How could 50 °C be reached in Paris: Analyzing the CMIP6 ensemble to design storylines for adaptation

IF 4 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Pascal Yiou , Robert Vautard , Yoann Robin , Nathalie de Noblet-Ducoudré , Fabio D’Andrea , Robin Noyelle
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Abstract

Reaching a surface temperature of 50 °C in a heavily populated region, like Paris, would have devastating effects. Although such a high value seems far from the present-day record of 42.6 °C, its occurrence cannot be dismissed by the end of the 21st century, due to the continuous increase of global mean temperature. In this paper, we address two questions that were asked by the City of Paris to a group of scientists: When does this event start to be likely? What are the prevailing meteorological conditions? We base our study on the CMIP6 simulation ensemble. Many of the CMIP6 yield biases in temperature. Rather than using methods of bias correction, which are not necessarily adapted to high extremes, we propose a pragmatic approach of model selection in order to seek such high temperature events that are deemed realistic. We analyze the meteorological conditions leading to first occurrences of such hot events and their common atmospheric patterns. This paper describes a simple data mining approach (on a large ensemble of climate model simulations) which could be adapted to other regions of the world, in order to help decision makers anticipating and adapting to such devastating meteorological events.
如何在巴黎达到 50 °C:分析CMIP6集合,设计适应故事情节
在巴黎这样人口稠密的地区,如果地表温度达到 50 °C,将会产生毁灭性的影响。虽然这一数值似乎与目前的 42.6 ℃ 的记录相去甚远,但由于全球平均气温的持续上升,到 21 世纪末,它的出现不容忽视。在本文中,我们将讨论巴黎市向科学家小组提出的两个问题:什么时候开始可能出现这种情况?当时的气象条件如何?我们的研究基于 CMIP6 模拟集合。许多 CMIP6 都会产生温度偏差。我们提出了一种实用的模型选择方法,以寻找这种被认为是现实的高温事件,而不是使用不一定适应高极端事件的偏差校正方法。我们分析了导致首次出现此类高温事件的气象条件及其常见的大气模式。本文介绍了一种简单的数据挖掘方法(在一个大型气候模型模拟集合上),该方法可适用于世界其他地区,以帮助决策者预测和适应此类破坏性气象事件。
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来源期刊
Climate Services
Climate Services Multiple-
CiteScore
5.30
自引率
15.60%
发文量
62
期刊介绍: The journal Climate Services publishes research with a focus on science-based and user-specific climate information underpinning climate services, ultimately to assist society to adapt to climate change. Climate Services brings science and practice closer together. The journal addresses both researchers in the field of climate service research, and stakeholders and practitioners interested in or already applying climate services. It serves as a means of communication, dialogue and exchange between researchers and stakeholders. Climate services pioneers novel research areas that directly refer to how climate information can be applied in methodologies and tools for adaptation to climate change. It publishes best practice examples, case studies as well as theories, methods and data analysis with a clear connection to climate services. The focus of the published work is often multi-disciplinary, case-specific, tailored to specific sectors and strongly application-oriented. To offer a suitable outlet for such studies, Climate Services journal introduced a new section in the research article type. The research article contains a classical scientific part as well as a section with easily understandable practical implications for policy makers and practitioners. The journal''s focus is on the use and usability of climate information for adaptation purposes underpinning climate services.
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