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Bayesian updating via bootstrap filtering combined with data-driven polynomial chaos expansions: methodology and application to history matching for carbon dioxide storage in geological formations

机译:通过自举滤波与数据驱动的多项式混沌扩展相结合的贝叶斯更新:方法和在历史匹配中用于地质构造中二氧化碳的存储

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摘要

Model calibration and history matching are important techniques to adapt simulation tools to real-world systems. When prediction uncertainty needs to be quantified, one has to use the respective statistical counterparts, e.g., Bayesian updating of model parameters and data assimilation. For complex and large-scale systems, however, even single forward deterministic simulations may require parallel high-performance computing. This often makes accurate brute-force and nonlinear statistical approaches infeasible. We propose an advanced framework for parameter inference or history matching based on the arbitrary polynomial chaos expansion (aPC) and strict Bayesian principles. Our framework consists of two main steps. In step 1, the original model is projected onto a mathematically optimal response surface via the aPC technique. The resulting response surface can be viewed as a reduced (surrogate) model. It captures the model's dependence on all parameters relevant for history matching at high-order accuracy. Step 2 consists of matching the reduced model from step 1 to observation data via bootstrap filtering. Bootstrap filtering is a fully nonlinear and Bayesian statistical approach to the inverse problem in history matching. It allows to quantify post-calibration parameter and prediction uncertainty and is more accurate than ensemble Kalman filtering or linearized methods. Through this combination, we obtain a statistical method for history matching that is accurate, yet has a computational speed that is more than sufficient to be developed towards real-time application. We motivate and demonstrate our method on the problem of CO_2 storage in geological formations, using a low-parametric homogeneous 3D benchmark problem. In a synthetic case study, we update the parameters of a CO_2/brine multiphase model on monitored pressure data during CO_2 injection.
机译:模型校准和历史记录匹配是使仿真工具适应实际系统的重要技术。当需要对预测不确定性进行量化时,必须使用相应的统计对应物,例如,模型参数的贝叶斯更新和数据同化。但是,对于复杂的大型系统,即使是单向确定性仿真也可能需要并行的高性能计算。这通常使精确的蛮力分析和非线性统计方法不可行。我们提出了一个基于任意多项式混沌扩展(aPC)和严格的贝叶斯原理的参数推断或历史匹配的高级框架。我们的框架包括两个主要步骤。在第1步中,通过aPC技术将原始模型投影到数学上最佳的响应面上。可以将生成的响应面视为简化(替代)模型。它捕获了模型对与历史匹配相关的所有参数的依赖关系,并且准确性很高。步骤2包括通过自举滤波将步骤1的简化模型与观测数据进行匹配。自举滤波是一种完全非线性的贝叶斯统计方法,用于处理历史匹配中的逆问题。它允许量化后校准参数和预测不确定性,并且比集成卡尔曼滤波或线性化方法更准确。通过这种结合,我们获得了一种准确的历史匹配统计方法,但其计算速度足以向实时应用发展。我们使用低参数均质3D基准问题,对我们在地质构造中CO_2封存问题的方法进行了激励和论证。在一个综合案例研究中,我们根据注入CO_2期间的压力数据更新了CO_2 /盐水多相模型的参数。

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