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Conditional Statistical Moment Equations for Dynamic Data Integration in Heterogeneous Reservoirs

机译:非均质油藏动态数据集成的条件统计矩方程

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An inversion method for the integration of dynamic (pressure) data directly into statistical moment equations (SMEs) is presented. The method is demonstrated for incompressible flow in heterogeneous reservoirs. In addition to information about the mean, variance, and correlation structure of the permeability, few permeability measurements are assumed available. Moreover, few measurements of the dependent variable are available. The first two statistical moments of the dependent variable (pressure) are conditioned on all available information directly. An iterative inversion scheme is used to integrate the pressure data into the conditional statistical moment equations (CSMEs). That is, the available information is used to condition, or improve the estimates of, the first two moments of permeability, pressure, and velocity directly. This is different from Monte Carlo (MC) -based geostatistical inversion techniques, where conditioning on dynamic data is performed for one realization of the permeability field at a time. In the MC approach, estimates of the prediction uncertainty are obtained from statistical post-processing of a large number of inversions, one per realization. Several examples of flow in heterogeneous domains in a quarter-five-spot setting are used to demonstrate the CSME-based method. We found that as the number of pressure measurements increases, the conditional mean pressure becomes more spatially variable, while the conditional pressure variance gets smaller. Iteration of the CSME inversion loop is necessary only when the number of pressure measurements is large. Use of the CSME simulator to assess the value of information in terms of its impact on prediction uncertainty is also presented.
机译:提出了一种将动态(压力)数据直接集成到统计矩方程(SME)中的反演方法。该方法用于非均质油藏中的不可压缩流动。除了有关渗透率的均值,方差和相关结构的信息外,假设很少有渗透率测量可用。而且,因变量的测量很少。因变量(压力)的前两个统计矩直接以所有可用信息为条件。迭代反演方案用于将压力数据集成到条件统计矩方程(CSME)中。即,可用信息直接用于调节或改善渗透率,压力和速度的前两个矩。这与基于蒙特卡洛(MC)的地统计反演技术不同,后者基于动态数据的条件是一次实现渗透率场的一种实现。在MC方法中,预测不确定性的估计是从大量反演的统计后处理中获得的,每个实现一次。在四分之五点设置中,异质域中流动的几个示例用于演示基于CSME的方法。我们发现,随着压力测量次数的增加,条件平均压力在空间上变得更加可变,而条件压力方差变小。仅当压力测量的数量很大时,才需要对CSME反转回路进行迭代。还介绍了使用CSME模拟器评估信息价值对预测不确定性的影响。

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