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Statistical assignment of upscaled flow functions for an ensemble of geological models

机译:地质模型整体的高级流量函数的统计分配

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Upscaled flow functions are often needed to account for the effects of fine-scale permeability heterogeneity in coarse-scale simulation models. We present procedures in which the required coarse-scale flow functions are statistically assigned to an ensemble of upscaled geological models. This can be viewed as an extension and further development of a recently developed ensemble level upscaling (EnLU) approach. The method aims to efficiently generate coarse-scale flow models capable of reproducing the ensemble statistics (e.g., cumulative distribution function) of fine-scale flow predictions for multiple reservoir models. The most expensive part of standard coarsening procedures is typically the generation of upscaled two-phase flow functions (e.g., relative permeabilities). EnLU provides a means for efficiently generating these up-scaled functions using stochastic simulation. This involves the use of coarse-block attributes that are both fast to compute and correlate closely with the upscaled two-phase functions. In this paper, improved attributes for use in EnLU, namely the coefficient of variation of the fine-scale single-phase velocity field (computed during computation of upscaled absolute permeability) and the integral range of the fine-scale permeability variogram, are identified. Geostatistical simulation methods, which account for spatial correlations of the statistically generated upscaled functions, are also applied. The overall methodology thus enables the efficient generation of coarse-scale flow models. The procedure is tested on 3D well-driven flow problems with different permeability distributions and variable fluid mobility ratios. EnLU is shown to capture the ensemble statistics of fine-scale flow results (water and oil flow rates as a function of time) with similar accuracy to full flow-based upscaling methods but with computational speedups of more than an order of magnitude.
机译:在粗尺度模拟模型中,经常需要使用放大的流量函数来考虑细尺度渗透率非均质性的影响。我们介绍了将所需的粗尺度流量函数统计地分配给一组放大的地质模型的程序。这可以看作是最近开发的集成级别升级(EnLU)方法的扩展和进一步的开发。该方法旨在有效地生成能够再现用于多个储层模型的精细规模流预测的整体统计量(例如,累积分布函数)的粗尺度流模型。标准粗化程序中最昂贵的部分通常是放大的两相流函数的生成(例如,相对磁导率)。 EnLU提供了一种使用随机仿真有效生成这些放大函数的方法。这涉及到粗块属性的使用,这些属性既可以快速计算,又可以与提升的两相函数紧密相关。在本文中,确定了在EnLU中使用的改进属性,即细尺度单相速度场的变化系数(在放大的绝对渗透率的计算过程中计算)和细尺度渗透率变异函数的积分范围。还应用了地统计模拟方法,该方法考虑了统计生成的放大函数的空间相关性。因此,总体方法论使得能够有效地产生粗尺度流动模型。该程序针对具有不同渗透率分布和可变流体迁移率的3D井驱动流动问题进行了测试。 EnLU被显示为捕获精细流结果的整体统计信息(水和油的流速作为时间的函数),其精度与基于全流的放大方法相似,但计算速度提高了一个数量级。

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