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Evaluation of MEVD-based precipitation frequency analyses from quasiglobal precipitation datasets against dense rain gauge networks

机译:基于MEVD的降水频率分析基于密集雨量计网络的准全球降水数据集的评估

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Precipitation extremes and associated hydrological hazards pose a significant global risk to society and economy. To be effective, mitigation strategies require the best possible estimation of the intensity and frequency of precipitation extremes. Traditional approaches to precipitation frequency analysis rely on long-term records from in-situ observations, which are limited in terms of global coverage. Satellite-based precipitation products provide global coverage, but errors in these estimates may lead to large biases in the quantification of extremes. Previous studies have demonstrated the ability of the novel Metastatistical Extreme Value Distribution (MEVD) framework to provide robust estimates of high quantiles in the presence of short-term data records and the uncertainties typical of remote sensing precipitation products. Here, we evaluate MEVD-based precipitation frequency analyses for four widely used quasi-global precipitation products (IMERG-v6, GSMaP-v6, CMORPHv1.0,and MSWEP-v2) over high-density gauge networks in five hydroclimatic regions (Austria, Italy, Florida,Texas, and Arizona). We show dependence of MEVD-based estimation error on the characteristics of each dataset and the hydroclimatic region. Additionally, we evaluate the sub-grid variability of extreme precipitation and demonstrate the impact of spatial scale mismatch (that is, single in-situ gauge versus satellite pixel) on the frequency analysis of extremes. This work provides an assessment of the use of MEVD for estimating precipitation extremes from globally available datasets and an understanding of the variability of sub-daily precipitation extremes in different hydroclimatic regions of the world.
机译:极端降水和相关的水文灾害对社会和经济构成重大的全球风险。为了有效,缓解策略需要对极端降水的强度和频率进行尽可能最好的估计。传统的降水频率分析方法依赖于原位观测的长期记录,而这些记录在全球覆盖面方面受到限制。基于卫星的降水产品提供全球覆盖,但这些估计中的错误可能导致极端天气量化的巨大偏差。先前的研究表明,新的元统计极值分布(MEVD)框架能够在存在短期数据记录和遥感降水产品典型不确定性的情况下提供高分位数的稳健估计。在这里,我们评估了四种广泛使用的准全球降水产品(IMERG-v6、GSMaP-v6、CMORPHv1.0 和 MSWEP-v2)在五个水文气候区(奥地利、意大利、佛罗里达州、德克萨斯州和亚利桑那州)的高密度仪表网络上的基于 MEVD 的降水频率分析。我们显示了基于MEVD的估计误差对每个数据集和水文气候区域特征的依赖性。此外,我们评估了极端降水的子网格变异性,并证明了空间尺度不匹配(即单个原位仪表与卫星像素)对极端频率分析的影响。这项工作评估了使用MEVD从全球可用数据集估计极端降水的情况,并了解了世界不同水文气候区域日以下降水极端值的变化。

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