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Systematic Uncertainty Reduction for Petroleum Reservoirs Combining Reservoir Simulation and Bayesian Emulation Techniques

机译:石油储层组合水库仿真和贝叶斯仿真技术的系统不确定性降低

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Reservoir simulation models incorporate physical laws and reservoir characteristics.They represent our understanding of sub-surface structures based on the available information.Emulators are statistical representations of simulation models,offering fast evaluations of a sufficiently large number of reservoir scenarios,to enable a full uncertainty analysis.Bayesian History Matching (BHM) aims to find the range of reservoir scenarios that are consistent with the historical data,in order to provide comprehensive evaluation of reservoir performance and consistent,unbiased predictions incorporating realistic levels of uncertainty,required for full asset management.We describe a systematic approach for uncertainty quantification that combines reservoir simulation and emulation techniques within a coherent Bayesian framework for uncertainty quantification.Our systematic procedure is an alternative and more rigorous tool for reservoir studies dealing with probabilistic uncertainty reduction.It comprises the design of sets of simulation scenarios to facilitate the construction of emulators,capable of accurately mimicking the simulator with known levels of uncertainty.Emulators can be used to accelerate the steps requiring large numbers of evaluations of the input space in order to be valid from a statistical perspective.Via implausibility measures,we compare emulated outputs with historical data incorporating major process uncertainties.Then,we iteratively identify regions of input parameter space unlikely to provide acceptable matches,performing more runs and reconstructing more accurate emulators at each wave,an approach that benefits from several efficiency improvements.We provide a workflow covering each stage of this procedure.The procedure was applied to reduce uncertainty in a complex reservoir case study with 25 injection and production wells.The case study contains 26 uncertain attributes representing petrophysical,rockfluid and fluid properties.We selected phases of evaluation considering specific events during the reservoir management,improving the efficiency of simulation resources use.We identified and addressed data patterns untracked in previous studies: simulator targets,e.g.liquid production,and water breakthrough lead to discontinuities in relationships between outputs and inputs.With 15 waves and 115 valid emulators,we ruled out regions of the searching space identified as implausible,and what remained was only a small proportion of the initial space judged as non-implausible (~10?11%).The systematic procedure showed that uncertainty reduction using iterative Bayesian History Matching has the potential to be used in a large class of reservoir studies with a high number of uncertain parameters.We advance the applicability of Bayesian History Matching for reservoir studies with four deliveries: (a) a general workflow for systematic BHM,(b) the use of phases to progressively evaluate the historical data;and (c) the integration of two-class emulators in the BHM formulation.Finally,we demonstrate the internal discrepancy as a source of error in the reservoir model.
机译:储层模拟模型包含物理法律和储层特征。他们基于可用信息代表了对子表面结构的理解。仪器是模拟模型的统计表现,提供了足够大量的储层场景的快速评估,以实现充分的不确定性分析.Bayesian历史匹配(BHM)旨在找到与历史数据一致的水库情景范围,以便提供完整资产管理所需的储层性能和一致,无偏见的预测,提供完整资产管理所需的储层性能和一致的不偏的预测。我们描述了一种不确定量化的系统方法,将储层模拟和仿真技术结合在相干贝叶斯框架内的不确定量化。系统的过程是储层研究的替代和更严格的工具,处理概率的不确定性.I图4包括设计模拟方案集的设计,以便于仿真器的构造,能够用已知的不确定性级别准确地模拟模拟器。可以使用用于加速需要大量评估输入空间的步骤以便有效的步骤从统计的透视图.VIA难以妨碍性测量,我们将模拟输出与包含主要过程不确定性的历史数据进行比较。然后,我们迭代地确定输入参数空间的区域,不太可能提供可接受的匹配,在每个波处执行更多的运行和重建更准确的仿真器。从若干效率改进的方法中的方法提供了一种涵盖该程序的每个阶段的工作流程。应用程序以减少具有25个注射和生产井的复杂储层案例研究中的不确定性。案例研究含有26个不确定的属性,代表岩石物理学,岩石物理学,Rockfluid和液体特性。我们选择的阶段考虑到储层管理期间的具体事件的评价,提高了模拟资源的效率。我们在先前研究中未经触发的数据模式:模拟器目标,Egliquid生产,以及水突破导致输出和输入之间的不连续性。 15波浪和115个有效的仿真器,我们排除了所识别的搜索空间的区域,仍然是判断为不可难以判定的初始空间的一小部分初始空间(〜10?11%)。系统程序表明不确定使用迭代贝叶斯历史匹配的减少有可能在大量的储层研究中使用,具有大量不确定的参数。我们推进了贝叶斯历史匹配对水库研究的适用性,四个交付:(a)系统的一般工作流程BHM,(b)使用阶段逐步评估历史数据;(c)两克拉斯的整合在BHM制剂中的模拟器。最后,我们展示了内部差异作为储层模型中的错误来源。

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