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多源测井数据预测煤层工业组分和发热量模型研究

余永鹏, 张广兵, 黄自军, 闫建波, 王嘉文, 杨彦成, 毛兴军. 2024. 多源测井数据预测煤层工业组分和发热量模型研究. 物探与化探, 48(1): 185-193. doi: 10.11720/wtyht.2024.2553
引用本文: 余永鹏, 张广兵, 黄自军, 闫建波, 王嘉文, 杨彦成, 毛兴军. 2024. 多源测井数据预测煤层工业组分和发热量模型研究. 物探与化探, 48(1): 185-193. doi: 10.11720/wtyht.2024.2553
YU Yong-Peng, ZHANG Guang-Bing, HUANG Zi-Jun, YAN Jian-Bo, WANG Jia-Wen, YANG Yan-Cheng, MAO Xing-Jun. 2024. A prediction model of the industrial components and calorific values of coal seams based on multi-source log data. Geophysical and Geochemical Exploration, 48(1): 185-193. doi: 10.11720/wtyht.2024.2553
Citation: YU Yong-Peng, ZHANG Guang-Bing, HUANG Zi-Jun, YAN Jian-Bo, WANG Jia-Wen, YANG Yan-Cheng, MAO Xing-Jun. 2024. A prediction model of the industrial components and calorific values of coal seams based on multi-source log data. Geophysical and Geochemical Exploration, 48(1): 185-193. doi: 10.11720/wtyht.2024.2553

多源测井数据预测煤层工业组分和发热量模型研究

  • 基金项目:

    宁夏自然科学基金项目(2021AAC03459, 2021AAC03462, 2022AAC05063)

详细信息
    作者简介: 余永鹏(1987-), 男, 工程师, 2008年毕业于中国地质大学(武汉), 主要从事地球物理和地质信息化工作。Email:yyp0527@126.com
    通讯作者: 张广兵(1988-), 男, 工程师, 主要从事煤田地面电法和煤田测井工作。Email:262454161@qq.com
  • 中图分类号: P631.81

A prediction model of the industrial components and calorific values of coal seams based on multi-source log data

More Information
    Corresponding author: ZHANG Guang-Bing
  • 煤层工业组分和发热量是评价煤质的基本依据, 利用测井资料预测煤层工业组分和发热量可以弥补煤芯样试验分析的不足。利用宁夏某井田详查、勘探等不同阶段的数字测井和煤质化验数据, 在研究煤质特征、测井响应特征和统计分析的基础上, 建立了测井响应特征提取、样本集建立和数据处理方法与深度神经网络模型, 通过对测试数据的预测结果和试验分析结果对比, 验证了预测模型有效性。
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出版历程
收稿日期:  2022-11-08
修回日期:  2023-01-08

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