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History Matching Channelized Reservoirs Using the Ensemble Kalman Filter

机译:历史匹配信道化水库使用集合卡尔曼滤波器

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Even though the ensemble Kalman filter (EnKF) is widely used, history matching reservoirs with facies description has proven to be a major challenge. A preferred technique for estimating large-scale facies fields within the petroleum industry is still missing. In this paper we present a new approach to this problem. Instead of applying the EnKF directly on facies realizations, the approach applies a transformation of facies fields to a specific level-set function, representing distances between facies types. This ensures better agreement with the EnKF Gaussianity assumptions, and the method always returns facies realizations with geological authenticity. The method also offers large flexibility in generating the initial ensemble, which can be done using any geostatistical tool. Further, no modifications of the standard EnKF equations are needed. The methodology is evaluated on two synthetic examples with increasing complexity. In both examples we consider reservoirs with channel structure. The results presented show that the updated models give large improvements in matching the measurements, and the uncertainty of the models is decreased. Further, recovery of the true petrophysical parameters is highly dependent on sufficient information in the measurements, but in one of the examples considered we are able to completely recover the true channel structure. Additional improvements in the quality of the updated facies fields are obtained by proper handling of the distances close to the reservoir boundaries, and conditioning on specific statistical measures to better preserve prior information about channel properties
机译:尽管集合卡尔曼滤波(集合卡尔曼滤波)被广泛使用,相描述历史拟合水库已被证明是一个重大的挑战。用于估计大规模的优选技术岩相的石油工业中的字段仍然缺少。在本文中,我们提出了一种新的方法解决这个问题。而不是直接对相的实现应用集合卡尔曼滤波的,这种方式也适用相领域的转型到一个特定的水平集函数,表示相类型之间的距离。与集合卡尔曼滤波高斯假设这确保更好的协议,该方法总是返回相变现地质真实性。该方法在生成初始集合,其可使用任何地质统计工具实现还提供了大的灵活性。此外,不需要标准集合卡尔曼滤波方程的修改。该方法是在日益增长的复杂性两个合成实例评估。在这两个例子中,我们考虑与渠道结构水库。目前的成果表明,更新的车型给予匹配测量大的改进,以及模型的不确定性降低。此外,真岩石物理参数中的恢复是高度依赖于测量足够的信息,但是在一个例子考虑我们能够完全恢复真实的信道结构。在更新后的相域的质量的额外改进通过接近贮存器的边界的距离的适当的处理,并在特定的统计测量调理得到更好地保留有关的信道特性的先验信息

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