使用大量区域气候模式模拟的中欧强降水的长期变化

Florian Ehmele, Lisa‐Ann Kautz, H. Feldmann, J. Pinto
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引用次数: 19

摘要

摘要大范围的洪水事件是中欧的主要自然灾害之一。这类事件通常与大面积的密集、持久降水有关。尽管在过去三十年中(如1997年、1999年、2002年和2013年)发生了一些严重的洪水,但极端洪水是罕见的,并且与100年以上的估计长周期相关。为了评估这类极端事件的相关风险,需要可靠的降水和流量统计数据。然而,综合观测主要是在过去50-60年或更短的时间内获得的。使用随机数据集可以减少这个缺点。实现这一目标的一种可能性是考虑气候模式数据或扩展的再分析。本研究提出并讨论了对不同的百年数据集、十年预测以及对未来十年的预测的验证,并结合了一个新的大集合。水平分辨率超过100公里的20世纪全球再分析已经用一个区域气候模式动态地缩小了尺度(小尺度模式联盟-气候模式;cosmos - clm)向更高的分辨率(25公里)迈进。新数据集首先使用干日调整进行过滤。评估的重点是密集、广泛的降水事件以及相关的时间变化和趋势。所提出的集合数据在统计分布和时间序列的观测范围内。捕获了过去60年的时间演变。结果表明,随着降水率增加和减少的阶段,存在一定的长期变异性。调查地区之间的总体趋势有所不同,但大多数都是显著的。对未来十年的预测显示出面积降水增加的持续趋势。所提出的区域气候模式(RCM)集合不仅在一般情况下允许更稳健的统计,而且也适合于更好地估计极值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Long-term variance of heavy precipitation across central Europe using a large ensemble of regional climate model simulations
Abstract. Widespread flooding events are among the major natural hazards in central Europe. Such events are usually related to intensive, long-lasting precipitation over larger areas. Despite some prominent floods during the last three decades (e.g., 1997, 1999, 2002, and 2013), extreme floods are rare and associated with estimated long return periods of more than 100 years. To assess the associated risks of such extreme events, reliable statistics of precipitation and discharge are required. Comprehensive observations, however, are mainly available for the last 50–60 years or less. This shortcoming can be reduced using stochastic data sets. One possibility towards this aim is to consider climate model data or extended reanalyses. This study presents and discusses a validation of different century-long data sets, decadal hindcasts, and also predictions for the upcoming decade combined to a new large ensemble. Global reanalyses for the 20th century with a horizontal resolution of more than 100 km have been dynamically downscaled with a regional climate model (Consortium for Small-scale Modeling – CLimate Mode; COSMO-CLM) towards a higher resolution of 25 km. The new data sets are first filtered using a dry-day adjustment. Evaluation focuses on intensive widespread precipitation events and related temporal variabilities and trends. The presented ensemble data are within the range of observations for both statistical distributions and time series. The temporal evolution during the past 60 years is captured. The results reveal some long-term variability with phases of increased and decreased precipitation rates. The overall trend varies between the investigation areas but is mostly significant. The predictions for the upcoming decade show ongoing tendencies with increased areal precipitation. The presented regional climate model (RCM) ensemble not only allows for more robust statistics in general, it is also suitable for a better estimation of extreme values.
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