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首页> 外文期刊>Journal of Petroleum Science & Engineering >Sequential assimilation of 4D seismic data for reservoir description using the ensemble Kalman filter
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Sequential assimilation of 4D seismic data for reservoir description using the ensemble Kalman filter

机译:使用集成卡尔曼滤波器对4D地震数据进行顺序同化以描述储层

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摘要

Automatic history matching of both production data and time-lapse seismic data to achieve reservoir characterization with reduced uncertainty has been extensively studied in recent years.Feasible applications,however,require either the adjoint method or the gradient simulator method to compute the gradient/Hessian matrix of the objective function for the minimization algorithm.Both methods are computationally expensive when either the number of model parameters or the number of observed data is large.In this paper,the ensemble Kalman filter (EnKF)is used to history match both production data and time-lapse seismic impedance data.EnKF uses a set of reservoir models as input;continuously updates the models by assimilating observation data whenever they are available;and outputs a number of "history-matched" models that are suitable for uncertainty analysis.Since EnKF does not require the adjoint code,it is independent of reservoir simulators.A small synthetic case study was conducted,which shows the possibility of integrating both time-lapse seismic data and production data using the EnKF for reservoir characterization.The observed data are matched very well,and the true model features are recovered.The estimated porosity field is better than the estimated permeability field because seismic data are directly sensitive to porosity but only indirectly sensitive to permeability.The improved initial member sampling algorithm helps to keep large variance space within ensemble members,ensuring stable filter behavior.
机译:近年来,已经广泛研究了生产数据和时移地震数据的自动历史匹配以实现具有降低的不确定性的储层表征。然而,在可行的应用中,需要使用伴随方法或梯度模拟器方法来计算梯度/ Hessian矩阵当模型参数的数量或观测数据的数量很大时,这两种方法的计算量都很大。本文使用集合卡尔曼滤波器(EnKF)来历史匹配生产数据和目标数据。时移地震阻抗数据。EnKF使用一组油藏模型作为输入;在可用时会通过吸收观测数据来不断更新模型;并输出许多适用于不确定性分析的“历史匹配”模型。不需要伴随代码,它独立于油藏模拟器。进行了一个小型综合案例研究, ch显示了使用EnKF对时移地震数据和生产数据进行整合以进行储层表征的可能性。观察到的数据非常匹配,并且可以恢复真实的模型特征。估计的孔隙度比估计的渗透率更好,因为地震数据对孔隙度直接敏感,而对渗透率则不敏感。改进的初始成员采样算法有助于在整体成员中保持较大的方差空间,从而确保稳定的过滤性能。

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