Advance Search
Issue 2
Feb.  2016
Turn off MathJax
Article Contents
Gao Wei Yi Tongsheng, . Pore features of coal reservoir in Songhe Mine Field of West Guizhou and its impact to permeability[J]. COAL SCIENCE AND TECHNOLOGY, 2016, (2).
Citation: Gao Wei Yi Tongsheng, . Pore features of coal reservoir in Songhe Mine Field of West Guizhou and its impact to permeability[J]. COAL SCIENCE AND TECHNOLOGY, 2016, (2).

Pore features of coal reservoir in Songhe Mine Field of West Guizhou and its impact to permeability

More Information
  • Available Online: April 02, 2023
  • Published Date: February 24, 2016
  • with the systematc lection on ight cal samples from a ypical borehole in Songhe Mline Field of West Guizhou with the mercury njection test and the permeabilit ratio data.the pore structure features and the pore volume fraction features of th coalresevoir under the development condiin of the mui seams were studied and the relationship between the pore structure paramneters and permeability was discovered The resuts showed that the average pecentage of the total pore volume with the micro pore,small pore,medum pore and large pore in the coalresevoir of the study zone were 30N%,36%,17%and 17% indidually the poreconfiguration was rational ,the pore connectvity of each pore d ameter section was good.thepore volume was 0.020 8 ~ 0.037 2 cmi3 g and the porosty was 3.35% ~5.16%.The verical developmert difrential of the pore parameters was high.No.1 seam and No.24 seam ad the pore condition for a single seam develogment There was d iference existed in the lowerlinit of the pore volume faction in ach seam and the fraction lower linit and test ell ermeatility ould be in utra ood negative crelation.The pore volume and the porosity had a certain positive correlation to the test well permeability.
  • Cited by

    Periodical cited type(8)

    1. 常宏. 低瓦斯煤层回采工作面瓦斯涌出特征及治理措施研究. 能源与节能. 2024(07): 233-236 .
    2. 宋世伟,张雪,张喜超,景媛媛. 基于深度神经网络的回采工作面瓦斯涌出量预测. 现代工业经济和信息化. 2024(09): 115-116+119 .
    3. 毛智强,徐耀松,王丹丹,田楚汉,黄明宇. 基于模态分解和时间卷积网络的瓦斯涌出量组合预测. 传感技术学报. 2024(10): 1795-1802 .
    4. 陈茜,汤滢. 煤矿区煤层气大数据分析管理平台设计与应用. 煤炭工程. 2024(11): 18-23 .
    5. 马文伟. 基于特征选择与BO-GBDT的工作面瓦斯涌出量预测方法. 工矿自动化. 2024(12): 136-144 .
    6. 刘锋. 基于PCA-SAPSO-BP神经网络的瓦斯涌出量预测研究. 煤矿安全. 2023(04): 60-68 .
    7. 李莎莎,崔铁军. 考虑系统故障演化整体和局部特征的关键事件确定方法. 中国安全生产科学技术. 2023(09): 150-156 .
    8. 牛红培. 基于时间分析法的煤矿瓦斯涌出量预测研究. 煤炭技术. 2023(11): 148-151 .

    Other cited types(2)

Catalog

    Article views (663) PDF downloads (672) Cited by(10)
    Related

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return