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Prediction using numerical simulations, a Bayesian framework for uncertainty quantification and its statistical challenge

机译:使用数值模拟进行预测,不确定性量化的贝叶斯框架及其统计挑战

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Uncertainty quantification is essential in using numerical models for prediction. While many works focused on how the uncertainty of the inputs propagate to the outputs, the modeling errors of the numerical model were often overlooked. In our Bayesian framework, modeling errors play an essential role and were assessed through studying numerical solution errors. The main ideas and key concepts will be illustrated through an oil reservoir case study. In this study, inference on the input has to be made from the output. Bayesian analysis is adopted to handle this inverse problem, then combine it with the forward simulation for prediction. The solution error models were established based on the scale-up solutions and fine-grid solutions. As the central piece of our framework, the robustness of these error models is fundamental. In addition to the oil reservoir computer codes, we will also discuss the modelling of solution error of shock wave physics. Although the framework itself is simple, there is many statistical challenges which include optimal dimension of the error model, trade-off between sample size and the solution accuracy. These challenges are also discussed.
机译:在使用数值模型进行预测时,不确定性量化至关重要。尽管许多工作着眼于输入的不确定性如何传播到输出,但数值模型的建模误差经常被忽略。在我们的贝叶斯框架中,建模误差起着至关重要的作用,并通过研究数值解误差进行了评估。主要思想和关键概念将通过油库案例研究进行说明。在这项研究中,必须从输出中推断出输入。采用贝叶斯分析处理该逆问题,然后将其与正向仿真相结合进行预测。基于规模化解决方案和精细网格解决方案,建立了解决方案误差模型。作为我们框架的核心,这些错误模型的鲁棒性至关重要。除了储油库计算机代码外,我们还将讨论冲击波物理场的求解误差建模。尽管框架本身很简单,但是仍然存在许多统计挑战,其中包括误差模型的最佳尺寸,样本大小与解决方案精度之间的权衡。还讨论了这些挑战。

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