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A basis set for exploration of sensitivity to prescribed ocean conditions for estimating human contributions to extreme weather in CAM5.1-1degree

机译:探索对规定海洋条件的敏感性以估算人类对CAM5.1-1度极端天气的贡献的基础

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This paper presents two contributions for research into better understanding the role of anthropogenic warming in extreme weather. The first contribution is the generation of a large number of multi-decadal simulations using a medium-resolution atmospheric climate model, CAM5.1-1degree, under two scenarios of historical climate following the protocols of the C20C+?Detection and Attribution project: the one we have experienced (All-Hist), and one that might have been experienced in the absence of human interference with the climate system (Nat-Hist). These simulations are specifically designed for understanding extreme weather and atmospheric variability in the context of anthropogenic climate change.The second contribution takes advantage of the duration and size of these simulations in order to identify features of variability in the prescribed ocean conditions that may strongly influence calculated estimates of the role of anthropogenic emissions on extreme weather frequency (event attribution). There is a large amount of uncertainty in how much anthropogenic emissions should warm regional ocean surface temperatures, yet contributions to the C20C+?Detection and Attribution project and similar efforts so far use only one or a limited number of possible estimates of the ocean warming attributable to anthropogenic emissions when generating their Nat-Hist simulations. Thus, the importance of the uncertainty in regional attributable warming estimates to the results of event attribution studies is poorly understood. The identification of features of the anomalous ocean state that seem to strongly influence event attribution estimates should therefore be able to serve as a basis set for effective sampling of other plausible attributable warming patterns. The identification performed in this paper examines monthly temperature and precipitation output from the CAM5.1-1degree simulations averaged over 237 land regions, and compares interannual anomalous variations in the ratio between the frequencies of extremes in the All-Hist and Nat-Hist simulations against variations in ocean temperatures.
机译:本文为更好地了解人为变暖在极端天气中的作用提供了两个研究成果。第一个贡献是根据C20C +?Detection and Attribution项目的协议,在两种历史气候情景下,使用中等分辨率的大气气候模型CAM5.1-1degree生成了大量的多年代际模拟:我们经历过(All-Hist),而在没有人为干预气候系统的情况下可能经历过(Nat-H​​ist)。这些模拟是专门为了解人为气候变化背景下的极端天气和大气变化而设计的。第二项贡献是利用这些模拟的持续时间和大小来确定可能强烈影响计算结果的规定海洋条件下的变化特征人为排放对极端天气频率(事件归因)的作用的估计。关于多少人为排放量应该使区域海洋表面温度变暖存在很大的不确定性,但是对C20C +?探测和归因项目以及类似工作的贡献到目前为止仅使用了一种或有限的可能的对海洋变暖的估计生成Nat-H​​ist模拟时的人为排放。因此,人们对区域归因变暖估计中不确定性对事件归因研究结果的重要性了解得很少。因此,对异常海洋状态特征的识别似乎对事件归因估计有很大影响,因此应该能够作为对其他可能的归因于变暖模式进行有效采样的基础。本文进行的识别检查了237个陆地区域的CAM5.1-1度模拟的月平均温度和降水输出,并比较了All-Hist和Nat-H​​ist模拟的极端频率之间的年际异常变化与海洋温度的变化。

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