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Compressed History Matching: Exploiting Transform-Domain Sparsity for Regularization of Nonlinear Dynamic Data Integration Problems

机译:压缩历史记录匹配:利用变换域稀疏性对非线性动态数据集成问题进行正则化

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In this paper, we present a new approach for estimating spatially-distributed reservoir properties from scattered nonlinear dynamic well measurements by promoting sparsity in an appropriate transform domain where the unknown properties are believed to have a sparse approximation. The method is inspired by recent advances in sparse signal reconstruction that is formalized under the celebrated compressed sensing paradigm. Here, we use a truncated low-frequency discrete cosine transform (DCT) is redundant to approximate the spatial parameters with a sparse set of coefficients that are identified and estimated using available observations while imposing sparsity on the solution. The intrinsic continuity in geological features lends itself to sparse representations using selected low frequency DCT basis elements. By recasting the inversion in the DCT domain, the problem is transformed into identification of significant basis elements and estimation of the values of their corresponding coefficients. To find these significant DCT coefficients, a relatively large number of DCT basis vectors (without any preferred orientation) are initially included in the approximation. Available measurements are combined with a sparsity-promoting penalty on the DCT coefficients to identify coefficients with significant contribution and eliminate the insignificant ones. Specifically, minimization of a least-squares objective function augmented by an l (1)-norm of DCT coefficients is used to implement this scheme. The sparsity regularization approach using the l (1)-norm minimization leads to a better-posed inverse problem that improves the non-uniqueness of the history matching solutions and promotes solutions that are, according to the prior belief, sparse in the transform domain. The approach is related to basis pursuit (BP) and least absolute selection and shrinkage operator (LASSO) methods, and it extends the application of compressed sensing to inverse modeling with nonlinear dynamic observations. While the method appears to be generally applicable for solving dynamic inverse problems involving spatially-distributed parameters with sparse representation in any linear complementary basis, in this paper its suitability is demonstrated using low frequency DCT basis and synthetic waterflooding experiments.
机译:在本文中,我们提出了一种新方法,可通过在适当的变换域中促进稀疏性来从分散的非线性动力井测量中估算空间分布的油藏属性,在该变换域中,未知属性被认为具有稀疏近似性。该方法的灵感来自稀疏信号重建的最新进展,该进展在著名的压缩传感范式下正式化。在这里,我们使用截断的低频离散余弦变换(DCT)来冗余地使用稀疏系数集来近似空间参数,这些稀疏系数是使用可用观测值进行识别和估计的,同时将稀疏性强加于解决方案上。地质特征的固有连续性使其适合使用选定的低频DCT基础元素进行稀疏表示。通过在DCT域中重铸反演,该问题将转化为有效基础元素的识别和其相应系数值的估计。为了找到这些重要的DCT系数,近似值中首先包含了相对大量的DCT基矢量(没有任何首选的方向)。可用的测量值与DCT系数的稀疏性提升惩罚相结合,以识别出具有重大贡献的系数,并消除那些无关紧要的系数。具体地,最小化由DCT系数的l(1)范数增强的最小二乘方目标函数的最小化用于实现该方案。使用l(1)范数最小化的稀疏正则化方法会导致一个更好的逆问题,该问题会改善历史匹配解决方案的非唯一性,并根据先验的信念促进解决方案在变换域中的稀疏性。该方法与基础追踪(BP)和最小绝对选择和收缩算子(LASSO)方法有关,并且将压缩传感的应用扩展到具有非线性动态观测的逆建模。虽然该方法似乎普遍适用于解决涉及线性分布基础上稀疏表示的空间分布参数的动态反问题,但在本文中,使用低频DCT基础和合成注水实验证明了该方法的适用性。

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