论文标题

天气极端事件中普遍缩放的出现

Emergence of universal scaling in weather extreme events

论文作者

Yao, Qing, Fan, Jingfang, Meng, Jun, Lucarini, Valerio, Jensen, Henrik Jeldtoft, Christensen, Kim, Chen, Xiaosong

论文摘要

在过去的几年中,由于人为的气候变化,天气极端事件的频率和幅度显着增加。但是,全球统计特征和潜在的物理机制仍未完全了解。在这里,我们采用基于统计的物理学和基于概率理论的方法来研究极端天气事件的性质,尤其是日常空气温度差异的统计。这些统计测量结果表明,极端事件的幅度的分布满足了通用\ textit {gumbel}分布,而这些极端事件的等待时间则由通用\ textit {gamma}函数控制。进一步的有限尺寸效应分析表明稳定的缩放行为。我们还公布了记录事件之间对数等待时间的累积分布遵循\ textit {指数}分布,并且该气候系统的演变是基本动力学与张力减速有关的定向。普遍的缩放定律非常稳定,不受全球变暖的影响。违反直觉,与记录动态的预期不同,我们发现极端温度可变性的地震数量不会随着时间的推移而衰减,而是与大规模气候极端事件有关的偏差。我们的理论框架为普遍性,规模和气候系统的联系提供了新的视角。这些发现阐明了天气变化的性质,可以指导我们更好地预测极端事件。

The frequency and magnitude of weather extreme events have increased significantly during the past few years in response to anthropogenic climate change. However, global statistical characteristics and underlying physical mechanisms are still not fully understood. Here, we adopt a statistical physics and probability theory based method to investigate the nature of extreme weather events, particularly the statistics of the day-to-day air temperature differences. These statistical measurements reveal that the distributions of the magnitudes of the extreme events satisfy a universal \textit{Gumbel} distribution, while the waiting time of those extreme events is governed by a universal \textit{Gamma} function. Further finite-size effects analysis indicates robust scaling behaviours. We additionally unveil that the cumulative distribution of logarithmic waiting times between the record events follows an \textit{Exponential} distribution and that the evolution of this climate system is directional where the underlying dynamics are related to a decelerating release of tension. The universal scaling laws are remarkably stable and unaffected by global warming. Counterintuitively, unlike as expected for record dynamics, we find that the number of quakes of the extreme temperature variability does not decay as one over time but with deviations relevant to large-scale climate extreme events. Our theoretical framework provides a fresh perspective on the linkage of universality, scaling, and climate systems. The findings throw light on the nature of the weather variabilities and could guide us to better forecast extreme events.

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