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Petrophysical Rock Classification, Permeability Estimation, and Elastic Moduli Assessment in Tight Carbonate Reservoirs: A Case Study in Tarim Field, China

机译:紧密碳酸盐储层中岩石物理岩石分类,渗透性估算和弹性模量评估 - 以塔里木地区为例

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Conventional rock classification in carbonate reservoirs typically requires considerable amount of core data, which usually may not be available at the depth resolution required for each target interval. In cases of tight carbonate rocks with extremely low porosity (less than 5% in average) and permeability (less than 0.1 md), a reliable rock classification is essential for well stimulation modeling. Such rock classification should take into account depth-by-depth petrophysical, compositional, and elastic properties of the formation. In this paper, we apply an integrated rock classification technique to enhance (a) well-log-based estimates of petrophysical, compositional, and elastic properties and (b) selection of appropriate candidate zones for acid fracturing treatment design in a tight carbonate reservoir in northern slope of Tazhong Uplift, Tarim Basin, China. We first perform multi-mineral analysis and estimate volumetric concentrations of minerals, porosity, and fluid saturations. Since shear wave sonic logs are not available in most of the wells, we estimate elastic moduli using effective medium models including self-consistent approximation and differential effective medium theory. Corrections including the impact of fluids are developed using Biot-Gassmann fluid substitution. The inputs to the effective medium models include (a) the petrophysical and compositional properties obtained from well logs, (b) bulk and shear moduli for each mineral and fluid component, and (c) shape of rock inclusions (i.e., grains and pores). Core measurements are used for cross validating the well-log-based estimates of elastic moduli and petrophysical properties. Accordingly, we proposed a rock classification technique using unsupervised neural network that integrated depth-by-depth volumetric concentrations of minerals, porosity, and elastic moduli. Finally, we derived permeability models in each rock type and estimated the permeability in the target depth intervals. Variogram analysis on well-log-based estimates of permeability provides correlation lengths as inputs to acid fracturing treatment modeling. We successfully applied the technique introduced here to a challenging tight gas interval of Tarim field in China. The estimated porosity and permeability were in good agreement with laboratory core measurements. The identified rock classes were verified by core samples and thin sections. We estimated elastic moduli with average relative errors of approximately 13% compare to the core measurements. The estimated elasticmoduli were used as a key input for modeling of acid-fracturing treatments and improved stimulation success. The rock classification technique introduced here provides important input parameters for well stimulation modeling, gives insight into evaluation of acid fracturing in tight carbonate reservoir, and helps with selection of best candidate zones for acid fracturing treatment design.
机译:碳酸盐储存器中的常规岩石分类通常需要相当大量的核心数据,这通常可能在每个目标间隔所需的深度分辨率下不可用。在孔隙率极低的碳酸盐岩(平均小于5%)和渗透率(小于0.1md)的情况下,可靠的岩石分类对于良好的刺激建模是必不可少的。这种岩石分类应考虑到深度深度的岩石物理,组成和形成的弹性性质。在本文中,我们应用了一体的岩石分类技术来增强(a)基于岩石物理,组成和弹性性质的良好估计,(b)在紧密碳酸盐储层中的酸性压裂处理设计的适当候选区的选择塔泽隆北坡隆重,塔里木盆地,中国。我们首先进行多矿物分析和估计矿物质,孔隙率和流体饱和的体积浓度。由于大多数井中的剪切波声波测井不可用,因此我们使用有效介质模型来估计弹性模型,包括自我一致近似和差分有效介质理论。使用Biot-Gassmann流体取代开发了包括流体冲击的校正。有效培养基模型的输入包括(a)从孔对原木,(b)块状和剪切模量获得的岩石物理和组成特性,用于每种矿物和流体组分,(c)岩石夹杂物的形状(即谷物和孔) 。核心测量用于交叉验证基于良基状的弹性模和岩石物理性质的估计。因此,我们提出了一种利用未经监督的神经网络的岩石分类技术,其综合逐渐深入的矿物质,孔隙率和弹性模量的深度体积浓度。最后,我们在每个岩石类型中获得渗透性模型,并估计目标深度间隔的渗透率。基于良好的基于​​良好的渗透性估计的变形仪分析提供了与酸性压裂治疗建模的输入的相关长度。我们成功地应用了中国塔里木领域挑战的塔里木地区的挑战性。估计的孔隙率和渗透性与实验室核心测量有关。通过核心样本和薄部分验证了所识别的岩石类。我们估计了与核心测量相比的平均相对误差的弹性模量约为13%。估计的Elasticmoduli被用作酸性压裂处理的建模和改善刺激成功的关键输入。介绍的岩石分类技术提供了良好刺激建模的重要输入参数,深入了解碳酸盐储层中酸性压裂的评价,并有助于选择酸性压裂处理设计的最佳候选区。

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