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Uncertainty Quantification of Landslide Generated Waves Using Gaussian Process Emulation and Variance-Based Sensitivity Analysis

机译:利用高斯工艺仿真和基于方差的敏感性分析的山体滑坡不确定性量化

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摘要

Simulations of landslide generated waves (LGWs) are prone to high levels of uncertainty. Here we present a probabilistic sensitivity analysis of an LGW model. The LGW model was realised through a smooth particle hydrodynamics (SPH) simulator, which is capable of modelling fluids with complex rheologies and includes flexible boundary conditions. This LGW model has parameters defining the landslide, including its rheology, that contribute to uncertainty in the simulated wave characteristics. Given the computational expense of this simulator, we made use of the extensive uncertainty quantification functionality of the Dakota toolkit to train a Gaussian process emulator (GPE) using a dataset derived from SPH simulations. Using the emulator we conducted a variance-based decomposition to quantify how much each input parameter to the SPH simulation contributed to the uncertainty in the simulated wave characteristics. Our results indicate that the landslide’s volume and initial submergence depth contribute the most to uncertainty in the wave characteristics, while the landslide rheological parameters have a much smaller influence. When estimated run-up is used as the indicator for LGW hazard, the slope angle of the shore being inundated is shown to be an additional influential parameter. This study facilitates probabilistic hazard analysis of LGWs, because it reveals which source characteristics contribute most to uncertainty in terms of how hazardous a wave will be, thereby allowing computational resources to be focused on better understanding that uncertainty.
机译:Landslide产生的波(LGW)的模拟容易出现高水平的不确定性。在这里,我们提出了LGW模型的概率敏感性分析。通过光滑的粒子流体动力学(SPH)模拟器来实现LGW模型,其能够用复杂的流变学建模流体并包括柔性边界条件。该LGW模型具有定义滑坡的参数,包括其流变学,这有助于模拟波特性的不确定性。鉴于该模拟器的计算费用,我们使用Dakota Toolkit的广泛的不确定性量化功能来使用从SPH模拟导出的数据集训练高斯工艺仿真器(GPE)。使用仿真器我们进行了一种基于方差的分解,以量化每个输入参数对SPH模拟的数量有助于模拟波特性中的不确定性。我们的结果表明,山体滑坡的体积和初始淹没深度对波浪特征的不确定性贡献最大,而滑坡流变参数具有更小的影响。当估计的运行用作LGW危险的指示器时,被淹没的岸边的斜角被显示为额外的有影响力。本研究促进了LGWS的概率危害分析,因为它揭示了哪些源特征在波浪危险程度方面促进了对不确定性的贡献,从而允许计算资源重点放松更好地理解不确定性。

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