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DOI10.1016/j.accre.2023.01.004
Assessment of total and extreme precipitation over central Asia via statistical downscaling: Added value and multi-model ensemble projection
Fan, Li -Jun; Yan, Zhong-Wei; Chen, Deliang; LI, Zhen
发表日期2023
ISSN1674-9278
起始页码62
结束页码76
卷号14期号:1页码:15
英文摘要Central Asia (CA) is highly sensitive and vulnerable to changes in precipitation due to global warming, so the projection of precipitation extremes is essential for local climate risk assessment. However, global and regional climate models often fail to reproduce the observed daily precipitation distribution and hence extremes, especially in areas with complex terrain. In this study, we proposed a statistical downscaling (SD) model based on quantile delta mapping to assess and project eight precipitation indices at 73 meteorological stations across CA driven by ERA5 reanalysis data and simulations of 10 global climate models (GCMs) for present and future (2081-2100) periods under two shared socio-economic pathways (SSP245 and SSP585). The reanalysis data and raw GCM outputs clearly underestimate mean precipitation intensity (SDII) and maximum 1-day precipitation (RX1DAY) and overestimate the number of wet days (R1MM) and maximum consecutive wet days (CWD) at stations across CA. However, the SD model effectively reduces the biases and RMSEs of the modeled precipitation indices compared to the observations. Also it effectively adjusts the distributional biases in the downscaled daily precipitation and indices at the stations across CA. In addition, it is skilled in capturing the spatial patterns of the observed precipitation indices. Obviously, SDII and RX1DAY are improved by the SD model, especially in the southeastern mountainous area. Under the intermediate scenario (SSP245), our SD multi-model ensemble pro-jections project significant and robust increases in SDII and total extreme precipitation (R95PTOT) of 0.5 mm d-1 and 19.7 mm, respectively, over CA at the end of the 21st century (2081-2100) compared to the present values (1995-2014). More pronounced increases in indices R95PTOT, SDII, number of very wet days (R10MM), and RX1DAY are projected under the higher emission scenario (SSP585), particularly in the mountainous southeastern region. The SD model suggested that SDII and RX1DAY will likely rise more rapidly than those projected by previous model simulations over CA during the period 2081-2100. The SD projection of the possible future changes in precipitation and extremes improves the knowledge base for local risk management and climate change adaptation in CA.
英文关键词Local precipitation extremes; Statistical downscaling; Multi-model ensemble projection; Robustness and uncertainty; Central Asia
学科领域Environmental Sciences; Meteorology & Atmospheric Sciences
语种英语
WOS研究方向Environmental Sciences & Ecology ; Meteorology & Atmospheric Sciences
WOS记录号WOS:000951573000001
来源期刊ADVANCES IN CLIMATE CHANGE RESEARCH
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/273988
作者单位Chinese Academy of Sciences; Institute of Atmospheric Physics, CAS; Chinese Academy of Sciences; University of Chinese Academy of Sciences, CAS; University of Gothenburg
推荐引用方式
GB/T 7714
Fan, Li -Jun,Yan, Zhong-Wei,Chen, Deliang,et al. Assessment of total and extreme precipitation over central Asia via statistical downscaling: Added value and multi-model ensemble projection[J],2023,14(1):15.
APA Fan, Li -Jun,Yan, Zhong-Wei,Chen, Deliang,&LI, Zhen.(2023).Assessment of total and extreme precipitation over central Asia via statistical downscaling: Added value and multi-model ensemble projection.ADVANCES IN CLIMATE CHANGE RESEARCH,14(1),15.
MLA Fan, Li -Jun,et al."Assessment of total and extreme precipitation over central Asia via statistical downscaling: Added value and multi-model ensemble projection".ADVANCES IN CLIMATE CHANGE RESEARCH 14.1(2023):15.
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