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Innovated Simulation History Matching Approac Enabling Better Historical Performance Match and Embracing Uncertainty in Predictive Forecasting (SPE-120958)

机译:创新的仿真历史匹配批准验证使得能够更好的历史表现匹配和预测预测中的不确定性(SPE-120958)

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The purpose of the simulation history match phase in a study is to achieve a simulation model calibrated to historical performance for predictive production forecasting while preserving reservoir understanding in terms of reservoir characterization and fluid flow mechanisms. The classical history match simulation approach involves running a number of history match simulation cases with modified simulation model variables to obtain only one of the many probable match models to the field data. Undoubtedly, the conventional simulation history match approach does not normally handle the uncertainty of all model variables, nor the possibility to identify and carry forward a set of multiple equi-probable history match model scenarios to predictive forecasting. Furthermore, the conventional history match approach lacks a rigorous mechanism to ensure that the original reservoir characterization and understanding is preserved after achieving only one of the many probable history match models. This paper presents an innovative history match approach as part of Saudi Aramco's integrated "Event Solution1" study workflow. This approach was developed to enable faster simulation history match under uncertainty, in terms of static and dynamic variables. The history matching process is performed with the aid of assisted history matching software 2 that tracks the match quality of hundreds of history match cases and analyzes the impact of each variable and its range of uncertainty on model match quality to historical field data. Finally, a proxy (statistical History Match solution surface including all uncertainty variables) is created that combines model learnings to provide directional guidance to a most likely history match model design. As the history match process progresses, history match variables are characterized into three distinct categories; (1) critical variables to history match, (2) non critical variables to history match but with significant impact on prediction, and (3) non critical variables to history match but with less impact on prediction. The impact of the variables on prediction is concluded by concurrently running prediction runs under uncertainty. The uncertainty range of the variables categorized in groups (1) and (3) are set to a single realizations or narrower range of uncertainty for each variable while group (2) variables are carried forward with a more restricted range of uncertainty (defined by history match quality analysis) setting the stage for prediction under uncertainty modeling. This paper presents the application of an innovative history match approach that provides all project stakeholders with a shared understanding of critical and non critical uncertainties (static and dynamic) in history match as carried forward to prediction runs under uncertainty.
机译:研究中的模拟历史匹配阶段的目的是实现校准模拟模型,以校准到预测生产预测的历史性能,同时在储层表征和流体流动机制方面保持水库的理解。经典历史匹配仿真方法涉及运行多个历史匹配模拟案例,该历史匹配模拟案例与修改的模拟模型变量,以获得到现场数据的许多可能匹配模型中的一个。毫无疑问,传统的模拟历史匹配方法通常不会处理所有模型变量的不确定性,也不能够识别和携带一组多个有可能历史匹配模型方案来预测预测的一组的可能性。此外,传统的历史匹配方法缺乏严格的机制,以确保在仅实现许多可能的历史匹配模型中的一个之后保留原始储层表征和理解。本文提出了一种创新的历史匹配方法,作为沙特阿美公司集成的“活动解决方案1”研究工作流程的一部分。在静态和动态变量方面,开发了这种方法以实现不确定性的速度较快的模拟历史匹配。历史匹配过程是借助于辅助历史匹配的软件2来执行的,该软件2跟踪数百个历史匹配案例的匹配质量,并分析每个变量的影响及其对模型匹配质量的不确定性范围到历史现场数据。最后,创建了一种代理(包括所有不确定性变量的统计历史匹配解决方案表面),其结合了模型学习,为最可能的历史匹配模型设计提供方向指导。随着历史匹配过程的进展,历史匹配变量的特征为三个不同的类别; (1)历史匹配的临界变量,(2)对历史匹配的非关键变量匹配,但对预测的显着影响,并且(3)对历史匹配的非关键变量,但对预测的影响较小。通过在不确定性下,通过同时运行的预测来结束了变量对预测的影响。分类为组(1)和(3)分类的变量的不确定性范围被设置为每个变量的单个实现或更窄的不确定性范围,而组(2)变量以更受限制的不确定性(由历史限定)向前推送匹配质量分析)在不确定性建模下设置预测阶段。本文提出了一种创新历史匹配方法的应用,提供了所有项目利益相关者,共同了解历史匹配中的危急和非批判性的不确定性(静态和动态),因为向前推进的预测在不确定性下运行。

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