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Non-intrusive subdomain POD-TPWL for reservoir history matching

机译:非侵入性子域POD-TPWL,用于储层历史匹配

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This paper presents a non-intrusive subdomain POD-TPWL (SD POD-TPWL) for reservoir history matching through integrating domain decomposition (DD), proper orthogonal decomposition (POD), radial basis function (RBF) interpolation, and the trajectory piecewise linearization (TPWL). It is an efficient approach for model reduction and linearization of general non-linear time-dependent dynamical systems without accessing to the legacy source code. In the subdomain POD-TPWL algorithm, firstly, a sequence of snapshots over the entire computational domain is saved and then partitioned into subdomains. From the local sequence of snapshots over each subdomain, a number of local basis vectors is formed using POD, and then the RBF interpolation is used to estimate the derivative matrices for each subdomain. Finally, those derivative matrices are substituted into a POD-TPWL algorithm to form a reduced-order linear model in each subdomain. This reduced-order linear model makes the implementation of the adjoint easy and results in an efficient adjoint-based parameter estimation procedure. Comparisons with the classic finite-difference-based history matching show that our proposed subdomain POD-TPWL approach is obtaining comparable results. The number of full-order model simulations required is roughly 2-3 times the number of uncertain parameters. Using different background parameter realizations, our approach efficiently generates an ensemble of calibrated models without additional full-order model simulations.
机译:本文提出了一种非侵入性子域POD-TPWL(SD POD-TPWL),通过积分域分解(DD),固有正交分解(POD),径向基函数(RBF)插值和轨迹分段线性化来匹配储层历史( TPWL)。这是一种有效的方法,用于在不访问旧版源代码的情况下,对常规的非线性时间相关动力系统进行模型简化和线性化。在子域POD-TPWL算法中,首先,保存整个计算域中的一系列快照,然后将其划分为子域。根据每个子域上快照的局部序列,使用POD形成许多局部基向量,然后使用RBF插值估计每个子域的导数矩阵。最后,将那些导数矩阵代入POD-TPWL算法,以在每个子域中形成降阶线性模型。此降阶线性模型使伴随的实现变得容易,并导致了基于伴随的有效参数估计过程。与经典的基于有限差分的历史匹配的比较表明,我们提出的子域POD-TPWL方法正在获得可比的结果。所需的全阶模型仿真次数约为不确定参数数量的2-3倍。通过使用不同的背景参数实现,我们的方法可以有效地生成一组校准模型,而无需进行额外的全阶模型仿真。

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