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A probabilistic analysis of human influence on recent record global mean temperature changes

机译:人类对最近记录的全球平均温度变化的影响的概率分析

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Abstract December 2013 was the 346th consecutive month where global land and ocean average surface temperature exceeded the 20th century monthly average, with February 1985 the last time mean temperature fell below this value. Even given these and other extraordinary statistics, public acceptance of human induced climate change and confidence in the supporting science has declined since 2007. The degree of uncertainty as to whether observed climate changes are due to human activity or are part of natural systems fluctuations remains a major stumbling block to effective adaptation action and risk management. Previous approaches to attribute change include qualitative expert-assessment approaches such as used in {IPCC} reports and use of ‘fingerprinting’ methods based on global climate models. Here we develop an alternative approach which provides a rigorous probabilistic statistical assessment of the link between observed climate changes and human activities in a way that can inform formal climate risk assessment. We construct and validate a time series model of anomalous global temperatures to June 2010, using rates of greenhouse gas (GHG) emissions, as well as other causal factors including solar radiation, volcanic forcing and the El Ni?o Southern Oscillation. When the effect of {GHGs} is removed, bootstrap simulation of the model reveals that there is less than a one in one hundred thousand chance of observing an unbroken sequence of 304 months (our analysis extends to June 2010) with mean surface temperature exceeding the 20th century average. We also show that one would expect a far greater number of short periods of falling global temperatures (as observed since 1998) if climate change was not occurring. This approach to assessing probabilities of human influence on global temperature could be transferred to other climate variables and extremes allowing enhanced formal risk assessment of climate change.
机译:摘要2013年12月是全球陆地和海洋平均地表温度超过20世纪月平均水平的连续第346个月,而1985年2月是最后一次平均温度低于该值。即使有这些统计数据和其他非常规统计数据,自2007年以来公众对人类诱发的气候变化的接受程度以及对支持科学的信心仍在下降。关于观测到的气候变化是否是由于人类活动还是自然系统波动的一部分,不确定性仍然是有效适应行动和风险管理的主要绊脚石。先前用于属性更改的方法包括定性的专家评估方法,例如{IPCC}报告中使用的方法,以及基于全球气候模型的“指纹”方法的使用。在这里,我们开发了一种替代方法,该方法可以对观测到的气候变化与人类活动之间的联系进行严格的概率统计评估,从而可以为正式的气候风险评估提供依据。我们使用温室气体(GHG)排放率以及其他因果因素,包括太阳辐射,火山强迫和厄尔尼诺南方涛动,构建并验证了截至2010年6月的全球温度异常的时间序列模型。消除{GHGs}的影响后,对该模型进行的自举模拟显示,只有不到十分之一的机会观察到304个月的连续序列(我们的分析持续到2010年6月),且平均表面温度超过了20世纪的平均水平。我们还表明,如果不发生气候变化,人们将会期望全球气温下降的短期数量(自1998年以来观察到的数量)更多。这种评估人类对全球温度影响的可能性的方法可以转移到其他气候变量和极端值,从而可以加强对气候变化的正式风险评估。

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