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Using an Integrated Multidimensional Scaling and Clustering Method to Reduce the Number of Scenarios Based on Flow-Unit Models Under Geological Uncertainties

机译:地质不确定性下基于流单位模型的集成多维尺度聚类方法减少场景数量

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Understanding the role of geological uncertainties on reservoir management decisions requires an ensemble of reservoir models that cover the uncertain space of parameters. However, in most cases, high computation time is needed for the flow simulation step, which can have a negative impact on a suitable assessment of flow behavior. Therefore, one important point is to choose a few scenarios from the ensemble of models while preserving the geological uncertainty range. In this study, we present a statistical solution to select the representative models (RMs) based on a novel scheme of measuring the similarity between 3D flow-unit models. The proposed method includes the integration of multidimensional scaling and cluster analysis (IMC). IMC can be applied to the models before the simulation process to save time and costs. To check the validity of the methodology, numerical simulation and then uncertainly analysis are carried out on the RMs and full set. We create an ensemble of 200 3D flow-unit models through the Latin Hypercube sampling method. The models indicate the geological uncertainty range for properties such as permeability, porosity, and net-to-gross. This method is applied to a synthetic benchmark model named UNISIM-II-D and proves to offer good performance in reducing the number of models so that only 9% of the models in the ensemble (18 selected models from 200 models) can be sufficient for the uncertainty quantification if appropriate similarity measures and clustering methods are used.
机译:要了解地质不确定性在油藏管理决策中的作用,需要一个涵盖参数不确定空间的油藏模型集合。但是,在大多数情况下,流动模拟步骤需要大量的计算时间,这可能会对适当的流动行为评估产生负面影响。因此,重要的一点是在保持地质不确定性范围的同时,从模型集合中选择一些方案。在这项研究中,我们提出了一种统计解决方案,基于一种测量3D流单位模型之间相似度的新颖方案来选择代表性模型(RM)。所提出的方法包括多维缩放和聚类分析(IMC)的集成。可以在仿真过程之前将IMC应用于模型,以节省时间和成本。为了检验该方法的有效性,对RM和全套设备进行了数值模拟,然后进行了不确定性分析。通过Latin Hypercube采样方法,我们创建了200个3D流单位模型的集合。这些模型指示了诸如渗透率,孔隙率和净毛比等属性的地质不确定性范围。此方法应用于名为UNISIM-II-D的综合基准模型,并被证明在减少模型数量方面提供了良好的性能,因此,集合中只有9%的模型(从200个模型中选择了18个模型)足以如果使用适当的相似性度量和聚类方法,则进行不确定性量化。

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