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An Iterative Ensemble Kalman Filter for Data Assimilation

机译:用于数据同化的迭代集成卡尔曼滤波器

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The ensemble Kalman filter (EnKF) is a subject of intensive investigation for use as a reservoir management tool. For strongly nonlinear problems, however, EnKF can fail to achieve an acceptable data match at certain times in the assimilation process. Here, we provide iterative EnKF procedures to remedy this deficiency and explore the validity of these iterative methods compared to standard EnKF by considering two examples, one of which is pertains to a simple problem where the posterior probability density function has two modes. In both examples, we are able to obtain better data matches using iterative methods than with standard EnKF. In Appendix A, we enumerate the assumptions that must hold in order to show that EnKF provides a correct sampling of the probability distribution for the random variables. This derivation calls into question the common derivation in which one adds the data to the original combined state vector of model parameters and dynamical variables. In fact, it appears that there is no assurance that this trick for turning a nonlinear problem into a linear problem results in a correct sampling of the pdf one wishes to sample. However, we show that augmenting the state vector with the data results in a correct procedure for sampling the pdf if at every data assimilation step, the predicted data vector is a linear function of the combined (unaugmented) state vector and the average predicted data vector is equal to the predicted data evaluated at the average of the predicted combined state vector. Without these assumptions, we know of no way to show EnKF samples correctly. For completeness, in Appendix C, we show that each ensemble member of model parameters obtained at each step of EnKF is a linear combination of the initialensemble, which emphasizes the importance of obtaining suu000eciently large initial ensemble.
机译:集成卡尔曼滤波器(EnKF)是用作油藏管理工具的深入研究的主题。但是,对于强非线性问题,EnKF在同化过程中的某些时候可能无法获得可接受的数据匹配。在这里,我们提供了迭代EnKF程序来弥补这一缺陷,并通过考虑两个示例来探讨这些迭代方法与标准EnKF相比的有效性,其中一个示例与一个简单问题有关,后验概率密度函数具有两种模式。在这两个示例中,与标准EnKF相比,使用迭代方法能够获得更好的数据匹配。在附录A中,我们列举了必须成立的假设,以表明EnKF为随机变量提供了概率分布的正确采样。这种推导使人们对通用推导产生疑问,在通用推导中,将数据添加到模型参数和动态变量的原始组合状态向量中。实际上,似乎无法保证这种将非线性问题转化为线性问题的技巧会导致对希望采样的pdf进行正确采样。但是,我们显示,如果在每个数据同化步骤中,预测的数据矢量是组合(未增强)状态矢量和平均预测数据矢量的线性函数,则用数据增强状态矢量会导致对pdf采样的正确过程等于在预测组合状态向量的平均值处评估的预测数据。没有这些假设,我们就无法正确显示EnKF样本。为了完整起见,在附录C中,我们显示了在EnKF的每个步骤中获得的模型参数的每个集合成员都是初始集合的线性组合,这强调了获得足够大的初始集合的重要性。

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