在可预测性范围内基于预报的冬季热浪归因

N. Leach, A. Weisheimer, M. Allen, T. Palmer
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引用次数: 11

摘要

人类如何影响个别极端天气事件的问题在科学上和社会上都很重要。然而,气候模式对驱动天气的过程链中关键机制的表述存在缺陷,降低了我们对人类对极端事件影响估计的信心。我们建议使用成功预测事件的预测模型可以增加这种估计的稳健性。使用成功的预报意味着我们可以确信模型能够忠实地代表特定极端事件的特征。我们使用这种基于预测的方法来估计二氧化碳浓度增加(人类影响的一个组成部分,但不是全部)对2019年2月欧洲热浪的直接辐射影响。在过去十年中,极端天气事件的归因作为一个领域迅速扩大。然而,由于气候模式对极端事件关键动力驱动因素表征的不足,人们对基于气候模式的归因研究的稳健性感到担忧。也有人提出,由于动态噪声压倒了任何气候变化信号,无条件的基于风险的事件归因方法可能导致假阴性结果。“故事线”归因框架旨在减轻这些担忧,在该框架中,气候变化对极端事件的个别驱动因素的影响进行了研究。在这里,我们提出了一种极端天气事件归因的方法,该方法使用了欧洲中期天气预报中心(ECMWF)的中期预报模型,该模型成功地预测了极端天气事件。成功预测的使用不仅确保模型能够准确地代表有问题的事件,而且还确保分析是明确的这一特定事件的归因,而不是多个具有共同特征的不同事件的混合。由于这种归因方法取决于在预测初始化时可预测的事件组成部分,因此我们展示了如何调整预测的前置时间可以灵活地设置所需的条件调节水平。这种对条件的灵活调整使我们能够在故事情节(高度条件化)和基于风险(相对非条件化)的方法之间进行综合。我们通过将二氧化碳浓度增加对2019年2月欧洲异常冬季热浪的直接辐射效应部分归因,证明了这种基于预测的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecast-based attribution of a winter heatwave within the limit of predictability
Significance The question of how humans have influenced individual extreme weather events is both scientifically and socially important. However, deficiencies in climate models’ representations of key mechanisms within the process chains that drive weather reduce our confidence in estimates of the human influence on extreme events. We propose that using forecast models that successfully predicted the event in question could increase the robustness of such estimates. Using a successful forecast means we can be confident that the model is able to faithfully represent the characteristics of the specific extreme event. We use this forecast-based methodology to estimate the direct radiative impact of increased CO2 concentrations (one component, but not the entirety, of human influence) on the European heatwave of February 2019. Attribution of extreme weather events has expanded rapidly as a field over the past decade. However, deficiencies in climate model representation of key dynamical drivers of extreme events have led to some concerns over the robustness of climate model–based attribution studies. It has also been suggested that the unconditioned risk-based approach to event attribution may result in false negative results due to dynamical noise overwhelming any climate change signal. The “storyline” attribution framework, in which the impact of climate change on individual drivers of an extreme event is examined, aims to mitigate these concerns. Here we propose a methodology for attribution of extreme weather events using the operational European Centre for Medium-Range Weather Forecasts (ECMWF) medium-range forecast model that successfully predicted the event. The use of a successful forecast ensures not only that the model is able to accurately represent the event in question, but also that the analysis is unequivocally an attribution of this specific event, rather than a mixture of multiple different events that share some characteristic. Since this attribution methodology is conditioned on the component of the event that was predictable at forecast initialization, we show how adjusting the lead time of the forecast can flexibly set the level of conditioning desired. This flexible adjustment of the conditioning allows us to synthesize between a storyline (highly conditioned) and a risk-based (relatively unconditioned) approach. We demonstrate this forecast-based methodology through a partial attribution of the direct radiative effect of increased CO2 concentrations on the exceptional European winter heatwave of February 2019.
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