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An iterative representer-based scheme for data inversion in reservoir modeling.

机译:基于迭代表示法的储层建模数据反演方案。

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摘要

With the recent development of smart-well technology, the reservoir community now faces the challenge of developing robust and efficient techniques for reservoir characterization by means of data inversion. Unfortunately, classical history-matching methodologies do not possess computational efficiency and robustness needed to assimilate data measured almost in real time. Therefore, the reservoir community has started to explore techniques previously applied in other disciplines. Such is the case of the representer method, a variational data assimilation technique that was first applied in physical oceanography.;The representer method is an efficient technique for solving linear inverse problems when a finite number of measurements are available. To the best of our knowledge, a general representer-based methodology for nonlinear inverse problems has not been fully developed. We fill this gap by presenting a novel implementation of the representer method applied to the nonlinear inverse problem of identifying petrophysical properties in reservoir models. Given production data from wells and prior knowledge of the petrophysical properties, the goal of our formulation is to find improved parameters so that the reservoir model prediction fits the data within some error given a priori.;We first define an abstract framework for parameter identification in nonlinear reservoir models. Then, we propose an iterative representer-based scheme (IRBS) to find a solution of the inverse problem. Sufficient conditions for convergence of the proposed algorithm are established. We apply the IRBS to the estimation of absolute permeability in single-phase Darcy flow through porous media. Additionally, we study an extension of the IRBS with Karhunen-Loeve (IRBS-KL) expansions to address the identification of petrophysical properties subject to linear geological constraints. The IRBS-KL approach is compared with a standard variational technique for history matching.;Furthermore, we apply the IRBS-KL to the identification of porosity, absolute and relative permeabilities given production data from an oil-water reservoir. The general derivation of the IRBS-KL is provided for a reservoir whose dynamics are modeled by slightly compressible immiscible displacement of two-phase flow through porous media. Finally, we present an ad-hoc sequential implementation of the IRBS-KL and compare its performance with the ensemble Kalman filter.
机译:随着智能井技术的最新发展,储层社区现在面临着通过数据反演开发鲁棒而有效的储层表征技术的挑战。不幸的是,经典的历史匹配方法不具备几乎实时吸收同化数据所需的计算效率和鲁棒性。因此,水库界已经开始探索先前在其他学科中应用的技术。代表方法就是这种情况,变异方法同化技术首先应用于物理海洋学中。代表方法是在有限数量的测量可用时解决线性反问题的有效技术。据我们所知,尚未完全开发出基于代表物的非线性逆问题的方法。我们通过提出一种代表方法的新实现方式填补了这一空白,该方法适用于在油藏模型中识别岩石物性的非线性反问题。给定井的生产数据和岩石物理特性的先验知识,我们的配方目标是找到改进的参数,以便储层模型预测能够在给定先验误差的情况下将数据拟合到一定的范围内。非线性油藏模型。然后,我们提出了一个基于迭代代表的方案(IRBS),以找到反问题的解决方案。建立了该算法收敛的充分条件。我们将IRBS应用于单相达西流经多孔介质的绝对渗透率的估算。此外,我们研究了Karhunen-Loeve(IRBS-KL)扩展对IRBS的扩展,以解决受线性地质约束的岩石物性的识别问题。 IRBS-KL方法与用于历史匹配的标准变分技术进行了比较。此外,我们根据油水储层的生产数据,将IRBS-KL应用于孔隙度,绝对渗透率和相对渗透率的识别。 IRBS-KL的一般推导是为储层提供的,该储层的动力学模型是通过两相流通过多孔介质的略微可压缩的不混溶位移来模拟的。最后,我们提出IRBS-KL的临时顺序实现,并将其性能与集成卡尔曼滤波器进行比较。

著录项

  • 作者单位

    The University of Texas at Austin.;

  • 授予单位 The University of Texas at Austin.;
  • 学科 Mathematics.;Engineering Petroleum.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 133 p.
  • 总页数 133
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 数学;石油、天然气工业;
  • 关键词

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