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Quantifying and predicting naturally fractured reservoir behavior with continuous fracture models

机译:用连续裂缝模型量化和预测天然裂缝储层行为

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This article describes the workflow used in continuous fracture modeling (CFM) and its successful application to several projects. Our CFM workflow consists of four basic steps: (1) interpreting key seismic horizons and generating prestack and poststack seismic attributes; (2) using these attributes along with log and core data to build seismically constrained geocellular models of lithology, porosity, water saturation, etc.; (3) combining the derived geocellular models with prestack and poststack seismic attributes and additional geomechan-ical models to derive high-resolution three-dimensional (3-D) fracture models; and (4) validating the 3-D fracture models in a dynamic reservoir simulator by testing their ability to match well performance. Our CFM workflow uses a neural network approach to integrate all of the available static and dynamic data. This results in a model that is better able to identify fractured areas and quantify their impact on well and reservoir flow behavior. This technique has been successfully applied in numerous sandstone and carbonate reservoirs to both understand reservoir behavior and determine where to drill additional wells. Three field case studies are used to illustrate the capabilities of the CFM approach.
机译:本文介绍了连续裂缝建模(CFM)中使用的工作流程及其在多个项目中的成功应用。我们的CFM工作流程包括四个基本步骤:(1)解释关键地震层位并生成叠前和叠后地震属性; (2)将这些属性与测井和核心数据一起使用,以建立受地震约束的岩性,孔隙度,含水饱和度等的地质细胞模型; (3)将导出的地质细胞模型与叠前和叠后地震属性以及其他地质力学模型相结合,以得出高分辨率的三维(3-D)裂缝模型; (4)通过测试动态3D裂缝模型与井眼性能匹配的能力来验证其3D裂缝模型。我们的CFM工作流程使用神经网络方法来集成所有可用的静态和动态数据。这样就产生了一个模型,该模型能够更好地识别裂缝区域并量化其对井和油藏流动行为的影响。该技术已成功应用于众多砂岩和碳酸盐岩储层中,以了解储层行为并确定在何处钻探更多的井。通过三个现场案例研究来说明CFM方法的功能。

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