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A Simultaneous Bayesian Estimation of Channelized Facies and Reservoir Properties under Prior Uncertainty

机译:先前不确定性下的信道化相和储层性能的同时贝叶斯估计

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In this work, a Bayesian data assimilation methodology for simultaneous estimation of channelized facies and petrophysical properties (e.g., permeability fields) is explored. Based on the work of Zhao et al. (2016a,b), common basis DCT is used for the parameterization of facies fields in order to achieve model feature extraction and reduce the inverse problem dimensionality. An iterative ensemble smoother method along with a post-processing technique are employed to simultaneously update the parameterized facies model, i.e., DCT coefficients, and the permeability values within each facies in order to match the reservoir production data. Two synthetic examples are designed and investigated to evaluate the performance of the proposed history matching workflow under different types of prior uncertainty. One example is a 2D three-facies reservoir with sinuous channels and the other example involves a 3D three-facies five- layer reservoir with two different geological zones. The computational results indicate that the posterior realizations calibrated by the proposed workflow are able to correctly estimate the key geological features and permeability distributions of the true model with good data match results. It is known that the reliability of prior models is essential in solving dynamic inverse problems for subsurface characterization. However, the prior realizations are usually obtained using data from various sources with different level of uncertainty which results in great challenges in the history matching process. Thus in this paper, we investigate several particular cases regarding different prior uncertainties which include fluvial channels conditioned to uncertain hard data information or generated by diverse geological continuity models. The proposed methodology presents desirable robustness against these prior uncertainties that occur frequently in the practical applications.
机译:在这项工作中,探讨了贝叶斯数据同化方法,用于同时估计通道化相和岩石物理特性(例如,渗透性场)。基于Zhao等人的工作。 (2016A,B),常见的基础DCT用于相片字段的参数化,以实现模型特征提取并减少逆问题的维度。使用迭代集合更畅通的方法以及后处理技术来同时更新参数化相模型,即DCT系数,以及每个相机内的渗透率值,以符合储库生产数据。设计并调查了两个合成实例,以评估所提出的历史匹配工作流程的性能,以根据不同类型的现有不确定性。一个例子是具有振动通道的2D三面储层,另一个例子涉及具有两个不同地质区域的3D三面五层储存器。计算结果表明,所提出的工作流程所校准的后部实现能够正确估计具有良好数据匹配结果的真实模型的关键地质特征和渗透性分布。众所周知,先前模型的可靠性对于解决地下表征的动态逆问题至关重要。然而,通常使用来自各种来源的数据来获得先前的实现,这些来源具有不同程度的不确定性,这导致历史匹配过程中的巨大挑战。因此,在本文中,我们调查了一些关于不同事先不确定性的特定情况,包括河流通道调节到不确定的硬数据信息或由不同的地质连续性模型产生。所提出的方法论在实际应用中经常发生的这些现有不确定性呈现所需的稳健性。

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