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首页> 外文期刊>Advances in Water Resources >Upscaling capillary pressure curves for numerical modeling of gravity-capillary driven flow
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Upscaling capillary pressure curves for numerical modeling of gravity-capillary driven flow

机译:重力 - 毛细管驱动流量数值建模的升高毛细管压力曲线

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摘要

This work investigates upscaling of capillary pressure curves for modeling gravity segregation under the influence of capillary heterogeneity. We consider two flowing phases driven by gravity and capillary forces and seek the saturation spatial and temporal variation until equilibrium is reached. Existing upscaling methods, found in the literature, are applied to a number of cases. Resulting saturation solutions are compared to fine-scale simulations and the different methods are evaluated, showing in general that the popular capillary limit method produces the best results. However, a large number of cases are found to have significant errors. This leads to the conclusion that all existing methods are often inadequate and developing new methods should be considered. We therefore propose a new optimization-based upscaling method. Using this approach it is shown that capillary pressure can be upscaled to Brooks-Corey type functions and produce accurate upscaled simulations matching the fine-scale solutions. Optimization upscaling is computationally demanding and requires the fine-scale simulations for minimizing an objective function. However, it is shown that the upscaled curves can be applied to different permeability realizations to calculate ensemble average saturation solutions.
机译:该工作调查毛细管压力曲线的升高,以在毛细管异质性的影响下建模重力偏析。我们考虑由重力和毛细力驱动的两个流动阶段,并寻求饱和空间和时间变化,直到达到平衡。在文献中发现的现有Upscaling方法应用于许多情况。将产生的饱和溶液与微尺度模拟进行比较,并评估不同的方法,一般表示流行的毛细管限制方法产生最佳结果。但是,发现大量情况有很大的错误。这导致得出结论,所有现有方法通常不充分,应考虑开发新方法。因此,我们提出了一种新的基于优化的Upcaling方法。使用这种方法,表明毛细管压力可以升高到Brooks-Corey型功能,并产生符合细尺解决方案的准确上升模拟。优化Upscaling正在计算上要求苛刻,并且需要微尺寸模拟以最小化目标函数。然而,结果表明,可以应用于不同的渗透性实现以计算整体平均饱和解决方案的不同渗透性。

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