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    微构造识别方法及其在煤层气储层中的应用

    A microstructure identification method and its application in coalbed methane reservoirs

    • 摘要: 微构造的隐匿性、强非均质性直接影响煤层气水平井部署与单井产能。针对其尺度小、地震响应特征弱、常规方法难以刻画等难点,发展了一种最正曲率、最大似然、相位调谐多源地震属性与人工智能相结合的煤层气储层微构造识别方法,增强了相对高差小于20 m(多数小于10 m)的地层微小起伏和断距在10 m以下甚至小于5 m的低序级断层的刻画能力与识别效果。研究表明,地层微小起伏与低序级断层会综合影响煤层气井产量。沁水盆地中东部二叠系山西组煤层气储层应用结果表明,该方法提高了微构造的识别精度,基本落实了低序级断层的发育情况和微构造的分布,显著提升了工程应对能力;井位部署应尽可能远离局部负向微幅度构造发育区500 m以上,避开低序级断层平面组合呈复杂网状的密集发育区。该方法为推动煤层气地震−地质−工程一体化高效开发提供了技术支撑。

       

      Abstract: Microstructures in coalbed methane (CBM) reservoirs are concealed and highly heterogeneous, which directly impacts horizontal well placement and productivity. To address the limitations of conventional methods in characterizing their small-scale, weak seismic responses, this study integrates artificial intelligence with multiple seismic attributes, including most positive curvature, maximum likelihood, and phase tuning, for microstructure identification. This method enhances the characterization of low-relief structures (relative relief <20 m, mostly <10 m) and low-grade faults (throw ≤10 m, and even <5 m), both of which affect CBM well productivity. Application of the proposed method to CBM reservoirs of the Permian Shanxi Formation in the central-eastern Qinshui Basin identifies low-grade faults and low-relief structures with improved accuracy and high confidence, which significantly enhances engineering response capabilities. Comprehensive analysis suggests that well placement should be at least 500 m away from local negative microstructures and avoid densely populated net-shaped low-grade faults. This method provides technical support for the integrated seismic-geological-engineering development of CBM.

       

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