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首页> 外文期刊>Journal of Petroleum Science & Engineering >History matching of fracture distributions by ensemble Kalman filter combined with vector based level set parameterization
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History matching of fracture distributions by ensemble Kalman filter combined with vector based level set parameterization

机译:集成卡尔曼滤波与基于矢量的水平集参数化相结合的裂缝分布历史匹配

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摘要

For fractured reservoirs with unknown fracture distributions, the characteristics of fracture distributions are crucial for determining their production behaviors. Traditional history matching methods are not appropriate because the pixel-based rock property fields are usually highly non-Gaussian. In this work, a method that combines a vector-based level set reparameterization technique and the ensemble Kalman filter (EnKF) for estimating fracture distributions of two-dimensional reservoir model is presented. In the parameterization process, we first set up a group of representing nodes. The value of level set function on each node is assigned using Gaussian random number, and the sign of the function value indicates whether there is a fracture starting from the node or not If there exists a linear fracture in a two dimensional space, the fracture would be characterized by the fracture length and orientation. Thus, the fracture distribution of the reservoir domain can be represented by a representing node system with a vector of three components on each node, which are the level set function, the fracture length, and the fracture angle. In the data assimilation process, these parameters are updated via EnKF scheme as the model parameters of the state vector. Two dimensional examples of water flooding in fractured reservoirs are set up to demonstrate the proposed method. It is shown that the method is effective to capture the main features of the fracture distributions in the reference fields. The matches of production data also improve significantly after updating.
机译:对于裂缝分布未知的裂缝性储层,裂缝分布的特征对于确定其生产行为至关重要。传统的历史匹配方法不合适,因为基于像素的岩石属性字段通常高度非高斯。在这项工作中,提出了一种方法,该方法将基于向量的水平集重新参数化技术与集成卡尔曼滤波器(EnKF)相结合,用于估算二维油藏模型的裂缝分布。在参数化过程中,我们首先建立一组表示节点。使用高斯随机数分配每个节点上的水平设置函数的值,并且函数值的符号指示是否从该节点开始存在裂缝。如果在二维空间中存在线性裂缝,则该裂缝将由断裂长度和方向来表征。因此,储层区域的裂缝分布可以由一个具有代表性的节点系统来表示,该节点系统在每个节点上具有三个分量的向量,这三个分量是水平集函数,裂缝长度和裂缝角度。在数据同化过程中,这些参数通过EnKF方案作为状态向量的模型参数进行更新。建立了裂缝性油藏注水的二维实例,以说明该方法。结果表明,该方法可以有效地捕获参考场中裂缝分布的主要特征。更新后,生产数据的匹配度也显着提高。

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