Robust global detection of forced changes in mean and extreme precipitation despite observational disagreement on the magnitude of change

I. E. de Vries, S. Sippel, A. Pendergrass, R. Knutti
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引用次数: 4

Abstract

Abstract. Detection and attribution (D&A) of forced precipitation change are challenging due to internal variability, limited spatial, and temporal coverage of observational records and model uncertainty. These factors result in a low signal-to-noise ratio of potential regional and even global trends. Here, we use a statistical method – ridge regression – to create physically interpretable fingerprints for the detection of forced changes in mean and extreme precipitation with a high signal-to-noise ratio. The fingerprints are constructed using Coupled Model Intercomparison Project phase 6 (CMIP6) multi-model output masked to match coverage of three gridded precipitation observational datasets – GHCNDEX, HadEX3, and GPCC – and are then applied to these observational datasets to assess the degree of forced change detectable in the real-world climate in the period 1951–2020. We show that the signature of forced change is detected in all three observational datasets for global metrics of mean and extreme precipitation. Forced changes are still detectable from changes in the spatial patterns of precipitation even if the global mean trend is removed from the data. This shows the detection of forced change in mean and extreme precipitation beyond a global mean trend is robust and increases confidence in the detection method's power as well as in climate models' ability to capture the relevant processes that contribute to large-scale patterns of change. We also find, however, that detectability depends on the observational dataset used. Not only coverage differences but also observational uncertainty contribute to dataset disagreement, exemplified by the times of emergence of forced change from internal variability ranging from 1998 to 2004 among datasets. Furthermore, different choices for the period over which the forced trend is computed result in different levels of agreement between observations and model projections. These sensitivities may explain apparent contradictions in recent studies on whether models under- or overestimate the observed forced increase in mean and extreme precipitation. Lastly, the detection fingerprints are found to rely primarily on the signal in the extratropical Northern Hemisphere, which is at least partly due to observational coverage but potentially also due to the presence of a more robust signal in the Northern Hemisphere in general.
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尽管在变化幅度上存在观测分歧,但对平均降水量和极端降水量的强迫变化进行了强有力的全球检测
摘要由于观测记录的内部可变性、有限的空间和时间覆盖范围以及模型的不确定性,强迫降水变化的检测和归因(D&A)具有挑战性。这些因素导致潜在区域甚至全球趋势的信噪比较低。在这里,我们使用一种统计方法——岭回归——来创建物理上可解释的指纹,用于检测具有高信噪比的平均和极端降水的强迫变化。指纹是使用耦合模型相互比较项目第6阶段(CMIP6)多模型输出构建的,该输出被屏蔽以匹配三个网格降水观测数据集——GHCNDEX、HadEX3和GPCC——的覆盖范围,然后应用于这些观测数据集,以评估1951年至2020年期间在现实世界气候中可检测到的强迫变化程度。我们表明,在全球平均和极端降水量指标的所有三个观测数据集中都检测到了强迫变化的特征。即使从数据中去除了全球平均趋势,从降水的空间模式变化中仍然可以检测到强迫变化。这表明,对超过全球平均趋势的平均和极端降水量的强迫变化的检测是稳健的,并增加了人们对检测方法的能力以及气候模型捕捉导致大规模变化模式的相关过程的能力的信心。然而,我们也发现,可探测性取决于所使用的观测数据集。不仅覆盖范围的差异,而且观测的不确定性也导致了数据集的分歧,例如1998年至2004年数据集内部变异性导致的强迫变化。此外,对计算强迫趋势的时间段的不同选择导致观测值和模型预测之间的一致程度不同。这些敏感性可能解释了最近关于模型是否低估或高估了观测到的平均和极端降水量的强迫增加的研究中的明显矛盾。最后,检测指纹主要依赖于温带北半球的信号,这至少部分是由于观测覆盖范围,但也可能是由于北半球普遍存在更强大的信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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