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Facies estimation through data assimilation and structure parameterization

机译:通过数据同化和结构参数化估算相

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Data assimilation in a reservoir with facies description using the ensemble Kalman filter (EnKF) is challenging. An important reason is that probability density functions for pixel-based representations of facies fields seldom follow the unimodal Gaussian assumption underlying traditional EnKF implementations. Different approaches for identification of facies fields, aiming to overcome this challenge, have been proposed within the EnKF framework. Level set (LS) representations of the facies field have been reported to alleviate the problems of multimodality. Several authors have, however, pointed out that the most commonly applied LS representation suffers from topolog-ical constraints that can create difficulties in an estimation setting. An alternative LS representation, that overcomes these topological constraints, leads to instabilities in the assimilated ensemble members. To overcome topological constraints, the recently proposed hierarchical LS representation is applied in an estimation setting for the first time in this paper. To improve stability and to alleviate challenges associated with model nonlinearities, we apply regulariza-tion by reduced representation of the LS functions and adjustable smoothing of the LS representation. The resolution of the reduced LS representation is selected based on the variability of the initial ensemble, aiming at preserving enough flexibility to disclose unexpected features. 2D and 3D estimation results demonstrate that the hierarchical LS representation does avoid topological constraints and that instabilities are avoided. The results suggest that the method is capable of handling estimation of facies fields while preserving geological plausibility.
机译:使用集合卡尔曼滤波器(EnKF)进行储集相描述的储层数据同化是具有挑战性的。一个重要原因是,基于像素的相域表示的概率密度函数很少遵循传统EnKF实现的单峰高斯假设。在EnKF框架内,已经提出了多种识别相场的方法,旨在克服这一挑战。已经报道了相领域的水平集(LS)表示来减轻多峰性的问题。但是,有几位作者指出,最常用的LS表示受到拓扑约束的困扰,这可能会在估计设置中造成困难。克服这些拓扑约束的替代LS表示形式会导致被吸收的集成成员不稳定。为了克服拓扑约束,本文首次将最近提出的分层LS表示应用于估计设置中。为了提高稳定性并减轻与模型非线性相关的挑战,我们通过减少LS函数的表示和LS表示的可调平滑来应用正则化。减少的LS表示的分辨率是基于初始集合的可变性来选择的,目的是保留足够的灵活性以公开意外的功能。 2D和3D估计结果表明,分层LS表示确实避免了拓扑约束,并且避免了不稳定性。结果表明,该方法能够在保持地质合理性的同时处理相场估计。

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