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A novel localization scheme for scalar uncertainties in ensemble-based data assimilation methods

机译:一种基于集成的数据同化方法中标量不确定性的新定位方案

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摘要

History matching,also known as data assimilation,is an inverse problem with multiple solutions responsible for generating more reliable models for use in decision-making processes.An iterative ensemble-based method(Ensemble Smoother with Multiple Data Assimilation-ES-MDA)has been used to improve the solution of history-matching processes with a technique called distance-dependent localization.In conjunction,ES-MDA and localization can obtain consistent petrophysical images(permeability and porosity).However,the distance-dependent localization technique is not used to update scalar uncertainties,such as relative permeability;therefore,the variability for these properties is excessively reduced,potentially excluding plausible answers.This work presents three approaches to update scalar parameters while increasing the final variability of these uncertainties to better scan the search space.The three approaches that were developed and compared using a benchmark case are: binary correlation coefficient(BCC),based on correlation calculated by ES-MDA through cross-covariance matrix C_(MD)~f(BCC-C_(MD));BCC,based on a correlation coefficient between the objective functions and scalar uncertainties(R)(BCC-R);and full correlation coefficient(FCC).We used the work of Soares et al.(J Pet Sci Eng 169:110-125,2018)as a base case to compare the approaches because although it showed good matches with geologically consistent petrophysical images,it generated an excessive reduction in the scalar parameters.BCC-C_(MD)presented similar results to the base case,excessively reducing the variability of the scalar uncertainties.BCC-R increased the variability in the scalar parameters,especially for BCC with a higher threshold value.Finally,FCC found many more potential answers in the search space without impairing data matches and production forecast quality.
机译:历史匹配,也称为数据同化,是一个逆向问题,具有多个解决方案,负责生成更可靠的模型以用于决策过程。基于迭代集成的方法(Ensemble Smoother with Multiple Data Assimilation-ES-MDA)已用于改进历史匹配过程的求解,该技术称为距离相关定位。结合ES-MDA和定位可以获得一致的岩石物理图像(磁导率和孔隙率)。然而,距离相关定位技术并未用于更新相对磁导率等标量不确定性;因此,这些属性的可变性被过度降低,可能排除了合理的答案。这项工作提出了三种更新标量参数的方法,同时增加了这些不确定性的最终可变性,以更好地扫描搜索空间。采用基准案例开发和比较的三种方法分别是:基于ES-MDA通过交叉协方差矩阵C_(MD)~f(BCC-C_(MD))计算的相关性的二元相关系数(BCC);基于目标函数与标量不确定度(R)(BCC-R)相关系数的BCC;和全相关系数(FCC)。我们使用了Soares等人的工作。(J Pet Sci Eng 169:110-125,2018)作为比较方法的基本情况,因为尽管它显示出与地质一致的岩石物理图像的良好匹配,但它产生了标量参数的过度降低。BCC-C_(MD)呈现出与基本情况相似的结果,过度降低了标量不确定性的变异性。BCC-R增加了标量参数的变异性,特别是对于阈值较高的BCC。最后,FCC在不影响数据匹配和生产预测质量的情况下,在搜索空间中找到了更多潜在的答案。

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