气候极端事件归因的多变量峰值超过阈值模型和反事实理论

A. Kiriliouk, P. Naveau
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引用次数: 16

摘要

数值气候模式是复杂的,并且结合了大量的物理过程。它们是量化潜在人为原因(例如,目前温室气体的增加)对强降雨等高影响大气变量的相对贡献的关键工具。这些所谓的气候极端事件归因问题在多变量背景下尤其具有挑战性,也就是说,当大气变量在可能的高维网格上测量时。在本文中,我们利用两种统计理论来评估多元极端事件归因背景下的因果关系。当我们认为一个事件是极端的,当感兴趣的向量的至少一个分量很大时,极值理论证明,在渐近意义上,一个多元广义帕累托分布来模拟联合极值。在这类分布下,我们推导并研究了由Pearl的反事实理论定义的充分必要因果的概率。为了增加因果证据,我们提出了一种基于最优线性投影的降维策略,使因果概率最大化。我们的方法在模拟实例上进行了测试,并应用于法国CNRM最近的CMIP6实验的每周冬季最大降水输出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Climate extreme event attribution using multivariate peaks-over-thresholds modeling and counterfactual theory
Numerical climate models are complex and combine a large number of physical processes. They are key tools in quantifying the relative contribution of potential anthropogenic causes (e.g., the current increase in greenhouse gases) on high impact atmospheric variables like heavy rainfall. These so-called climate extreme event attribution problems are particularly challenging in a multivariate context, that is, when the atmospheric variables are measured on a possibly high-dimensional grid. In this paper, we leverage two statistical theories to assess causality in the context of multivariate extreme event attribution. As we consider an event to be extreme when at least one of the components of the vector of interest is large, extreme-value theory justifies, in an asymptotical sense, a multivariate generalized Pareto distribution to model joint extremes. Under this class of distributions, we derive and study probabilities of necessary and sufficient causation as defined by the counterfactual theory of Pearl. To increase causal evidence, we propose a dimension reduction strategy based on the optimal linear projection that maximizes such causation probabilities. Our approach is tested on simulated examples and applied to weekly winter maxima precipitation outputs of the French CNRM from the recent CMIP6 experiment.
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