测量复杂油藏的连通性:对油砂开发的影响

S. Nejadi, Stephen M. Hubbard
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引用次数: 0

摘要

阿萨巴斯卡油砂区下白垩统McMurray组由曲流水系形成的河道带沉积组成。大型河流点坝和曲流带的其他组成部分构成了这种非均质地层,是复杂沉积相关系的来源。识别和正确解释空间相分布,从而确定储层系统的连通性,对于优化油田开发和项目经济至关重要。因此,了解河流沉积过程,将相关相与连通性指标联系起来,并将其应用于油气勘探的流动建模是至关重要的。在地质建模阶段,我们分析了通过高密度钻井、广泛取心和三维(3D)地震收集的数据,绘制了不同储层的内部地层结构。该模型捕获了不同沉积元素的3D表示,包括点坝、对点坝、边坝和废弃的河道填充物。确定性解释限制了储层参数的随机模拟,并确定了储层的不同形态、相组合和储集潜力。我们的工作流程提高了地下模型的地质真实性,并允许对空间不确定性进行定量分析。在建模中加入沉积层理几何有助于减少净连续沥青估算中的不确定性。它提高了对储层连通性和划分的认识。超定义模型为详细分析和优化油田开发提供了框架。本文提出了一种新的计算效率高的连通性测量方法,该方法基于详细的地质解释和点状坝中倾斜异质岩层(IHS)的填图。在计算中,我们考虑了:相分布、孔隙度、沿主流轴的渗透率、含油饱和度、压力和标高(势能梯度)、井位和流体流线的弯曲度。为了评价沉积非均质性对储层关键性能指标的影响,我们将储层连通性表述为数学优化问题,并对连通孔隙中的通量进行了估算。将该方法应用于点坝矿床表明,连通性因素与随后的采收率响应密切相关。这种新颖、计算成本低廉的方法捕捉了储层岩石分布的不确定性,为油藏管理问题的决策提供了一种快速实用的测量方法。它的特点是可以评估多个油藏参数,并使用蒙特卡罗技术在地质不确定性的情况下量化不确定性和风险传播,从而对油田组合进行排名。在SAGD的例子中,该方法对蒸汽室的发育和一致性进行了高置信度的估计,为新开发井和填充钻井提供了最佳的井位,优化了井距和井向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Measuring Connectivity in Complex Reservoirs: Implications for Oil Sands Development
The Lower Cretaceous McMurray Formation in the Athabasca Oil Sands consists of channel belt deposits formed from meandering river systems. Large-scale fluvial point bars and other components of meander-belts compose this heterogeneous formation and are the source of complex sedimentary facies relationships. Recognition and correct interpretation of the spatial facies distribution, hence connectivity of the reservoir system, is essential to optimal field development and project economics. It is, therefore, crucial to understand river depositional processes, link associated facies to connectivity metrics, and implement them in flow modelling for hydrocarbon exploration. In the geological modelling phase, we analyzed data collected through high-density drilling, extensive coring, and three-dimensional (3D) seismic to map the internal stratigraphic architecture for different reservoir levels. The model captures the 3D representation of different depositional elements, including point bars, counter point bars, side bars, and abandoned channel fills. The deterministic interpretations constrain the stochastic simulation of the reservoir parameters, and distinct morphology, facies associations, and reservoir potential characterize the zones. Our workflow improves the geological realism of subsurface models and allows quantitative analysis of the spatial uncertainty. Including depositional bedding geometries in the modelling helps reduce uncertainties in net continuous bitumen estimations. It improves the knowledge of reservoir connectivity and compartmentalization. The ultra-defined model provides the framework for detailed analysis and optimal field development. This paper presents a new computationally efficient measure for connectivity based on detailed geological interpretations and mapping inclined heterolithic strata (IHS) in point bar deposits. In the calculations, we account for: facies distributions, porosity, permeability along the principal flow axis, and oil saturation,pressure and elevation (potential energy gradients),well locations, andtortuosity of the fluid flow streamlines. To evaluate the effect of sedimentary heterogeneities on key reservoir performance indicators, we formulate the reservoir connectivity as a mathematical optimization problem and estimate the flux in the connected porosity. Applying the methodology on a point-bar deposit shows that the connectivity factor strongly correlates with the ensuing recovery responses. This novel, computationally inexpensive approach captures the uncertainty in reservoir rock distributions and provides a quick and practical measurement for decision-making in reservoir management problems. Its features enable evaluating multiple reservoir parameters and using Monte Carlo techniques to quantify uncertainty and risk propagation in the presence of geological uncertainty to rank field portfolios. In the SAGD examples, the method estimates steam chamber development and conformance with high confidence, supporting optimal well placement for new development wells and infill drilling, optimizing the well spacing and orientation.
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