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Reservoir Pore Structure Classification Technology of Carbonate Rock Based on NMR T_2 Spectrum Decomposition

机译:基于NMR T_2谱分解的碳酸盐岩储层孔隙结构分类技术

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摘要

The carbonate reservoir has a number of properties such as multi-type pore space, strong heterogeneity, and complex pore structure, which make the classification of reservoir pore structure extremely difficult. According to nuclear magnetic resonance (NMR) T_2 spectrum characteristics of carbonate rock, an automatic pore structure classification and discrimination method based on the T_2 spectrum decomposition is proposed. The objective function is constructed based on the multi-variate Gaussian distribution properties of the NMR T_2 spectrum. The particle swarm optimization algorithm was used to solve the objective function and get the initial values and then the generalized reduced gradient algorithm was proposed for solving the objective function, which ensured the stability and convergence of the solution. Based on the featured parameters of the Gaussian function such as normalized weights, spectrum peaks and standard deviations, the combinatory spectrum parameters (by multiplying peak value and normalized weight for every peak) are constructed. According to the principle of fuzzy clustering, the carbonate rock pore structure is classified automatically and the discrimination function of each pore structure type is obtained using Fisher discrimination analysis. The classification results were analyzed with the corresponding casting thin section and scanning electron microscopy. The study shows that the type of the pore structure based on the NMR T_2 spectrum decomposition is strongly consistent with other methods, which provides a good basis for the quantitative characterization of the carbonate rock reservoir pore space and lays a foundation of the carbonate rock reservoir classification based on NMR logging.
机译:碳酸盐岩储层具有多种类型的孔隙空间,较强的非均质性和复杂的孔隙结构等性质,这使得储层孔隙结构的分类极为困难。针对碳酸盐岩的核磁共振T_2谱特征,提出了一种基于T_2谱分解的孔隙结构自动判别方法。基于NMR T_2光谱的多元高斯分布特性构造目标函数。利用粒子群算法对目标函数进行求解,得到初始值,然后提出了广义归约梯度算法对目标函数进行求解,从而保证了算法的稳定性和收敛性。根据高斯函数的特征参数(例如归一化权重,光谱峰和标准偏差),构造组合光谱参数(通过将每个峰的峰值和归一化权重相乘)。根据模糊聚类原理,对碳酸盐岩孔隙结构进行自动分类,并利用Fisher判别分析获得每种孔隙结构类型的判别函数。用相应的铸件薄截面和扫描电子显微镜分析分类结果。研究表明,基于NMR T_2光谱分解的孔隙结构类型与其他方法高度吻合,为碳酸盐岩储层孔隙空间的定量表征提供了良好的基础,为碳酸盐岩储层分类奠定了基础基于NMR测井。

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