比利牛斯地区的高分辨率气候变化预测

Q2 Earth and Planetary Sciences
M. P. Amblar-Francés, P. Ramos-Calzado, Jorge Sanchis-Lladó, Alfonso Hernanz-Lázaro, María C. Peral-García, B. Navascués, Marta Domínguez-Alonso, M. Pastor-Saavedra, E. Rodríguez‐Camino
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引用次数: 18

摘要

摘要比利牛斯山脉位于大西洋和地中海气候的过渡地带,是环境条件发生迅速变化的山区的典型例子,对主要是下游人口的水资源供应可能产生影响。降水和温度的高分辨率概率气候变化预估是利益攸关方做出适应新气候条件的明智决策的关键因素。在这条线上,我们在CLIMPY项目框架下,利用CMIP5的24个气候模式,在一个新的高分辨率(5公里× 5公里)观测网格上,应用两种统计降尺度方法(最高和最低温度回归和降水模拟),对比利牛斯地区进行了21世纪的高分辨率气候预估。将统计降尺度应用于这样一个高分辨率的观测网格而不是台站数据,部分地避免了观测现场数据分布不均匀的问题。这种基于统计算法的新高分辨率投影数据库是对广泛使用的基于动态降尺度的EUROCORDEX数据的补充,并允许识别依赖于特定降尺度方法的特征。在我们的分析中,我们不仅关注最高、最低气温和降水的变化,而且关注一些相关的极端指数的变化,以1986-2005年为参考期。尽管气候模式预测到21世纪末极端温度的普遍增加,但温度变化和更多降水变化的确切空间分布仍然不确定,因为它们强烈依赖于模式。此外,就降水而言,模式的不确定性可能掩盖变化的信号(取决于区域)。然而,大量的缩小模型和使用网格的高分辨率使我们能够提供至少在地块水平上的差异信息。在21世纪下半叶,RCP的影响变得显著,极端温度的变化(以块状区分)和分析了本世纪末RCP8.5的相关极端指数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High resolution climate change projections for the Pyrenees region
Abstract. The Pyrenees, located in the transition zone of Atlantic and Mediterranean climates, constitute a paradigmatic example of mountains undergoing rapid changes in environmental conditions, with potential impact on the availability of water resources, mainly for downstream populations. High-resolution probabilistic climate change projections for precipitation and temperature are a crucial element for stakeholders to make well-informed decisions on adaptation to new climate conditions. In this line, we have generated high–resolution climate projections for 21st century by applying two statistical downscaling methods (regression for max and min temperatures, and analogue for precipitation) over the Pyrenees region in the frame of the CLIMPY project over a new high-resolution (5 km  ×  5 km) observational grid using 24 climate models from CMIP5. The application of statistical downscaling to such a high resolution observational grid instead of station data partially circumvent the problems associated to the non-uniform distribution of observational in situ data. This new high resolution projections database based on statistical algorithms complements the widely used EUROCORDEX data based on dynamical downscaling and allows to identify features that are dependent on the particular downscaling method. In our analysis, we not only focus on maximum and minimum temperatures and precipitation changes but also on changes in some relevant extreme indexes, being 1986–2005 the reference period. Although climate models predict a general increase in temperature extremes for the end of the 21st century, the exact spatial distribution of changes in temperature and much more in precipitation remains uncertain as they are strongly model dependent. Besides, for precipitation, the uncertainty associated to models can mask – depending on the zones- the signal of change. However, the large number of downscaled models and the high resolution of the used grid allow us to provide differential information at least at massif level. The impact of the RCP becomes significant for the second half of the 21st century, with changes – differentiated by massifs – of extreme temperatures and analysed associated extreme indexes for RCP8.5 at the end of the century.
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来源期刊
Advances in Science and Research
Advances in Science and Research Earth and Planetary Sciences-Geophysics
CiteScore
4.10
自引率
0.00%
发文量
13
审稿时长
22 weeks
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