Spatio-temporal changes of precipitation and temperature over the Pearl River basin based on CMIP5 multi-model ensemble

被引:0
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作者
Xiaoyan Wang
Tao Yang
Xiaoli Li
Pengfei Shi
Xudong Zhou
机构
[1] Hohai University,State Key Laboratory of Hydrology
[2] Chinese Academy of Sciences,Water Resources and Hydraulic Engineering, Center for Global Change and Water Cycle
关键词
Climate change; Multi-model ensemble projections; Bayesian model averaging; The Pearl River basin;
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学科分类号
摘要
Projections of changes in climate are important in assessing the potential impacts of climate change on natural and social systems. However, current knowledge on assembling different GCMs to estimate future climate change over the Pear River basin is still limited so far. This study examined the capability of BMA and arithmetic mean (AM) method in assembling precipitation and temperature from CMIP5 under RCP2.6, RCP4.5 and RCP8.5 scenarios over the Pearl River basin. Results show that the BMA outperforms the traditional AM method. Precipitation tends to increase over the basin under RCP2.6 and RCP4.5 scenarios, whereas decrease under RCP8.5. The most remarkable increase of precipitation is found in the northern region under RCP2.6 scenario. The linear trend of the monthly mean near-surface air temperature increases with the growing CO2 concentration. The warming trends in four seasons are distinct. The warming rate is prominent in summer and spring than that in other season, meanwhile it is larger in western region than in other parts of the basin. The findings can provide beneficial reference to water resources and agriculture management strategies, as well as the adaptation and mitigation strategies for floods and droughts under the context of global climate change.
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页码:1077 / 1089
页数:12
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