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A Multistage Sampling Method for Rapid Quantification of Uncertainty in History Matching Geological Models

机译:一种多级采样方法,用于快速定量历史与地质模型的不确定性

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The paper presents a novel method for rapid quantification of uncertainty in history matching reservoir models using a twostage Markov Chain Monte Carlo (MCMC) method. Our approach is based on a combination of fast linearized approximation to the dynamic data and the MCMC algorithm. In the first stage, we use streamline-derived sensitivities to obtain an analytical approximation in a small neighborhood of the previously computed dynamic data. The sensitivities can be conveniently obtained using either a finite-difference or streamline simulator. The approximation of the dynamic data is then used to modify the instrumental proposal distribution during MCMC. In the second stage, those proposals that pass the first stage are assessed by running full flow simulations to assure rigorousness in sampling. The uncertainty analysis is carried out by analyzing multiple models sampled from the posterior distribution in the Bayesian formulation for history matching. We demonstrate that the two-stage approach increases the acceptance rate, and significantly reduces the computational cost compared to conventional MCMC sampling without sacrificing accuracy. Finally, both twodimensional synthetic and three-dimensional field examples demonstrate the power and utility of the two-stage MCMC method for history matching and uncertainty analysis.
机译:本文介绍了一种新的方法,用于快速定量历史匹配储层模型的不确定性,使用扭曲马尔可夫链蒙特卡罗(MCMC)方法。我们的方法是基于与动态数据和MCMC算法的快速线性化近似的组合。在第一阶段,我们使用流线衍生的敏感性来获得先前计算的动态数据的小邻域中的分析近似。可以使用有限差异或流线模拟器方便地获得灵敏度。然后使用动态数据的近似值来修改MCMC期间的乐器提案分布。在第二阶段,通过运行全流模拟来评估传递第一阶段的那些提案,以确保在抽样中的严格。通过分析从贝叶斯配方中的后部分布采样的多种模型进行了不确定性分析,以进行历史匹配。我们证明,两阶段方法增加了接受率,并且与传统的MCMC采样相比,显着降低了计算成本,而不会牺牲精度。最后,两尺寸的合成和三维现场示例都证明了两级MCMC方法的功率和效用,用于历史匹配和不确定性分析。

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