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Numerical daemons of hydrological models are summoned by extreme precipitation

机译:极端降水召唤水文模型的数值守护进程

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摘要

Hydrological models are usually systems of nonlinear differential equations for which no analytical solutions exist and thus rely on numerical solutions. While some studies have investigated the relationship between numerical method choice and model error, the extent to which extreme precipitation such as that observed during hurricanes Harvey and Katrina impacts numerical error of hydrological models is still unknown. This knowledge is relevant in light of climate change, where many regions will likely experience more intense precipitation. In this experiment, a large number of hydrographs are generated with the modular modeling framework FUSE (Framework for Understanding Structural Errors), using eight numerical techniques across a variety of forcing data sets. All constructed models are conceptual and lumped. Multiple model structures, parameter sets, and initial conditions are incorporated for generality. The computational cost and numerical error associated with each hydrograph were recorded. Numerical error is assessed via root mean square error and normalized root mean square error. It was found that the root mean square error usually increases with precipitation intensity and decreases with event duration. Some numerical methods constrain errors much more effectively than others, sometimes by many orders of magnitude. Of the tested numerical methods, a second-order adaptive explicit method is found to be the most efficient because it has both a small numerical error and a low computational cost. A small literature review indicates that many popular modeling codes use numerical techniques that were suggested by this experiment to be suboptimal. We conclude that relatively large numerical errors may be common in current models, highlighting the need for robust numerical techniques, in particular in the face of increasing precipitation extremes.
机译:水文模型通常是非线性微分方程组,不存在解析解,因此依赖于数值解。虽然一些研究已经调查了数值方法选择与模型误差之间的关系,但极端降水(如飓风哈维和卡特里娜飓风期间观察到的降水)在多大程度上影响了水文模型的数值误差仍然未知。鉴于气候变化,这些知识与气候变化有关,许多地区可能会经历更强烈的降水。在本实验中,使用模块化建模框架 FUSE(结构误差理解框架)生成了大量水位线,在各种强迫数据集中使用了八种数值技术。所有构建的模型都是概念性的和集总的。为了实现通用性,合并了多个模型结构、参数集和初始条件。记录了与每个水位线相关的计算成本和数值误差。数值误差通过均方根误差和归一化均方根误差进行评估。研究发现,均方根误差通常随降水强度的增加而增大,随事件持续时间的增加而减小。一些数值方法比其他方法更有效地限制误差,有时甚至限制了许多数量级。在测试的数值方法中,二阶自适应显式方法具有较小的数值误差和较低的计算成本,因此效率最高。一篇小型文献综述表明,许多流行的建模代码使用数值技术,而本实验认为这些技术是次优的。我们得出的结论是,相对较大的数值误差在当前模型中可能很常见,这突出了对稳健的数值技术的需求,特别是在面对不断增加的极端降水的情况下。

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