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A parallel, multiscale approach to reservoir modeling

机译:并行,多尺度的油藏建模方法

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With the advance of CPU power, numerical reservoir models have become an essential part of most reservoir engineering applications. These models are used for predicting future performances or determining optimal locations of infill wells. Hence in order to accurately predict, these reservoir models must be conditioned to all available data. The challenge in data integration for numerical reservoir models lies in the fact that each data has its own resolution and area of coverage. The most common data for reservoir characterization are; well-log/core data, seismic data and production data. Most current approaches to data integration are hierarchical. Fine scale models are used for integrating well-log/core and seismic data while coarse models are used to integrate mostly production data. The drawback of such a hierarchical approach is such that once the scale is changed, data conditioning, maintained in the previous scale, is lost. In this paper, we review a general algorithm as a solution to the multi-scale data integration. Instead of proceeding in a hierarchical fashion, a fine model and a coarse model is kept in parallel throughout the entire characterization process. The link between the fine scale and the coarse scale is provided by non-uniform upscaling. An optimization procedure determines the optimal gridding parameters that provide the smallest possible mismatch between fine and coarse scale reservoir models. A synthetic example application is given and demonstration of the methodology. The upgridding is accomplish by a static gridding algorithm, 3DDEGA. This algorithm aims at preserving geology by minimizing heterogeneity within a coarse grid block. The coarse grids are provided in a corner-point geometry fashion, hence this allows for accurate description of the reservoir with fewer number of grid blocks.
机译:随着CPU能力的提高,数值油藏模型已成为大多数油藏工程应用中必不可少的部分。这些模型用于预测未来的性能或确定填充井的最佳位置。因此,为了准确预测,必须将这些储层模型适应所有可用数据。数字储层模型数据集成的挑战在于每个数据都有其自己的分辨率和覆盖范围的事实。最常见的储层表征数据是:测井/岩心数据,地震数据和生产数据。当前大多数数据集成方法都是分层的。精细模型用于整合测井/岩心和地震数据,而粗略模型则用于整合大部分生产数据。这种分层方法的缺点是,一旦改变比例,就失去了先前比例保持的数据条件。在本文中,我们回顾了一种通用算法,作为多尺度数据集成的一种解决方案。代替以分级方式进行,在整个表征过程中,将精细模型和粗糙模型保持并行。精细比例尺和粗糙比例尺之间的联系是由不均匀的放大比例提供的。优化程序确定了最佳网格参数,该参数可在精细和粗尺度储层模型之间提供最小的不匹配。给出了一个综合的示例应用程序并演示了该方法。通过静态网格划分算法3DDEGA完成升级。该算法旨在通过最小化粗网格块内的异质性来保护地质。粗网格以角点几何形式提供,因此可以用较少数量的网格块准确描述储层。

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