Projections and uncertainty analysis of socioeconomic exposure to compound dry and hot events under 1.5℃ and 2.0℃ warming levels across China

IF 2.8 4区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES
Gengxi Zhang, Hongkai Wang, Wenfei Liu, Huimin Wang
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Abstract

Climate change is expected to intensify compound dry and hot events (CDHEs) in China, exacerbating socioeconomic exposure to CDHEs. Based on 23 global climate models (GCMs) data from Coupled Model Intercomparison Project 6 (CMIP6), this study analyzes and projects the socioeconomic exposure to CDHEs and its influencing factors under 1.5℃ and 2.0℃ global warming levels. The results show that the frequency of CDHEs is expected to be higher under 2.0℃ warming levels than that under 1.5℃ warming levels. Population exposures to CDHEs are projected to increase by 160 × 106 persons-months (about 280%) and 210 × 106 persons-months (310%) under 1.5℃ and 2.0℃ warming levels, respectively. The region with the highest increase in population exposure to CDHEs is East China, followed by Central China and South China; and the regions with the smallest increase in population exposure are Tibet, Inner Mongolia, and Xinjiang. GDP exposures are expected to increase by 24 times and 20 times under 1.5 °C warming levels for SSP2-4.5 and SSP5-8.5 scenarios, while the values would be up to 38 times and 28 times under 2.0 °C warming levels. The climate effect (accounting for 80%) is the determinate factor that triggers the change of population exposure to CDHEs, followed by the interaction between the population and climate changes, while the influence of the population factor is the least. Interactive effect contributes the most to GDP exposure whereas climate change contributes the least. Across most regions of China, the warming level is the main uncertainty source, accounting for 46.1% and 70.5% of the population and GDP exposure, respectively. The results are beneficial for identifying hotspots of vulnerable regions exposed to CDHEs and provide beneficial information for conducting climate change mitigation and adaptation strategies.

Abstract Image

中国各地在 1.5℃和 2.0℃升温水平下社会经济受复合干热事件影响的预测和不确定性分析
预计气候变化将加剧中国的复合干热事件(CDHEs),加剧社会经济对 CDHEs 的暴露。本研究基于 23 个全球气候模式(GCMs)的耦合模式相互比较项目 6(CMIP6)数据,分析和预测了在 1.5℃和 2.0℃全球变暖水平下,社会经济面临的复合干热事件及其影响因素。研究结果表明,与 1.5℃升温水平相比,2.0℃升温水平下的 CDHEs 发生频率预计会更高。预计在 1.5℃和 2.0℃升温水平下,CDHEs 的人口暴露量将分别增加 160 × 106 人-月(约 280%)和 210 × 106 人-月(310%)。CDHEs人口暴露增加最多的地区是华东,其次是华中和华南;人口暴露增加最少的地区是西藏、内蒙古和新疆。在 SSP2-4.5 和 SSP5-8.5 两种情景下,如果升温 1.5 ℃,国内生产总值暴露量预计将分别增加 24 倍和 20 倍;如果升温 2.0 ℃,国内生产总值暴露量将分别增加 38 倍和 28 倍。气候效应(占 80%)是引发人口 CDHEs 暴露变化的决定性因素,其次是人口与气候变化之间的相互作用,而人口因素的影响最小。交互作用对 GDP 暴露的影响最大,而气候变化对 GDP 暴露的影响最小。在中国大部分地区,变暖水平是主要的不确定性来源,分别占人口和 GDP 暴露的 46.1% 和 70.5%。这些结果有利于确定受 CDHEs 影响的脆弱地区的热点,并为开展气候变化减缓和适应战略提供有益信息。
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来源期刊
Theoretical and Applied Climatology
Theoretical and Applied Climatology 地学-气象与大气科学
CiteScore
6.00
自引率
11.80%
发文量
376
审稿时长
4.3 months
期刊介绍: Theoretical and Applied Climatology covers the following topics: - climate modeling, climatic changes and climate forecasting, micro- to mesoclimate, applied meteorology as in agro- and forestmeteorology, biometeorology, building meteorology and atmospheric radiation problems as they relate to the biosphere - effects of anthropogenic and natural aerosols or gaseous trace constituents - hardware and software elements of meteorological measurements, including techniques of remote sensing
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