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A comparative study of reservoir modeling techniques and their impact on predicted performance of fluvial-dominated deltaic reservoirs

机译:储层建模技术及其对河流主导型三角洲储层预测性能影响的比较研究

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摘要

Multiple techniques are available to construct three-dimensional reservoir models. This study uses comparative analysis to test the impact of applying four commonly used stochastic modeling techniques to capture geologic heterogeneity and fluid-flow behavior in fluvial-dominated deltaic reservoirs of complex facies architecture: (1) sequential indicator simulation; (2) object-based modeling; (3) multiple-point statistics (MPS); and (4) spectral component geologic modeling. A reference for comparison is provided by a high-resolution model of an outcrop analog that captures facies architecture at the scale of parasequences, delta lobes, and facies-association belts. A sparse, pseudosubsurface data set extracted from the reference model is used to condition models constructed using each stochastic reservoir modeling technique. Models constructed using all four algorithms fail to match the facies-association proportions of the reference model because they are conditioned to well data that sample a small, unrepresentative volume of the reservoir. Simulated sweep efficiency is determined by the degree to which the modeling algorithms reproduce two aspects of facies architecture that control sand-body connectivity: (1) the abundance, continuity, and orientation of channelized fluvial sand bodies; and (2) the
机译:可以使用多种技术来构建三维油藏模型。本研究使用比较分析来测试应用四种常用的随机建模技术来捕获复杂相构造的河流控制的三角洲油藏中的地质异质性和流体流动行为的影响:(1)顺序指标模拟; (2)基于对象的建模; (3)多点统计(MPS); (4)频谱成分地质建模。比较的参考由露头类似物的高分辨率模型提供,该模型以副序列,三角洲和相联系带的规模捕获相构造。从参考模型中提取的稀疏伪地下数据集用于调节使用每种随机油藏建模技术构造的模型。使用所有四种算法构建的模型都无法匹配参考模型的相-关联比例,因为它们被条件化为对少量,无代表性的储层进行采样的井数据。模拟扫掠效率取决于建模算法在多大程度上再现控制砂体连通性的相结构的两个方面:(1)河道化河道砂体的丰度,连续性和方向;和(2)

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