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A Robust Method to Update Local River Inundation Maps Using Global Climate Model Output and Weather Typing Based Statistical Downscaling

机译:一种强大的方法,可以使用全球气候模型输出和基于天气键入的统计折叠方式更新当地河流淹没地图

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Global warming is changing the magnitude and frequency of extreme precipitation events. This requires updating local rainfall intensity-duration-frequency (IDF) curves and flood hazard maps according to the future climate scenarios. This is, however, far from straightforward, given our limited ability to model the effects of climate change on the temporal and spatial variability of rainfall at small scales. In this study, we develop a robust method to update local IDF relations for sub-daily rainfall extremes using Global Climate Model (GCM) data, and we apply it to a coastal town in NW Spain. First, the relationship between large-scale atmospheric circulation, described by means of Lamb Circulation Type classification (LCT), and rainfall events with potential for flood generation is analyzed. A broad ensemble set of GCM runs is used to identify frequency changes in LCTs, and to assess the occurrence of flood generating events in the future. In a parallel way, we use this Weather Type (WT) classification and climate-flood linkages to downscale rainfall from GCMs, and to determine the IDF curves for the future climate scenarios. A hydrological-hydraulic modeling chain is then used to quantify the changes in flood maps induced by the IDF changes. The results point to a future increase in rainfall intensity for all rainfall durations, which consequently results in an increased flood hazard in the urban area. While acknowledging the uncertainty in the GCM projections, the results show the need to update IDF standards and flood hazard maps to reflect potential changes in future extreme rainfall intensities.
机译:全球变暖正在改变极端降水事件的幅度和频率。这需要更新当地降雨强度持续时间(IDF)曲线和洪水危险地图根据未来的气候情景。然而,鉴于我们在小尺度下降雨的时间和空间变化的效果的能力有限的能力,这远远不如直截了当。在这项研究中,我们开发了一种强大的方法,可以使用全球气候模型(GCM)数据更新当地IDF关系,以便使用全球气候模型(GCM)数据,并将其应用于西班牙的沿海城镇。首先,分析了通过羔羊循环类型分类(LCT)描述的大规模大气循环之间的关系以及具有洪水潜力的降雨事件。广泛的GCM运行集用于识别LCT中的频率变化,并评估将来的洪水产生事件发生。以平行的方式,我们使用这种天气类型(WT)分类和气候泛滥链接到GCMS的低级降雨,并确定未来气候情景的IDF曲线。然后使用水文液压建模链来量化IDF变化引起的洪水图的变化。结果指出了所有降雨持续时间的降雨强度的未来增加,从而导致城市地区的洪水危害增加。在承认GCM预测中的不确定性的同时,结果表明需要更新IDF标准和洪水危险地图,以反映未来极端降雨强度的潜在变化。

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