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A parallel ensemble-based framework for reservoir history matching and uncertainty characterization

机译:基于并行集合的框架,用于储层历史匹配和不确定性表征

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摘要

We present a parallel framework for history matching and uncertainty characterization based on the Kalman filter update equation for the application of reservoir simulation. The main advantages of ensemble-based data assimilation methods are that they can handle large-scale numerical models with a high degree of nonlinearity and large amount of data, making them perfectly suited for coupling with a reservoir simulator. However, the sequential implementation is computationally expensive as the methods require relatively high number of reservoir simulation runs. Therefore, the main focus of this work is to develop a parallel data assimilation framework with minimum changes into the reservoir simulator source code. In this framework, multiple concurrent realizations are computed on several partitions of a parallel machine. These realizations are further subdivided among different processors, and communication is performed at data assimilation times. Although this parallel framework is general and can be used for different ensemble techniques, we discuss the methodology and compare results of two algorithms, the ensemble Kalman filter (EnKF) and the ensemble smoother (ES). Computational results show that the absolute runtime is greatly reduced using a parallel implementation versus a serial one. In particular, a parallel efficiency of about 35 % is obtained for the EnKF, and an efficiency of more than 50 % is obtained for the ES.
机译:我们提出了一个基于卡尔曼滤波更新方程的历史拟合和不确定性表征的并行框架,用于油藏模拟。基于集合的数据同化方法的主要优点是,它们可以处理具有高度非线性和大量数据的大规模数值模型,使其非常适合与储层模拟器耦合。然而,由于该方法需要相对大量的储层模拟运行,因此顺序实施在计算上是昂贵的。因此,这项工作的主要重点是开发一种对油藏模拟器源代码进行最少更改的并行数据同化框架。在此框架中,在并行计算机的多个分区上计算了多个并发实现。这些实现在不同的处理器之间进一步细分,并且在数据同化时间执行通信。尽管此并行框架是通用的并且可以用于不同的集成技术,但是我们讨论了该方法并比较了两个算法(集成卡尔曼滤波器(EnKF)和集成平滑器(ES))的结果。计算结果表明,与串行实现相比,并行实现大大减少了绝对运行时间。特别是,EnKF的并行效率约为35%,ES的并行效率高于50%。

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