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Climate Change Research ›› 2022, Vol. 18 ›› Issue (2): 177-187.doi: 10.12006/j.issn.1673-1719.2021.104
• Impacts of Climate Change • Previous Articles Next Articles
YANG Chen-Hui, WANG Yan-Jun, SU Bu-Da, PU Yang, WANG Yuan, JIANG Tong()
Received:
2021-06-16
Revised:
2021-07-31
Online:
2022-03-30
Published:
2021-12-23
Contact:
JIANG Tong
E-mail:jiangtong@nuist.edu.cn
YANG Chen-Hui, WANG Yan-Jun, SU Bu-Da, PU Yang, WANG Yuan, JIANG Tong. Runoff variation trend of Ganjiang River basin under SSP “Double Carbon” path[J]. Climate Change Research, 2022, 18(2): 177-187.
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URL: http://www.climatechange.cn/EN/10.12006/j.issn.1673-1719.2021.104
Fig. 2 The plan of “double carbon” pathway in China. (The gray shaded areas represent the period of peak carbon dioxide emissions (2028-2032) and the period of carbon neutral (2058-2062), respectively)
Fig. 4 Comparison of monthly mean temperature (a) and monthly precipitation (b) by multi-model ensemble mean and observation in 1961-2014. (The upper and lower limits represent the maximum and minimum values of multiple models)
Fig. 5 The mean of multi-model annual temperature (a) and precipitation (b) change under different SSPs scenarios from 1995 to 2100 in Ganjiang River basin. (Solid lines represent the multi-model mean, shadows represent the range of multiple models)
Table 4 The change rate of Q10 and Q90 in the period of peak carbon dioxide emissions and carbon neutral relative to the base period. (The maximum and minimum value of change rate is in brackets, and the average value is outside brackets) %
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