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Generation of low-order reservoir models using Krylov-enhanced proper orthogonal decomposition method

机译:使用Krylov增强的适当正交分解方法生成低阶储层模型

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Reservoir simulation of realistic reservoir can be computationally demanding because of the large number of system unknowns. Model order reduction (MOR) technique represents a promising approach for accelerating the simulations. In this work, we focus on the application of a MOR technique called Krylov-enhanced proper orthogonal decomposition (KPOD), which combines the moment-matching property of Arnoldi with data generalization ability of proper orthogonal decomposition (POD) to alleviate POD's dependence on the choice of snapshots and the particular input conditions. We apply KPOD and POD methods for a two-phase (oil–water) reservoir model which is solved by semi-implicit Euler discretization and consider two different scenarios to evaluate the predictive capability of POD and KPOD methods. The example demonstrates that even though the difference of inputs of testing and training process is larger, the results of KPOD are in close agreement with the full-order simulation, while the accuracy of POD becomes very poor. And because the number of base vector for KPOD is less, the KPOD is able to approximately reduce the simulation time by 3 times compared with the full-order reservoir model. The KPOD method outperforms POD method in computational efficiency and accuracy.
机译:由于大量的系统未知数,对实际油藏的油藏模拟可能需要进行计算。模型阶数减少(MOR)技术代表了加速仿真的一种有前途的方法。在这项工作中,我们专注于一种称为Krylov增强的固有正交分解(KPOD)的MOR技术的应用,该技术将Arnoldi的矩匹配特性与固有正交分解(POD)的数据泛化能力相结合,以减轻POD对数据的依赖。快照的选择和特定的输入条件。我们将KPOD和POD方法应用于两相(油水)油藏模型,该模型通过半隐式Euler离散化求解,并考虑了两种不同的情况来评估POD和KPOD方法的预测能力。实例表明,尽管测试和训练过程的输入差异较大,但KPOD的结果与全阶仿真却非常接近,而POD的准确性却很差。而且,由于KPOD的基本向量数量较少,因此与全序储层模型相比,KPOD能够将模拟时间大约减少3倍。在计算效率和准确性上,KPOD方法优于POD方法。

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