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Simulating future precipitation extremes in a complex Alpine catchment

机译:在复杂的高山流域模拟未来的极端降水

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The objectives of the present investigation are (i) to study the effects of climate change on precipitation extremes and (ii) to assess the uncertainty in the climate projections. The investigation is performed on the Lech catchment, located in the Northern Limestone Alps. In order to estimate the uncertainty in the climate projections, two statistical downscaling models as well as a number of global and regional climate models were considered. The downscaling models applied are the Expanded Downscaling (XDS) technique and the Long Ashton Research Station Weather Generator (LARS-WG). The XDS model, which is driven by analyzed or simulated large-scale synoptic fields, has been calibrated using ECMWF-interim reanalysis data and local station data. LARS-WG is controlled through stochastic parameters representing local precipitation variability, which are calibrated from station data only. Changes in precipitation mean and variability as simulated by climate models were then used to perturb the parameters of LARS-WG in order to generate climate change scenarios. In our study we use climate simulations based on the A1B emission scenario. The results show that both downscaling models perform well in reproducing observed precipitation extremes. In general, the results demonstrate that the projections are highly variable. The choice of both the GCM and the downscaling method are found to be essential sources of uncertainty. For spring and autumn, a slight tendency toward an increase in the intensity of future precipitation extremes is obtained, as a number of simulations show statistically significant increases in the intensity of 90th and 99th percentiles of precipitation on wet days as well as the 5- and 20-yr return values.
机译:本研究的目的是(i)研究气候变化对极端降水的影响,以及(ii)评估气候预测中的不确定性。调查是在北部石灰石阿尔卑斯山的莱希流域进行的。为了估计气候预测的不确定性,考虑了两个统计缩减模型以及许多全球和区域气候模型。应用的缩减模型是扩展缩减(XDS)技术和Long Ashton研究站天气生成器(LARS-WG)。 XDS模型是由已分析或模拟的大尺度天气场驱动的,已使用ECMWF临时重新分析数据和本地站数据进行了校准。 LARS-WG是通过代表局部降水变化的随机参数控制的,这些参数仅根据台站数据进行校准。然后使用气候模型模拟的降水均值和变异性变化来扰动LARS-WG的参数,以产生气候变化情景。在我们的研究中,我们使用基于A1B排放情景的气候模拟。结果表明,两种降尺度模型在再现观测到的极端降水方面都表现良好。总的来说,结果表明预测是高度可变的。 GCM和缩减方法的选择被发现是不确定性的重要来源。对于春季和秋季,未来的极端降水强度会略有增加,因为许多模拟表明,在潮湿的日子以及5日和5日,降水的90%和99%百分位数的强度有统计学显着增加。 20年的返回值。

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