b072a030f6062b267b1700cc8047e5c1a65140bf0d967e187218283
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container_title Fuel (Guildford)
container_volume 230
creator Ren, Pengfei
Xu, Hao
Tang, Dazhen
Li, Yukui
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Xin, Fudong
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description •The logging evaluation method for different rank coal texture was established.•The identification index was constructed by using principal component analysis.•The method was applied in multiple coal seams of western Guizhou Province. Coal texture properties are one of important factors for determining the gas sorption capacity and transport properties. The recognition of coal texture with drilled cores or mining seam observation is direct and effective methods, but both methods are expensive and impossible for unexplored coal seams. The cut-off values logging data were applied in a few coal basins while the method ignores the effect of different coal ranks and is complicated with blurry boundary. In this study, 174 coal cores data obtained from 18 CBM wells were correlated with their geophysical logging responses in northwestern Guizhou Province. Four well-logging curves of the caliper logging (CAL), densities (DEN), natural gamma (GR) and deep lateral resistivity (LLD) were chosen to analyze coal textures. With progressive damage of coal, both values of CAL and LLD gradually increase while the DEN and GR tend to decrease. The identification index was reconstructed by using the principal component analysis (PCA) to identify coal texture of different coal ranks to improve the qualities of coal texture identification and reduce multiple solutions. The logging evaluation method for coal texture identification were applied in multiple coal seams in western Guizhou Province to validate the prediction method of logging data. The results show that PCA is feasible tool to analyze coal texture with improving accuracy and the well logging identification coal texture is good consistency with core identification in different rank coal.
doi_str_mv 10.1016/j.fuel.2018.05.019
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Coal texture properties are one of important factors for determining the gas sorption capacity and transport properties. The recognition of coal texture with drilled cores or mining seam observation is direct and effective methods, but both methods are expensive and impossible for unexplored coal seams. The cut-off values logging data were applied in a few coal basins while the method ignores the effect of different coal ranks and is complicated with blurry boundary. In this study, 174 coal cores data obtained from 18 CBM wells were correlated with their geophysical logging responses in northwestern Guizhou Province. Four well-logging curves of the caliper logging (CAL), densities (DEN), natural gamma (GR) and deep lateral resistivity (LLD) were chosen to analyze coal textures. With progressive damage of coal, both values of CAL and LLD gradually increase while the DEN and GR tend to decrease. The identification index was reconstructed by using the principal component analysis (PCA) to identify coal texture of different coal ranks to improve the qualities of coal texture identification and reduce multiple solutions. The logging evaluation method for coal texture identification were applied in multiple coal seams in western Guizhou Province to validate the prediction method of logging data. 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ispartof Fuel (Guildford), 2018-10, Vol.230, p.258-265
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1873-7153
language eng
recordid cdi_proquest_journals_2088758740
source Elsevier
subjects Basins
China
Coal
Coal mines
Coal mining
Coal texture
Cores
Data logging
Feasibility studies
Geophysical Logging data
Geophysics
Logging
Northwest Guizhou
Principal component analysis
Principal components analysis
Reservoirs
Texture recognition
Timber industry
title The identification of coal texture in different rank coal reservoirs by using geophysical logging data in northwest Guizhou, China: Investigation by principal component analysis
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