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Reservoir Geological Uncertainty Reduction: an Optimization-Based Method Using Multiple Static Measures

机译:降低储层地质不确定性:一种基于优化的方法,使用多个静态度量

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Uncertainty in reservoir geological properties has a major impact in reservoir design and operations decision-making. To quantify the production uncertainty and to make optimal decisions in reservoir development, flow simulation is widely used. However, reservoir flow simulation is a computationally intensive task due to complex geological heterogeneities and numerical thermal modeling. Normally only a small number of realizations are chosen from a large superset for flow simulation. In this paper, a mixed-integer linear optimization-based geological realization reduction method is proposed to select geological realizations. The method minimizes the probability distance between the discrete distribution represented by the superset of realizations and the reduced discrete distribution represented by the selected realizations. The proposed method was compared with the traditional ranking technique and the distance-based kernel clustering method. Results show that the proposed method can effectively select realizations and assign probabilities such that the extreme and expected reservoir performances are recovered better than any of the single static measure-based ranking methods or the kernel clustering method.
机译:储层地质特性的不确定性对储层设计和作业决策具有重大影响。为了量化生产不确定性并在油藏开发中做出最佳决策,流量模拟被广泛使用。但是,由于复杂的地质异质性和数值热模拟,油藏流动模拟是一项计算量很大的任务。通常,从大型超集中仅选择少量实现用于流量模拟。提出了一种基于混合整数线性优化的地质实现约简方法来选择地质实现。该方法使由实现的超集表示的离散分布与由所选实现的表示的减小的离散分布之间的概率距离最小。将该方法与传统的排序技术和基于距离的核聚类方法进行了比较。结果表明,所提出的方法可以有效地选择实现方法和分配概率,从而使极端和预期储层性能的恢复效果优于任何基于单一静态测度的排序方法或核聚类方法。

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