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Joint History Matching of Well Data and Surface Subsidence Observations Using the Ensemble Kalman Filter: A Field Study

机译:使用Ensemble Kalman滤波器的井数据和表面沉降观测的联合历史匹配:一个现场研究

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The number of reported applications of the Ensemble Kalman Filter (EnKF) for history matching reservoir models is increasing steadily for various reasons. Here, we report on exploiting the capability of EnKF to handle observations from different sources simultaneously. While traditionally only well data are matched, we use surface subsidence observations together with well data. Surface subsidence results from compaction of the reservoir rock through the mechanical response of the subsurface. Compaction is caused by decreasing pore pressures during reservoir depletion. Therefore, the subsidence data contains information about dynamic pressure distributions in the reservoir. The joint history matching of well data and surface subsidence observations was applied to the Roswinkel gas field. This field has been operated for 25 years, during which nine leveling campaigns generated a valuable data set of subsidence data. An important feature of the reservoir was the uncertainty about its compartmentalization, due to a large number of possibly sealing faults in the anticlinal structure. Therefore, instead of uncertain rock properties, fault transmissibilities were estimated in this study. In a previous study on Roswinkel, a compaction field was estimated by inverting subsidence measurements. The results indicated several sealing faults in the reservoir, dividing the field into different compartments with independent pressure histories. The post-inversion history match of production data, however, was unsatisfactory. We have now been able to show that estimating the driving parameters, in casu the fault transmissibilities in the reservoir, can be achieved in a consistent way with both production and surface subsidence data for a synthetic case. Furthermore, for the actual Roswinkel case, the joint history match clearly reveals the discreapancy between the data from both sources and the current reservoir simulation model. The joint history match of land surface movement data together with well production data is a success for EnKF as a flexible method for history matching. But more importantly, it demonstrates the potential of using complementary sources of information for improved reservoir characterization, and the possibility of estimating the driving parameters.
机译:由于各种原因,历史匹配储存模型的集合卡尔曼滤波器(ENKF)的报告应用程序的数量因各种原因而稳步增长。在这里,我们报告了利用ENKF同时处理不同来源的观察的能力。虽然传统上只有井数据匹配,但我们将表面沉降观察与井数据一起使用。表面沉降导致水库岩石的压实通过地下的机械响应。压实是通过在储层耗尽期间降低孔隙压力来引起的。因此,沉降数据包含有关储库中的动态压力分布的信息。井数据和表面沉降观察的关节历史匹配应用于ROSWinkel气体场。该领域已运行25年,在此期间,九个级别活动产生了一组有价值的沉降数据集。储存器的一个重要特征是其舱室化的不确定性,由于横向结构中的大量可能密封故障。因此,在本研究中估计了故障透射性而不是不确定的岩石属性。在先前关于ROSWinkel的研究中,通过反转沉降测量来估计压实场。结果表明了储层中的几个密封故障,将场分成不同的压力历史的不同隔室。然而,生产数据的后反转历史匹配毫无令人满意。我们现在已经能够表明估计储存器中的驾驶参数,储存器中的故障透射性可以以一致的方式实现合成案例的生产和表面沉降数据。此外,对于实际的Roswinkel案例,关节历史匹配清楚地揭示了来自源和当前储库仿真模型的数据之间的歧视性。陆地移动数据的联合历史匹配与良好生产数据一起是enkf的成功,作为历史匹配的灵活方法。但更重要的是,它展示了使用互补信息来改进储层表征的潜力,以及估计驾驶参数的可能性。

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