The development of surrogate models to study uncertainties in hydrologic systems requires significant effort in the development of sampling strategies and forward model simulations. Furthermore, in applications where prediction time is critical, such as prediction of hurricane storm surge, the predictions of system response and uncertainties can be required within short time frames. Here, we develop an efficient stochastic shallow water model to address these issues. To discretize the physical and probability spaces we use a Stochastic Galerkin method and a Incremental Pressure Correction scheme to advance the solution in time. To overcome discrete stability issues, we propose cross-mode stabilization methods which employs existing stabilization methods in the probability space by adding stabilization terms to every stochastic mode in a modes-coupled way. We extensively verify the developed method for both idealized shallow water test cases and hindcasting of past hurricanes. We subsequently use the developed and verified method to perform a comprehensive statistical analysis of the established shallow water surrogate models. Finally, we propose a predictor for hurricane storm surge under uncertain wind drag coefficients and demonstrate its effectivity for Hurricanes Ike and Harvey.
翻译:开发替代模型以研究水文系统的不确定性,需要大力制定取样战略和前方模型模拟。此外,在预测时间至关重要的应用中,如预测风暴潮等,可能需要在短时间内预测系统反应和不确定性。在这里,我们开发一个高效的随机浅水模型来解决这些问题。为了将物理空间和概率空间分解,我们使用斯托切斯蒂·加勒金方法和递增压力校正计划来及时推进解决方案。为了克服离散的稳定问题,我们提出跨模式稳定化方法,在概率空间利用现有的稳定化方法,以混合方式将稳定化条件添加到每一种随机模式中。我们广泛核查理想化浅水试验案例和对过去飓风进行补差的开发方法。我们随后使用开发并核实的方法对既定浅水代管模型进行全面统计分析。最后,我们提出在不确定的风阻系数下预测飓风风暴潮,并展示飓风艾克和哈维的效应。