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Generating spatial precipitation ensembles: Impact of temporal correlation structure

机译:生成空间降水集合:时间相关结构的影响

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Sound spatially distributed rainfall fields including a proper spatial and temporal error structure are of key interest for hydrologists to force hydrological models and to identify uncertainties in the simulated and forecasted catchment response. The current paper presents a temporally coherent error identification method based on time-dependent multivariate spatial conditional simulations, which are conditioned on preceding simulations. A sensitivity analysis and real-world experiment are carried out within the hilly region of the Belgian Ardennes. Precipitation fields are simulated for pixels of 10 km × 10 km resolution. Uncertainty analyses in the simulated fields focus on (1) the number of previous simulation hours on which the new simulation is conditioned, (2) the advection speed of the rainfall event, (3) the size of the catchment considered, and (4) the rain gauge density within the catchment. The results for a sensitivity analysis show for typical advection speeds >20 km h??'1, no uncertainty is added in terms of across ensemble spread when conditioned on more than one or two previous hourly simulations. However, for the real-world experiment, additional uncertainty can still be added when conditioning on a larger number of previous simulations. This is because for actual precipitation fields, the dynamics exhibit a larger spatial and temporal variability. Moreover, by thinning the observation network with 50%, the added uncertainty increases only slightly and the cross-validation shows that the simulations at the unobserved locations are unbiased. Finally, the first-order autocorrelation coefficients show clear temporal coherence in the time series of the areal precipitation using the time-dependent multivariate conditional simulations, which was not the case using the time-independent univariate conditional simulations. The presented work can be easily implemented within a hydrological calibration and data assimilation framework and can be used as an improvement over currently used simplistic approaches to perturb the interpolated point or spatially distributed precipitation estimates.
机译:合理的空间分布降雨场(包括适当的时空误差结构)是水文学家推动水文模型并识别模拟和预测集水区响应不确定性的关键。本文提出了一种基于时间相关的多元空间条件模拟的时间相干误差识别方法,该方法以先前的模拟为条件。在比利时阿登地区的丘陵地区进行了敏感性分析和实际实验。模拟了分辨率为10 km×10 km的像素的降水场。模拟字段中的不确定性分析着重于(1)以新模拟为条件的先前模拟小时数;(2)降雨事件的对流速度;(3)考虑的集水区大小;以及(4)流域内的雨量计密度。灵敏度分析的结果表明,对于典型的对流速度> 20 km h?1的情况,如果以先前的一个或两个以上的每小时模拟为条件,则在整个合奏传播方面不会增加不确定性。但是,对于现实世界的实验,在以大量先前的模拟为条件时,仍然可以添加其他不确定性。这是因为对于实际的降水场,动力学表现出较大的时空变化性。此外,通过将观察网络减薄50%,增加的不确定性只会稍微增加,并且交叉验证表明未观察到的位置的模拟是无偏的。最后,使用时间相关的多元条件模拟,一阶自相关系数在区域降水的时间序列中显示出清晰的时间相干性,而使用时间独立的单变量条件模拟则不是这样。提出的工作可以很容易地在水文校准和数据同化框架内实施,并且可以用作对当前使用的简化方法的改进,以扰动插值点或空间分布的降水量估计值。

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