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A rainfall disaggregation scheme for sub-hourly time scales: coupling a Bartlett-Lewis based model with adjusting procedures

机译:针对亚时间尺度的降雨量分解方案:将基于Bartlett-Lewis的模型与调整程序相结合

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摘要

Many hydrological applications, such as flood studies, require the use of long rainfall data at fine time scales varying from daily down to 1 min time step. However, in the real world there is limited availability of data at sub-hourly scales. To cope with this issue, stochastic disaggregation techniques are typically employed to produce possible, statistically consistent, rainfall events that aggregate up to the field data collected at coarser scales. A methodology for the stochastic disaggregation of rainfall at fine time scales was recently introduced, combining the Bartlett-Lewis process to generate rainfall events along with adjusting procedures to modify the lower-level variables (i.e., hourly) so as to be consistent with the higher-level one (i.e., daily). In the present paper, we extend the aforementioned scheme, initially designed and tested for the disaggregation of daily rainfall into hourly depths, for any sub-hourly time scale. In addition, we take advantage of the recent developments in Poisson-cluster processes incorporating in the methodology a Bartlett-Lewis model variant that introduces dependence between cell intensity and duration in order to capture the variability of rainfall at sub-hourly time scales. The disaggregation scheme is implemented in an R package, named HyetosMinute, to support disaggregation from daily down to 1-min time scale. The applicability of the methodology was assessed on a 5-min rainfall records collected in Bochum, Germany, comparing the performance of the above mentioned model variant against the original Bartlett-Lewis process (non-random with 5 parameters). The analysis shows that the disaggregation process reproduces adequately the most important statistical characteristics of rainfall at wide range of time scales, while the introduction of the model with dependent intensity-duration results in a better performance in terms of skewness, rainfall extremes and dry proportions.
机译:许多水文应用(例如洪水研究)要求使用细雨天的长降雨数据,细雨天的时间范围从每天到1分钟。但是,在现实世界中,亚小时尺度的数据可用性有限。为了解决这个问题,通常采用随机分解技术来产生可能的,统计上一致的降雨事件,这些事件汇总到以较粗尺度收集的田间数据。最近引入了一种在精细时间尺度上随机分解降雨的方法,该方法结合了Bartlett-Lewis过程产生降雨事件以及调整程序以修改较低水平的变量(即每小时),以便与较高的一致一级(即每天)。在本文中,我们扩展了上述方案,该方案最初是设计和测试的,用于在任何亚小时时间范围内将日降雨量分解为小时深度。此外,我们利用了泊松丛集过程的最新发展,该方法将Bartlett-Lewis模型变体纳入该方法中,该变体引入了细胞强度和持续时间之间的依赖性,以捕获亚小时时间尺度上降雨的变化性。分解方案在名为HyetosMinute的R包中实现,以支持从每天到1分钟的时间范围内的分解。该方法的适用性是根据在德国波鸿(Bochum)上收集的5分钟降雨记录评估的,将上述模型变量的性能与原始Bartlett-Lewis过程(具有5个参数的非随机过程)进行了比较。分析表明,分解过程可以在很长时间范围内充分再现降雨的最重要统计特征,而引入强度持续时间相关的模型可以在偏度,极端降雨和干燥比例方面带来更好的性能。

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