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History Matching with a Multiscale Parameterization Based on Grid Connectivity and Adaptive to Prior Information

机译:历史匹配与多尺度参数化的基于网格连接和自适应到先前信息

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We introduce a novel reservoir parameterization approach to mitigate the challenges associated with field-scale history matching. In this approach, the reservoir property field is mapped to and updated in a low-dimensional transform domain using a linear transformation basis. The transformation basis vectors are the eigenvectors of a Laplacian matrix that is constructed using grid connectivity information and the main features in a given prior model. Because the grid connectivity information is computed only within a small multi-point stencil, the Laplacian is always sparse and is amenable to efficient decomposition. The resulting basis functions are ordered from large to small scale and include prior-specific spatial features. Therefore, the variability in reservoir property distribution can be effectively represented by projecting the property field onto subspaces spanned by an increasing number of leading basis vectors, each incorporating additional heterogeneity features into the model description. This property lends itself to a multiscale history matching algorithm where basis elements are sequentially included to refine the heterogeneity characterization to a level of complexity supported by the resolution of data. While the method can benefit from prior information, in the extreme case where reliable prior knowledge is not available the transformation reduces to a discrete Fourier expansion with model-independent parameterization properties. We present the derivation and theoretical justification of the proposed method and review its important properties for reservoir parameterization including efficient one-time construction of the basis prior to calibration, applicability to any grid geometry and strong compression performance. The multiscale history matching algorithm begins by updating the prior reservoir model using a parameterized multiplier field that is superimposed onto the grid and assigned an initial value of unity at each cell. The multiplier is sequentially refined from the coarse to finer scales during minimization of production data misfit. This method permits selective updating of heterogeneity at locations and levels of detail sensitive to the available data, otherwise leaving the prior model unchanged as desired. We successfully apply the parameterization approach to history match several reservoir models, including a field case, using an adaptive multiscale algorithm.
机译:我们介绍了一种新的水库参数化方法,以减轻与现场历史匹配相关的挑战。在这种方法中,储存器属性字段使用线性变换基础映射到低维变换域中并更新。转换基载体是拉普拉斯矩阵的特征向量,其使用网格连接信息和给定的先前模型中的主要特征构成。由于仅在一个小多点模板内计算了网格连接信息,因此Laplacian总是稀疏,并且可以高效地分解。由此产生的基函数从大到小规模排序并包括现有特定的空间特征。因此,通过将属性场突出到通过越来越多的领先基础向量跨越的子空间中,可以有效地表示储层性能分布的可变性,每个领先的基础向量跨越额外的异质性特征将附加的异质性特征结合到模型描述中。该属性将其自身提供给多尺度历史匹配算法,其中依次包括基因元件以将异质性表征精确到通过数据分辨率支持的复杂程度。虽然该方法可以从先前的信息中受益,但在不可用的最终知识不可用的极端情况下,转换减少到具有模型无关的参数化属性的离散傅里叶扩展。我们介绍了所提出的方法的推导和理论典范,并审查其对储层参数化的重要属性,包括在校准之前的基础上的有效一次性构建,适用于任何网格几何和强大的压缩性能。多尺度历史匹配算法通过使用叠加在网格上的参数化乘法器字段更新先前的储库模型并在每个小区处分配初始值。在最小化生产数据错误装备期间,乘数从粗略尺寸顺序精细化精细化。该方法允许选择性更新在位置和对可用数据敏感的细节水平的异质性,否则根据需要将先前的模型保持不变。我们成功应用参数化方法与历史匹配匹配多个储库模型,包括现场案例,使用自适应多尺度算法。

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