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The Ensemble Kalman Filter for Continuous Updating of Reservoir Simulation Models

机译:集成卡尔曼滤波器用于油藏模拟模型的连续更新

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This paper reports the use of ensemble Kalman filter (EnKF) for automatic history matching. EnKF is a Monte Carlo method, in which an ensemble of reservoir state variables are generated and kept up-to-date as data are assimilated sequentially. The uncertainty of reservoir state variables is estimated from the ensemble at any time step. Two synthetic problems are selected to investigate two primary concerns with the application of the EnKF. The first concern is whether it is possible to use a Kalman filter to make corrections to state variables in a problem for which the covariance matrix almost certainly provides a poor representation of the distribution of variables. It is tested with a one-dimensional, two-phase waterflood problem. The water saturation takes large values behind the flood front, and small values ahead of the front. The saturation distribution is bimodal and is not well modeled by the mean and variance. The second concern is the representation of the covariance via a relatively small ensemble of state vectors may be inadequate. It is tested by a two-dimensional, two-phase problem. The number of ensemble members is kept the same as for the one-dimensional problem. Hence the number of ensemble members used to create the covariance matrix is far less than the number of state variables. We conclude that EnKF can provide satisfactory history matching results while requiring less computation work than traditional history matching methods.
机译:本文报告了集成卡尔曼滤波器(EnKF)在自动历史匹配中的使用。 EnKF是一种蒙特卡洛方法,其中生成储集层状态变量的集合,并在顺序吸收数据时保持最新状态。储层状态变量的不确定性可在任何时间步长从集合估计。选择了两个综合问题来研究EnKF的应用中的两个主要问题。首先要考虑的是,在协方差矩阵几乎可以肯定地不能很好地表示变量分布的问题中,是否可以使用卡尔曼滤波器对状态变量进行校正。已针对一维两相注水问题进行了测试。水饱和度在洪水前线后面取大值,而在洪水前线取小值。饱和度分布是双峰的,不能通过均值和方差很好地建模。第二个问题是通过状态向量的相对较小的集合表示协方差可能是不够的。它通过二维,两阶段问题进行测试。合奏成员的数量保持与一维问题相同。因此,用于创建协方差矩阵的合奏成员的数量远远少于状态变量的数量。我们得出结论,与传统的历史匹配方法相比,EnKF可以提供令人满意的历史匹配结果,同时所需的计算工作更少。

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