A new method for rock classification and sample selection based on dual-energy CT and MaipSCAN: A case study of shale oil reservoirs in the Mahu Depression
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P618.12;P585.2

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    Abstract:

    Due to the insufficiencies of traditional sampling and quantitative characterization methods for oil shale formation, this paper proposed a new approach for rock classification and sample selection based on the study of the shale oil well section in the Mahu Depression. The approach combines dual-energy CT and MaipSCAN mineral scanning electron microscopy data and takes into account rock density, photoelectric index, and mineral identification. Clustering analysis is utilized for the classification. The proposed method is then applied to identify prevalent formations. An innovative representative rock sample selection method and process are introduced that considers macroscopic heterogeneity. The results show good consistency between the photoelectric index-density classification and minerals, and the clustering classification method is capable of further fine sample selection. Layers with high plagioclase content exhibit better oil and physical properties and can serve as geological and engineering sweet spots. The proposed classification method and sample selection process are reliable and provide new ideas and methods for the systematic evaluation of oil shale reservoirs.

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周浩,王晨辉,时凤,刘雯雯,刘欢,魏云,郭彬,张安振,符颖,2025,基于双能CT和MaipSCAN的岩石分类和选样新方法——以玛湖凹陷页岩油储层为例[J].岩石矿物学杂志,44(1):227~240. ZHOU Hao, WANG Chen-hui, SHI Feng, LIU Wen-wen, LIU Huan, WEI Yun, GUO Bin, ZHANG An-zhen, FU Ying,2025,A new method for rock classification and sample selection based on dual-energy CT and MaipSCAN: A case study of shale oil reservoirs in the Mahu Depression[J]. Acta Petrologica et Mineralogica,44(1):227~240.

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History
  • Received:August 12,2023
  • Revised:November 07,2023
  • Adopted:
  • Online: January 15,2025
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