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Optimizing Subsurface Field Data Acquisition Using Information Theory

机译:利用信息论优化地下野外数据采集

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Oil and gas reservoirs or subsurface aquifers are complex heterogeneous natural structures. They are characterized by means of several direct or indirect field measurements involving different physical processes operating at various spatial and temporal scales. For example, drilling wells provides small plugs whose physical properties may be measured in the laboratory. At a larger scale, seismic techniques provide a characterization of the geological structures. In some cases these techniques can help characterize the spatial fluid distribution, whose knowledge can in turn be used to improve the oil recovery strategy. In practice, these measurements are always expensive. In addition, due to their indirect and incomplete character, the measurements cannot give an exhaustive description of the reservoir and several uncertainties still remain. Quantification of these uncertainties is essential when setting up a reservoir development scenario and when modelling the risks due to the cost of the associated field operations. Within this framework, devising strategies that allow one to set up optimal data acquisition schemes can have many applications in oil or gas reservoir engineering, or in the CO2 geological storages. In this paper we present a method allowing us to quantify the information that is potentially provided by any set of measurements. Using a Bayesian framework, the information content of any set of data is defined by using the Kullback–Leibler divergence between posterior and prior density distributions. In the case of a Gaussian model where the data depends linearly on the parameters, explicit formulae are given. The kriging example is treated, which allows us to find an optimal well placement. The redundancy of data can also be quantified, showing the role of the correlation structure of the prior model. We extend the approach to the permeability estimation from a well-test simulation using the apparent permeability. In this case, the global optimization result of the mean information criterion gives an optimal acquisition time frequency.
机译:油气储层或地下含水层是复杂的非均质自然结构。它们的特征是通过涉及在不同时空尺度上运行的不同物理过程的几种直接或间接的野外测量。例如,钻井提供了小的塞子,其物理性质可以在实验室中测量。在更大范围内,地震技术提供了地质结构的特征。在某些情况下,这些技术可以帮助表征空间流体分布,其知识又可以用于改善采油策略。实际上,这些测量总是很昂贵的。此外,由于其间接和不完整的特性,因此无法详尽描述油藏,因此仍存在一些不确定性。在建立油藏开发方案以及对因相关现场作业成本引起的风险进行建模时,对这些不确定性进行量化至关重要。在此框架内,允许人们建立最佳数据采集方案的设计策略可以在石油或天然气储层工程或CO2 地质存储中有许多应用。在本文中,我们提出了一种方法,可以量化任何一组测量可能提供的信息。使用贝叶斯框架,使用后验和先验密度分布之间的Kullback-Leibler散度定义任何数据集的信息内容。在数据线性依赖于参数的高斯模型的情况下,给出了明确的公式。处理了克里金法的示例,这使我们能够找到最佳的井位。数据的冗余度也可以量化,显示了先验模型的相关结构的作用。我们通过使用表观渗透率的试井模拟将方法扩展到渗透率估算。在这种情况下,均值信息准则的全局最优化结果给出了最佳的采集时间频率。

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