Attributing high-impact extreme events across timescales—a case study of four different types of events

被引:0
|
作者
Friederike E. L. Otto
Sjoukje Philip
Sarah Kew
Sihan Li
Andrew King
Heidi Cullen
机构
[1] University of Oxford,Environmental Change Institute
[2] Royal Netherlands Meteorological Institute (KNMI),R&D Weather and Climate Models
[3] University of Melbourne,School of Earth Sciences and ARC Centre of Excellence for Climate System Science
[4] Climate Central,undefined
来源
Climatic Change | 2018年 / 149卷
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摘要
Increasing likelihoods of extreme weather events is the most noticeable and damaging manifestation of anthropogenic climate change. In the aftermath of an extreme event, policy makers are often called upon to make timely and sensitive decisions about rebuilding and managing present and future risks. Information regarding whether, where and how present-day and future risks are changing is needed to adequately inform these decisions. But, this information is often not available and when it is, it is often not presented in a systematic way. Here, we demonstrate a seamless approach to the science of extreme event attribution and future risk assessment by using the same set of model ensembles to provide such information on past, present and future hazard risks in four case studies on different types of events. Given the current relevance, we focus on estimating the change in future hazard risk under 1.5 °C and 2 °C of global mean temperature rise. We find that this approach not only addresses important decision-making gaps, but also improves the robustness of future risk assessment and attribution statements alike.
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页码:399 / 412
页数:13
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