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An overview of uncertainty quantification techniques with application to oceanic and oil-spill simulations

机译:不确定性量化技术概述及其在海洋和溢油模拟中的应用

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摘要

We give an overview of four different ensemble-based techniques for uncertainty quantification and illustrate their application in the context of oil plume simulations. These techniques share the common paradigm of constructing a model proxy that efficiently captures the functional dependence of the model output on uncertain model inputs. This proxy is then used to explore the space of uncertain inputs using a large number of samples, so that reliable estimates of the model's output statistics can be calculated. Three of these techniques use polynomial chaos (PC) expansions to construct the model proxy, but they differ in their approach to determining the expansions' coefficients; the fourth technique uses Gaussian Process Regression (GPR). An integral plume model for simulating the Deepwater Horizon oil-gas blowout provides examples for illustrating the different techniques. A Monte Carlo ensemble of 50,000 model simulations is used for gauging the performance of the different proxies. The examples illustrate how regression-based techniques can outperform projection-based techniques when the model output is noisy. They also demonstrate that robust uncertainty analysis can be performed at a fraction of the cost of the Monte Carlo calculation.
机译:我们概述了四种基于整体的不确定性量化技术,并举例说明了它们在油羽模拟中的应用。这些技术共享构建模型代理的通用范例,该模型可以有效地捕获模型输出对不确定模型输入的功能依赖性。然后使用该代理使用大量样本来探索不确定输入的空间,以便可以计算模型输出统计信息的可靠估计。这些技术中的三种使用多项式混沌(PC)展开来构建模型代理,但是它们在确定展开系数方面的方法有所不同。第四种技术使用高斯过程回归(GPR)。用于模拟Deepwater Horizo​​n油气井喷的整体羽状模型提供了用于说明不同技术的示例。 50,000个模型模拟的蒙特卡洛合奏用于衡量不同代理的性能。这些示例说明了当模型输出嘈杂时,基于回归的技术如何能胜过基于投影的技术。他们还证明了可以以仅蒙特卡罗计算成本的一小部分执行强大的不确定性分析。

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