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An intelligent multi-fidelity surrogate-assisted multi-objective reservoir production optimization method based on transfer stacking

机译:一种基于转移堆叠的智能多保真替代辅助多目标油藏生产优化方法

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摘要

Abstract Recently, many researchers have focused on reservoir production optimization because it is one of the most essential processes in closed-loop reservoir management. Surrogate-assisted production optimization in particular has received a lot of research attention. This technique applies a simple yet vigorous approximation model to substitute expensive numerical simulation runs. However, almost all the existing methods independently use a single approximation model and neglect the potential synergies between these models. In order to make full use of the potential synergies of these existing approximation models, a novel multi-fidelity (MF) surrogate-assisted multi-objective production optimization (MOPO) method based on transfer stacking (MFTS-MOPO) is proposed. In the MFTS-MOPO method, the radial basis function network and support vector regression surrogate models are applied to approximate the high-fidelity (HF) model as the two additional low-fidelity (LF) models. Then a multi-fidelity surrogate model is adopted to evaluate objectives during the optimization process by transferring the two additional and streamline low-fidelity models to the computationally expensive high-fidelity model. Furthermore, two sampling infill strategies are applied to efficiently improve the quality of the multi-fidelity surrogate model. The uniqueness of the proposed MFTS-MOPO method is that the transfer stacking technique is employed to efficiently use the information from different fidelity models to establish the MF surrogate model and the infill sampling strategy used to improve its performance. In addition, three benchmark problems and two reservoirs with different scales were applied to illustrate the effectiveness and accuracy of the MFTS-MOPO method. It was found that the MFTS-MOPO method had superior performance in convergence and diversity than other conventional methods.
机译:摘要 近年来,油气藏生产优化是油气藏闭环管理中最重要的过程之一,因此引起了许多研究者的关注。特别是替代辅助生产优化受到了大量研究的关注。该技术应用简单而有力的近似模型来替代昂贵的数值模拟运行。然而,几乎所有现有的方法都独立地使用单一的近似模型,而忽略了这些模型之间的潜在协同作用。为了充分利用现有近似模型的潜在协同作用,该文提出一种基于传递堆叠的多保真度(MF)替代辅助多目标生产优化(MOPO)方法(MFTS-MOPO)。在MFTS-MOPO方法中,应用径向基函数网络和支持向量回归代理模型来近似高保真(HF)模型作为两个附加的低保真(LF)模型。然后,采用多保真代理模型,通过将两个附加的简化低保真模型转移到计算成本高昂的高保真模型中,在优化过程中评估目标。此外,还应用了两种采样填充策略来有效提高多保真代理模型的质量。所提MFTS-MOPO方法的独特之处在于,采用转移堆叠技术,有效地利用不同保真度模型的信息建立MF代理模型,并采用填充采样策略来提高其性能。此外,还应用了3个基准问题和2个不同尺度的储层来说明MFTS-MOPO方法的有效性和准确性。结果表明,MFTS-MOPO方法在收敛性和多样性方面优于其他常规方法。

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