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Variable Stimulated Reservoir Volume (SRV) Simulation: Eagle Ford Shale Case Study

机译:可变刺激的储层卷(SRV)仿真:Eagle Ford页岩案例研究

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Production data analysis and reservoir simulation of the Eagle Ford shale are very challenging due to the complex characteristics of the reservoir and the fluids. Eagle Ford reservoir complexity is expressed in the enormous vertical and horizontal petro-physical heterogeneity, stress-sensitive permeability, and existence of multi-scale natural fracture and fault systems. This complexity makes the prediction of the geometry and conductivity of the hydraulic fracture resulting from the stimulation process rather challenging. On the other hand, reservoir fluid complexity is demonstrated in multi-phase flow, liquid loading in the wellbore, condensate banking, etc. Based on this complexity, 3D reservoir modeling and numerical simulation have the relative advantage of addressing irregular fracture geometry, variable SRV, and multi-phase flow aspects. The South Texas Asset Team at Pioneer Natural Resources is establishing a workflow for dynamic reservoir modeling that can integrate all reservoir/wellbore parameters (formation evaluation, drilling, completion, stimulation, pre-/post-fracture surveillance, and well performance data) in order to address key questions relating to field development; such as depletion efficiency, drainage area, wells interference, and condensate banking effects. In this paper, a case study is presented to demonstrate the integration of various measurements and surveillance data to build a variable SRV reservoir model. The variable SRV model described here has the following building blocks: 1) Formation evaluation: included all the reservoir characterization data derived from logs and 3D seismic inversions and structural attributes. 2) Surveillance data integration: microseismic data (backbone for this work) are integrated with chemical and radioactive tracer logs. 3) Well performance data integration: Production data is used to determine different flow regimes during the well history and to set bounds for stimulation parameters, such as fracture half-length and permeability ( √ ). 4) Numerical simulation: Micro-seismic attributes (density and magnitude) are converted to a permeability model after being calibrated with tracer logs and production flow regime parameters ( √ ). PVT data is matched against an Equation of State (EOS) and input into the model. Production data history matching, sensitivity and forecasting indicate the following: a) The SRV created by fracture stimulation has permeability fading away from the wellbore; b) Fracture geometry is variable and results in an irregular drainage area along the lateral; C) Onset of condensate banking near wellbore and along the fracture(s) can occur within the first year of production if draw down is not managed properly.
机译:由于储层和液体的复杂特性,鹰福特页岩的生产数据分析和储层模拟是非常具有挑战性的。鹰福特储层复杂性在巨大的垂直和水平的石油 - 物理异质性,应力敏感性渗透性和多尺度自然骨折和故障系统的存在中表达。这种复杂性使得通过刺激过程产生的液压断裂的几何形状和电导率的预测相当具有挑战性。另一方面,基于这种复杂性,3D储层模型和数值模拟,在多相流动,液体载荷等中展示了储层流体复杂性,井筒,冷凝水库等的液体载荷具有解决不规则骨折几何形状的相对优势,可变SRV和多相流动方面。 Pioneer自然资源的南德克萨斯州资产队伍正在为动态储层建模建立工作流程,可以整合所有储层/井筒参数(形成评估,钻井,完工,刺激,/骨折后监测,以及骨折性能数据)按顺序排列解决与现场开发有关的关键问题;如耗尽效率,排水面积,井干扰和冷凝水库效应。在本文中,提出了一种案例研究以证明各种测量和监视数据的集成来构建变量SRV储层模型。这里描述的变量SRV模型具有以下构建块:1)形成评估:包括从日志和3D地震反转和结构属性导出的所有储层表征数据。 2)监视数据集成:微震数据(本工作的骨干)与化学和放射性示踪原木集成。 3)井性能数据集成:生产数据用于在井中确定不同的流动状态,并为刺激参数设定界限,例如裂缝半长和渗透率(√)。 4)数值模拟:在用示踪物日志和生产流程(√)校准后,将微地震属性(密度和幅度)转换为渗透性模型。 PVT数据与状态(EOS)的等式匹配,并输入模型。生产数据历史匹配,灵敏度和预测表明以下内容:a)裂缝刺激创造的SRV具有渗透性的渗透率; b)断裂几何形状是可变的,导致沿横向的不规则排水区; c)在井筒附近的凝结水库和沿着骨折的爆发可能发生在生产的第一年内,如果没有正确管理。

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