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Evaluation of different downscaling techniques for hydrological climate-change impact studies at the catchment scale

机译:在流域尺度上评估用于水文气候变化影响研究的不同降尺度技术

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摘要

Hydrological modeling for climate-change impact assessment implies using meteorological variables simulated by global climate models (GCMs). Due to mismatching scales, coarse-resolution GCM output cannot be used directly for hydrological impact studies but rather needs to be downscaled. In this study, we investigated the variability of seasonal streamflow and flood-peak projections caused by the use of three statistical approaches to downscale precipitation from two GCMs for a meso-scale catchment in southeastern Sweden: (1) an analog method (AM), (2) a multi-objective fuzzy-rule-based classification (MOFRBC) and (3) the Statistical DownScaling Model (SDSM). The obtained higher-resolution precipitation values were then used to simulate daily streamflow for a control period (1961-1990) and for two future emission scenarios (2071-2100) with the precipitation-streamflow model HBV. The choice of downscaled precipitation time series had a major impact on the streamflow simulations, which was directly related to the ability of the downscaling approaches to reproduce observed precipitation. Although SDSM was considered to be most suitable for downscaling precipitation in the studied river basin, we highlighted the importance of an ensemble approach. The climate and streamflow change signals indicated that the current flow regime with a snow-melt-driven spring flood in April will likely change to a flow regime that is rather dominated by large winter streamflows. Spring flood events are expected to decrease considerably and occur earlier, whereas autumn flood peaks are projected to increase slightly. The simulations demonstrated that projections of future streamflow regimes are highly variable and can even partly point towards different directions.
机译:用于气候变化影响评估的水文模型意味着使用全球气候模型(GCM)模拟的气象变量。由于比例尺不匹配,粗分辨率的GCM输出不能直接用于水文影响研究,而需要缩小比例。在这项研究中,我们调查了瑞典东南部中尺度集水区采用两种统计学方法从两个GCM降尺度降水引起的季节性流量和洪峰预测的变化性:(1)一种模拟方法(AM), (2)多目标基于模糊规则的分类(MOFRBC)和(3)统计缩减尺度模型(SDSM)。然后,使用降水-流量模型HBV,将获得的更高分辨率的降水值用于模拟一个控制时期(1961-1990年)和两个未来排放情景(2071-2100)的每日流量。缩减降水时间序列的选择对流模拟具有重大影响,这直接与缩减方法重现观测降水的能力有关。尽管SDSM被认为最适合于所研究流域的降尺度降水,但我们强调了整体方法的重要性。气候和水流变化信号表明,当前以四月融雪为动力的春季洪水的水流态势可能会改变为以冬季大水流为主的水流态势。预计春季洪水事件将大大减少并提前发生,而秋季洪水高峰预计将略有增加。模拟表明,对未来水流状况的预测是高度可变的,甚至可以部分指向不同的方向。

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