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    基于各向异性介质理论和贝叶斯期望最大化算法的碳酸盐岩储层流体识别方法

    A fluid identification method for carbonate reservoirs based on anisotropic media theory and Bayesian EM algorithm

    • 摘要: 储层流体识别对碳酸盐岩储层的勘探开发、水力压裂、甜点预测等具有重要作用,发育有定向排列裂缝的碳酸盐岩储层通常地下介质复杂,具有各向异性特征,增加了流体识别的难度。本文从各向异性理论出发,将碳酸盐岩储层参数化为含有一组垂直裂缝的横向各向同性介质,裂缝沿垂直方向对称,以此为基础,推导了各向异性反射系数方程,其中包括流体指示因子、准裂缝切向弱度参数、准裂缝法向弱度参数。在贝叶斯理论框架下,融合期望最大化(expectation maximization,EM)算法构建了针对碳酸盐岩储层的流体因子识别方法。模型和实际地震资料反演结果表明,流体因子反演结果与测井数据误差较小,吻合程度较高,验证了碳酸盐岩储层流体识别方法的准确性和可靠性。

       

      Abstract: Reservoir fluid identification plays a crucial role in the exploration and development of carbonate reservoirs, including hydraulic fracturing and sweet spot prediction. Carbonate reservoirs with aligned fractures typically exhibit anisotropy, and such medium complexity further increases the difficulty of fluid identification. Starting from anisotropy theory, this paper parameterizes carbonate reservoirs as transversely isotropic media containing a set of vertical fractures with a horizontal symmetry axis. Based on this, an anisotropic reflection coefficient equation is derived, including the fluid indicator, quasi-fracture tangential weakness, and quasi-fracture normal weakness. Within the Bayesian theoretical framework, the expectation-maximization (EM) algorithm is integrated to construct a fluid identification method for carbonate reservoirs. Inversion results of synthetic and field seismic data demonstrate small errors compared with log data, which corroborates the accuracy and reliability of the proposed method for carbonate reservoir fluid detection.

       

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