Spatiotemporal characteristics of meteorological drought events in 34 major global river basins during 1901–2021

蒸散量 降水 构造盆地 环境科学 流域 气候学 水资源 气象学 地理 地质学 生态学 古生物学 地图学 生物
作者
Ziyang Zhu,Weili Duan,Shan Zou,Zhenzhong Zeng,Yaning Chen,Meiqing Feng,Jingxiu Qin,Yongchang Liu
出处
期刊:Science of The Total Environment [Elsevier BV]
卷期号:921: 170913-170913 被引量:8
标识
DOI:10.1016/j.scitotenv.2024.170913
摘要

Meteorological drought is a crucial driver of various types of droughts; thus, identifying the spatiotemporal characteristics of meteorological drought at the basin scale has implications for ecological and water resource security. However, differences in drought characteristics between river basins have not been clearly elucidated. In this study, we identify and compare meteorological drought events in 34 major river basins worldwide using a three-dimensional drought-clustering algorithm based on the standardised precipitation evapotranspiration index on a 12-month scale from 1901 to 2021. Despite synchronous increases in precipitation and potential evapotranspiration (PET), with precipitation increasing by more than three times the PET, 47 % (16/34) of the basins showed a tendency towards drought in over half their basin areas. Drought events occurred frequently, with more than half identified as short-term droughts (lasting less than or equal to three months). Small basins had a larger drought impact area, with major drought events often originating from the basin boundaries and migrating towards the basin centre. Meteorological droughts were driven by changes in sea surface temperature (SST), especially the El Niño Southern Oscillation (ENSO) or other climate indices. Anomalies in SST and atmospheric circulation caused by ENSO events may have led to altered climate patterns in different basins, resulting in drought events. These results provide important insights into the characteristics and mechanisms of meteorological droughts in different river basins worldwide.

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