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Stochastic reconstruction of spatio-temporal rainfall patterns by inverse hydrologic modelling

机译:逆水文建模的时断重建时空降雨模式

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Knowledge of spatio-temporal rainfall patterns is required as input for distributed hydrologic models used for tasks such as flood runoff estimation and modelling. Normally, these patterns are generated from point observations on the ground using spatial interpolation methods. However, such methods fail in reproducing the true spatio-temporal rainfall pattern, especially in data-scarce regions with poorly gauged catchments, or for highly dynamic, small-scale rainstorms which are not well recorded by existing monitoring networks. Consequently, uncertainties arise in distributed rainfall-runoff modelling if poorly identified spatio-temporal rainfall patterns are used, since the amount of rainfall received by a catchment as well as the dynamics of the runoff generation of flood waves is underestimated. To address this problem we propose an inverse hydrologic modelling approach for stochastic reconstruction of spatio-temporal rainfall patterns. The methodology combines the stochastic random field simulator Random Mixing and a distributed rainfall-runoff model in a Monte Carlo framework. The simulated spatio-temporal rainfall patterns are conditioned on point rainfall data from ground-based monitoring networks and the observed hydrograph at the catchment outlet and aim to explain measured data at best. Since we infer a three-dimensional input variable from an integral catchment response, several candidates for spatio-temporal rainfall patterns are feasible and allow for an analysis of their uncertainty. The methodology is tested on a synthetic rainfall-runoff event on sub-daily time steps and spatial resolution of 1 km(2) for a catchment partly covered by rainfall. A set of plausible spatio-temporal rainfall patterns can be obtained real-world study for a flash flood event in a mountainous arid region are presented. They underline that knowledge about the spatio-temporal rainfall pattern is crucial for flash flood modelling even in small catchments and arid and semiarid
机译:需要了解时空降雨模式作为用于洪水径流估计和建模等任务的分布式水文模型的输入。通常,使用空间插值方法从地面上的点观察产生这些模式。然而,这种方法在再现真正的时空降雨模式方面,特别是在具有衡量不良的数据稀缺区域,或用于高动态的小型暴雨,这些暴雨不受现有的监测网络不受欢迎。因此,如果使用了不良的时空降雨模式,则在分布式降雨径流模型中出现的不确定性,因此由于集水机会收到的降雨量以及洪波径波的径流产生的动态而产生的降雨量。为了解决这个问题,我们提出了一种逆水文建模方法,即用于随机重建时空降雨模式。该方法将随机随机场模拟器随机混合和分布式降雨 - 径流模型结合在蒙特卡罗框架中。模拟的时空降雨模式是从地面监测网络的点降雨数据和集水区出口的观察水平的调节,并旨在以最佳解释测量数据。由于我们从整体集水区响应推断三维输入变量,因此用于时空降雨模式的几个候选者是可行的,并且允许分析它们的不确定性。该方法在亚日常时间步骤和1公里的空间分辨率上测试了综合降雨 - 径流事件,用于部分被降雨量覆盖的集水区。提供了一套合理的时空降雨模式,可以获得山区干旱地区的闪光洪水事件的真实研究。他们强调了关于时空降雨模式的知识对于闪蒸洪水建模至关重要,即使在小型集水区和干旱和半干旱中

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