ENHANCED ASSESSMENT OF FLUID SATURATION IN THE WOLFCAMP FORMATION OF THE PERMIAN BASIN

Sabyasachi Dash, Z. Heidari
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引用次数: 1

Abstract

Conventional resistivity models often overestimate water saturation in organic-rich mudrocks and require extensive calibration efforts. Conventional resistivity-porosity-saturation models assume brine in the formation as the only conductive component contributing to resistivity measurements. Enhanced resistivity models for shaly-sand analysis include clay concentration and clay-bound water as contributors to electrical conductivity. These shaly-sand models, however, consider the existing clay in the rock as dispersed, laminated, or structural, which does not reliably describe the distribution of clay network in organic-rich mudrocks. They also do not incorporate other conductive minerals and organic matter, which can significantly impact the resistivity measurements and lead to uncertainty in water saturation assessment. We recently introduced a method that quantitatively assimilates the type and spatial distribution of all conductive components to improve reserves evaluation in organic-rich mudrocks using electrical resistivity measurements. This paper aims to verify the reliability of the introduced method for the assessment of water/hydrocarbon saturation in the Wolfcamp formation of the Permian Basin. Our recently introduced resistivity model uses pore combination modeling to incorporate conductive (clay, pyrite, kerogen, brine) and non-conductive (grains, hydrocarbon) components in estimating effective resistivity. The inputs to the model are volumetric concentrations of minerals, the conductivity of rock components, and porosity obtained from laboratory measurements or interpretation of well logs. Geometric model parameters are also critical inputs to the model. To simultaneously estimate the geometric model parameters and water saturation, we develop two inversion algorithms (a) to estimate the geometric model parameters as inputs to the new resistivity model and (b) to estimate the water saturation. Rock type, pore structure, and spatial distribution of rock components affect geometric model parameters. Therefore, dividing the formation into reliable petrophysical zones is an essential step in this method. The geometric model parameters are determined for each rock type by minimizing the difference between the measured resistivity and the resistivity, estimated from Pore Combination Modeling. We applied the new rock physics model to two wells drilled in the Permian Basin. The depth interval of interest was located in the Wolfcamp formation. The rock-class-based inversion showed variation in geometric model parameters, which improved the assessment of water saturation. Results demonstrated that the new method improved water saturation estimates by 32.1% and 36.2% compared to Waxman-Smits and Archie's models, respectively, in the Wolfcamp formation. The most considerable improvement was observed in the Middle and Lower Wolfcamp formation, where the average clay concentration was relatively higher than the other zones. Results demonstrated that the proposed method was shown to improve the estimates of hydrocarbon reserves in the Permian Basin by 33%. The hydrocarbon reserves were underestimated by an average of 70000 bbl/acre when water saturation was quantified using Archie's model in the Permian Basin. It should be highlighted that the new method did not require any calibration effort to obtain model parameters for estimating water saturation. This method minimizes the need for extensive calibration efforts for the assessment of hydrocarbon/water saturation in organic-rich mudrocks. By minimizing the need for extensive calibration work, we can reduce the number of core samples acquired. This is the unique contribution of this rock-physics-based workflow.
加强二叠纪盆地沃尔夫坎普组流体饱和度评价
传统的电阻率模型往往高估了富有机质泥岩的含水饱和度,需要大量的校准工作。传统的电阻率-孔隙度-饱和度模型假设地层中的盐水是影响电阻率测量的唯一导电成分。用于泥砂分析的增强电阻率模型包括粘土浓度和粘土结合水作为电导率的贡献者。然而,这些泥砂模型认为岩石中存在的粘土是分散的、层状的或结构性的,这并不能可靠地描述富有机质泥岩中粘土网的分布。它们也不含其他导电矿物和有机物,这可能会严重影响电阻率测量,并导致含水饱和度评估的不确定性。最近,我们介绍了一种定量吸收所有导电组分类型和空间分布的方法,以改进利用电阻率测量的富有机质泥岩储量评价。本文旨在验证所引入的二叠系Wolfcamp组水烃饱和度评价方法的可靠性。我们最近推出的电阻率模型使用孔隙组合建模,将导电(粘土、黄铁矿、干酪根、盐水)和非导电(颗粒、碳氢化合物)成分纳入有效电阻率估算中。该模型的输入是矿物的体积浓度、岩石成分的导电性以及从实验室测量或测井解释中获得的孔隙度。几何模型参数也是模型的关键输入。为了同时估计几何模型参数和含水饱和度,我们开发了两种反演算法(a)来估计几何模型参数作为新的电阻率模型的输入,(b)来估计含水饱和度。岩石类型、孔隙结构和岩石组分的空间分布影响几何模型参数。因此,将地层划分为可靠的岩石物性带是该方法的关键步骤。每种岩石类型的几何模型参数是通过最小化测量电阻率与孔隙组合建模估计的电阻率之间的差异来确定的。我们将新的岩石物理模型应用于二叠纪盆地的两口井。感兴趣的深度区间位于Wolfcamp组。基于岩石类的反演显示出几何模型参数的变化,提高了含水饱和度的评价。结果表明,与Waxman-Smits模型和Archie模型相比,新方法在Wolfcamp地层中的含水饱和度估算值分别提高了32.1%和36.2%。改善最显著的是中下沃尔夫坎普组,其平均粘土浓度相对高于其他带。结果表明,该方法可将二叠纪盆地油气储量估算值提高33%。当使用Archie的模型量化二叠纪盆地的含水饱和度时,油气储量平均被低估了7万桶/英亩。应该强调的是,新方法不需要任何校准工作来获得用于估计含水饱和度的模型参数。该方法最大限度地减少了对富有机质泥岩中油气/水饱和度评估的大量校准工作。通过减少大量校准工作的需要,我们可以减少获得的岩心样品的数量。这是基于岩石物理的工作流程的独特贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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