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Signal detection in global mean temperatures after “Paris”: an uncertainty and sensitivity analysis

机译:“巴黎”之后的全局平均温度下的信号检测:不确定度和敏感性分析

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In December 2015, 195 countries agreed in Paris to hold the increase in global mean surface temperature (GMST) well below 2.0?°C above pre-industrial levels and to pursue efforts to limit the temperature increase to 1.5?°C. Since large financial flows will be needed to keep GMSTs below these targets, it is important to know how GMST has progressed since pre-industrial times. However, the Paris Agreement is not conclusive as regards methods to calculate it. Should trend progression be deduced from GCM simulations or from instrumental records by (statistical) trend methods? Which simulations or GMST datasets should be chosen, and which trend models? What is pre-industrial and, finally, are the Paris targets formulated for total warming, originating from both natural and anthropogenic forcing, or do they refer to anthropogenic warming only? To find answers to these questions we performed an uncertainty and sensitivity analysis where datasets and model choices have been varied. For all cases we evaluated trend progression along with uncertainty information. To do so, we analysed four trend approaches and applied these to the five leading observational GMST products. We find GMST progression to be largely independent of various trend model approaches. However, GMST progression is significantly influenced by the choice of GMST datasets. Uncertainties due to natural variability are largest in size. As a parallel path, we calculated GMST progression from an ensemble of 42 GCM simulations. Mean progression derived from GCM-based GMSTs appears to lie in the range of trend–dataset combinations. A difference between both approaches appears to be the width of uncertainty bands: GCM simulations show a much wider spread. Finally, we discuss various choices for pre-industrial baselines and the role of warming definitions. Based on these findings we propose an estimate for signal progression in GMSTs since pre-industrial.
机译:2015年12月,195个国家在巴黎同意,持续低于工业前水平的全球平均表面温度(GMST)的增加,并追求将温度增加到1.5Ω°C的努力。由于需要大的财务流动来使GMSTS低于这些目标,因此知道自工业前期以来的GMST是如何进行的。但是,对于计算它的方法,巴黎协议并没有得出决定性。应该从GCM模拟中推导出趋势进展或通过(统计)趋势方法从乐器记录中推断出来?应选择哪种模拟或GMST数据集,以及哪种趋势模型?什么是预工业,最后,是对全身升温的总体靶标配制的巴黎目标,源自天然和人为强制,或者他们仅供人为升温?为了找到这些问题的答案,我们执行了不确定性和敏感性分析,其中数据集和模型选择已经过各种各样。对于所有案例,我们评估了趋势进展以及不确定性信息。为此,我们分析了四种趋势方法,并将这些趋势方法应用于五个领先的观察GMST产品。我们发现GMST进步在很大程度上独立于各种趋势模型方法。但是,GMST进展受到GMST数据集的选择受到显着影响。由于自然变异性的不确定性大小最大。作为平行路径,我们从42个GCM模拟的集合计算了GMST进展。从基于GCM的GMSTS派生的平均进展似乎位于趋势数据集合的范围内。两种方法之间的差异似乎是不确定性频段的宽度:GCM模拟显示得更广泛。最后,我们讨论了预工业基准的各种选择以及变暖定义的作用。基于这些发现,我们提出了自工工业前的GMSTS信号进展的估计。

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