温室气体
气候变化
情景分析
可再生能源
减缓气候变化
环境经济学
自然资源经济学
化石燃料
碳捕获和储存(时间表)
环境科学
电
环境资源管理
归属
气候金融
气候政策
业务
经济
工程类
生态学
财务
电气工程
生物
废物管理
心理学
社会心理学
作者
Mark Dekker,Andries F. Hof,Maarten van den Berg,Vassilis Daioglou,Rik van Heerden,Kaj-Ivar van der Wijst,Detlef P. van Vuuren
出处
期刊:Nature
[Nature Portfolio]
日期:2023-12-13
卷期号:624 (7991): 309-316
被引量:27
标识
DOI:10.1038/s41586-023-06738-6
摘要
Analysis of climate policy scenarios has become an important tool for identifying mitigation strategies, as shown in the latest Intergovernmental Panel on Climate Change Working Group III report1. The key outcomes of these scenarios differ substantially not only because of model and climate target differences but also because of different assumptions on behavioural, technological and socio-economic developments2-4. A comprehensive attribution of the spread in climate policy scenarios helps policymakers, stakeholders and scientists to cope with large uncertainties in this field. Here we attribute this spread to the underlying drivers using Sobol decomposition5, yielding the importance of each driver for scenario outcomes. As expected, the climate target explains most of the spread in greenhouse gas emissions, total and sectoral fossil fuel use, total renewable energy and total carbon capture and storage in electricity generation. Unexpectedly, model differences drive variation of most other scenario outcomes, for example, in individual renewable and carbon capture and storage technologies, and energy in demand sectors, reflecting intrinsic uncertainties about long-term developments and the range of possible mitigation strategies. Only a few scenario outcomes, such as hydrogen use, are driven by other scenario assumptions, reflecting the need for more scenario differentiation. This attribution analysis distinguishes areas of consensus as well as strong model dependency, providing a crucial step in correctly interpreting scenario results for robust decision-making.
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