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Ensemble Kalman Filter Data Assimilation to Condition a Real Reservoir Models to Well Test Observation

机译:Ensemble Kalman滤波器数据同化以调节真正的水库模型,以良好的测试观察

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Recently a significant effort has been made to characterize reservoir models benefiting from Ensemble Kalman filter as data assimilation technique. EnKF proved to be a powerful tool to deal with almost any sort of measurement also to be capable of handling different type of uncertainty in the simulation models and and being affordable from the computational point of view. Lately the technique has been deployed to assimilate on pressure transient and production logging data to update permeabilities and estimate layer skin factor. In the present paper EnKF methodology was used to characterize an offshore reservoir model against the well test pressure data as well as the pressure derivative to adjust cell by cell petrophysical properties, and the skin factor in each well perforation. The results showed that using the derivative observations to calibrate the uncertain parameters helps improving the quality of the match not only in the predicted derivative but also in better forecasting the pressure measurements. The importance of assimilation on skin as well as recalculation of well connection factors revealed. Moreover a new distance based localisation scheme based on the well drainage zone has been introduced to help reducing unnecessary changes in the model.
机译:最近,已经进行了重大努力,以表征从集合卡尔曼滤波器受益的水库模型作为数据同化技术。 ENKF被证明是处理几乎任何类型的测量的强大工具,也能够在模拟模型中处理不同类型的不确定性,并从计算的视角中负担得起。最近,已经部署了该技术以吸收压力瞬态和生产测井数据,以更新渗透率和估算层皮肤因子。在本文中,enkf方法用于对井测试压力数据以及通过细胞岩石物理特性调节细胞的压力衍生物,以及每个孔穿孔的皮肤因子。结果表明,使用衍生观测来校准不确定参数有助于提高预测衍生物的匹配的质量,而且还可以更好地预测压力测量。同化对皮肤的重要性以及揭示井连接因素的重新计算。此外,已经引入了一种基于井排水区的基于距离的定位方案,以帮助降低模型的不必要的变化。

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