Angélil Oliver, Perkins-Kirkpatrick Sarah, Alexander Lisa V, Stone Dáithí, Donat Markus G, Wehner Michael, Shiogama Hideo, Ciavarella Andrew, Christidis Nikolaos
Climate Change Research Centre and ARC Centre of Excellence for Climate System Science, UNSW Australia, Sydney NSW 2052, Australia.
Lawrence Berkeley National Laboratory, Berkeley, CA 94720, USA.
Weather Clim Extrem. 2016 Sep;13:35-43. doi: 10.1016/j.wace.2016.07.001.
A growing field of research aims to characterise the contribution of anthropogenic emissions to the likelihood of extreme weather and climate events. These analyses can be sensitive to the shapes of the tails of simulated distributions. If tails are found to be unrealistically short or long, the anthropogenic signal emerges more or less clearly, respectively, from the noise of possible weather. Here we compare the chance of daily land-surface precipitation and near-surface temperature extremes generated by three Atmospheric Global Climate Models typically used for event attribution, with distributions from six reanalysis products. The likelihoods of extremes are compared for area-averages over grid cell and regional sized spatial domains. Results suggest a bias favouring overly strong attribution estimates for hot and cold events over many regions of Africa and Australia, and a bias favouring overly weak attribution estimates over regions of North America and Asia. For rainfall, results are more sensitive to geographic location. Although the three models show similar results over many regions, they do disagree over others. Equally, results highlight the discrepancy amongst reanalyses products. This emphasises the importance of using multiple reanalysis and/or observation products, as well as multiple models in event attribution studies.
一个不断发展的研究领域旨在描述人为排放对极端天气和气候事件可能性的贡献。这些分析可能对模拟分布的尾部形状敏感。如果发现尾部过短或过长不切实际,那么人为信号将分别或多或少地从可能天气的噪声中清晰显现出来。在此,我们将通常用于事件归因的三个大气全球气候模型所生成的每日陆地表面降水和近地表温度极端值的概率,与六种再分析产品的分布进行比较。针对网格单元和区域大小的空间域上的面积平均值,比较极端值的概率。结果表明,在非洲和澳大利亚的许多地区,存在偏向于对炎热和寒冷事件的归因估计过强的偏差,而在北美和亚洲地区,则存在偏向于归因估计过弱的偏差。对于降雨,结果对地理位置更为敏感。尽管这三个模型在许多地区显示出相似的结果,但在其他地区也存在分歧。同样,结果凸显了再分析产品之间的差异。这强调了在事件归因研究中使用多种再分析和/或观测产品以及多种模型的重要性。