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Seismic Bayesian evidential learning: estimation and uncertainty quantification of sub-resolution reservoir properties

机译:地震贝叶斯证据学习:估计和不确定性定量子分辨率储层性能

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摘要

We present a framework that enables estimation of low-dimensional sub-resolution reservoir properties directly from seismic data, without requiring the solution of a high dimensional seismic inverse problem. Our workflow is based on the Bayesian evidential learning approach and exploits learning the direct relation between seismic data and reservoir properties to efficiently estimate reservoir properties. The theoretical framework we develop allows incorporation of non-linear statistical models for seismic estimation problems. Uncertainty quantification is performed with approximate Bayesian computation. With the help of a synthetic example of estimation of reservoir net-to-gross and average fluid saturations in sub-resolution thin sand reservoir, several nuances are foregrounded regarding the applicability of unsupervised and supervised learning methods for seismic estimation problems. Finally, we demonstrate the efficacy of our approach by estimating posterior uncertainty of reservoir net-to-gross in sub-resolution thin sand reservoir from an offshore delta dataset using 3D pre-stack seismic data.
机译:我们提出了一种框架,其能够直接从地震数据估计低维子分辨率储库属性,而不需要解决高维地震逆问题。我们的工作流程是基于贝叶斯证据学习方法,利用学习地震数据和储层性能之间的直接关系,以有效地估算储层性质。我们开发的理论框架允许结合用于地震估计问题的非线性统计模型。使用近似贝叶斯计算进行不确定性量化。借助储层净储存净储存储存储存净总物和平均流体饱和在子分辨率薄砂储层的合成示例的帮助下,关于无监督和监督地震估计问题的应用程序的适用性,有几个细微差别。最后,我们通过使用3D预堆叠地震数据估计从海上三角洲数据集估计子分辨率薄砂储存器的水库净储存的后部不确定性来证明我们的方法的功效。

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