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Automatic history matching in Bayesian framework for field-scale applications.

机译:贝叶斯框架中用于领域规模应用程序的自动历史记录匹配。

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摘要

Conditioning geologic models to production data and assessment of uncertainty is generally done in a Bayesian framework. The current Bayesian approach suffers from three major limitations that make it impractical for field-scale applications. These are: first, the CPU time scaling behavior of the Bayesian inverse problem using the modified Gauss-Newton algorithm with full covariance as regularization behaves quadratically with increasing model size; second, the sensitivity calculation using finite difference as the forward model depends upon the number of model parameters or the number of data points; and third, the high CPU time and memory required for covariance matrix calculation. Different attempts were used to alleviate the third limitation by using analytically-derived stencil, but these are limited to the exponential models only.;We propose a fast and robust adaptation of the Bayesian formulation for inverse modeling that overcomes many of the current limitations. First, we use a commercial finite difference simulator, ECLIPSE, as a forward model, which is general and can account for complex physical behavior that dominates most field applications. Second, the production data misfit is represented by a single generalized travel time misfit per well, thus effectively reducing the number of data points into one per well and ensuring the matching of the entire production history. Third, we use both the adjoint method and streamline-based sensitivity method for sensitivity calculations. The adjoint method depends on the number of wells integrated, and generally is of an order of magnitude less than the number of data points or the model parameters. The streamline method is more efficient and faster as it requires only one simulation run per iteration regardless of the number of model parameters or the data points. Fourth, for solving the inverse problem, we utilize an iterative sparse matrix solver, LSQR, along with an approximation of the square root of the inverse of the covariance calculated using a numerically-derived stencil, which is broadly applicable to a wide class of covariance models.;Our proposed approach is computationally efficient and, more importantly, the CPU time scales linearly with respect to model size. This makes automatic history matching and uncertainty assessment using a Bayesian framework more feasible for large-scale applications. We demonstrate the power and utility of our approach using synthetic cases and a field example. The field example is from Goldsmith San Andres Unit in West Texas, where we matched 20 years of production history and generated multiple realizations using the Randomized Maximum Likelihood method for uncertainty assessment. Both the adjoint method and the streamline-based sensitivity method are used to illustrate the broad applicability of our approach.
机译:通常在贝叶斯框架中对生产数据进行地质模型调整和不确定性评估。当前的贝叶斯方法遭受三个主要限制,这使其不适用于现场规模的应用。它们是:首先,使用修正的Gauss-Newton算法并具有完全协方差的贝叶斯逆问题的CPU时间缩放行为,因为正则化行为随模型大小的增加呈二次方行为;其次,使用有限差分作为正向模型的灵敏度计算取决于模型参数的数量或数据点的数量。第三,协方差矩阵计算所需的大量CPU时间和内存。通过使用分析得出的模板,尝试了不同的尝试来缓解第三个限制,但是这些仅限于指数模型。我们提出了一种快速,可靠的贝叶斯公式用于逆模型的方法,克服了许多当前的限制。首先,我们使用商业有限差分模拟器ECLIPSE作为正向模型,该模型是通用的,可以解释大多数现场应用中占主导地位的复杂物理行为。其次,生产数据失配由每个井的单个广义行程时间失配表示,因此有效地将数据点的数量减少到每个井一个,并确保整个生产历史的匹配。第三,我们使用伴随方法和基于流线的灵敏度方法进行灵敏度计算。伴随方法取决于合并的井数,并且通常比数据点或模型参数的数目小一个数量级。流线型方法效率更高,速度更快,因为它每次迭代仅需要运行一次仿真,而不管模型参数或数据点的数量如何。第四,为解决反问题,我们使用了迭代稀疏矩阵求解器LSQR,以及使用数字衍生的模板计算的协方差逆的平方根的近似值,该方法广泛适用于广泛的协方差类我们提出的方法计算效率高,更重要的是,CPU时间相对于模型大小呈线性比例。这使得使用贝叶斯框架进行自动历史匹配和不确定性评估在大规模应用中更加可行。我们使用综合案例和现场示例演示了我们方法的强大功能和实用性。现场示例来自西得克萨斯州的Goldsmith San Andres单位,我们在这里匹配了20年的生产历史,并使用随机最大似然法进行了不确定性评估,并产生了多个实现。伴随方法和基于流线的灵敏度方法均用于说明我们方法的广泛适用性。

著录项

  • 作者单位

    Texas A&M University.;

  • 授予单位 Texas A&M University.;
  • 学科 Engineering Petroleum.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 178 p.
  • 总页数 178
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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