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Multiscale ensemble filtering for reservoir engineering applications

机译:用于储层工程应用的多尺度集合滤波

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Reservoir management requires periodic updates of the simulation models using the production data available over time. Traditionally, validation of reservoir models with production data is done using a history matching process. Uncertainties in the data, as well as in the model, lead to a nonunique history matching inverse problem. It has been shown that the ensemble Kalman filter (EnKF) is an adequate method for predicting the dynamics of the reservoir. The EnKF is a sequential Monte-Carlo approach that uses an ensemble of reservoir models. For realistic, large-scale applications, the ensemble size needs to be kept small due to computational inefficiency. Consequently, the error space is not well covered (poor cross-correlation matrix approximations) and the updated parameter field becomes scattered and loses important geological features (for example, the contact between high- and low-permeability values). The prior geological knowledge present in the initial time is not found anymore in the final updated parameter. We propose a new approach to overcome some of the EnKF limitations. This paper shows the specifications and results of the ensemble multiscale filter (EnMSF) for automatic history matching. EnMSF replaces, at each update time, the prior sample covariance with a multiscale tree. The global dependence is preserved via the parent-child relation in the tree (nodes at the adjacent scales). After constructing the tree, the Kalman update is performed.rnThe properties of the EnMSF are presented here with a 2D, two-phase (oil and water) small twin experiment, and the results are compared to the EnKF. The advantages of using EnMSF are localization in space and scale, adaptability to prior information, and efficiency in case many measurements are available. These advantages make the EnMSF a practical tool for many data assimilation problems.
机译:储层管理要求使用随时间推移可用的生产数据来定期更新模拟模型。传统上,使用历史记录匹配过程来验证具有生产数据的储层模型。数据以及模型中的不确定性都会导致非唯一的历史匹配逆问题。已经表明,集成卡尔曼滤波器(EnKF)是预测储层动力学的适当方法。 EnKF是一种顺序蒙特卡洛方法,使用了一组储层模型。对于现实的大规模应用,由于计算效率低,需要将集合大小保持较小。因此,错误空间没有得到很好的覆盖(互相关矩阵近似差),更新的参数字段变得分散并且失去了重要的地质特征(例如,高渗透率值和低渗透率值之间的联系)。在最终更新的参数中不再找到初始时间内存在的先验地质知识。我们提出了一种新方法来克服EnKF的某些局限性。本文显示了用于自动历史匹配的集成多尺度滤波器(EnMSF)的规格和结果。 EnMSF在每个更新时间用多尺度树替换先前的样本协方差。全局依赖关系通过树中的父子关系(相邻标度的节点)得以保留。构造完树后,执行Kalman更新。在此,EnMSF的属性通过二维,两相(油和水)小孪生实验进行了介绍,并将结果与​​EnKF进行了比较。使用EnMSF的优点是空间和规模上的本地化,对先验信息的适应性以及在可以进行许多测量的情况下的效率。这些优点使EnMSF成为解决许多数据同化问题的实用工具。

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