Tran Anh Phuong, Tran Bao Chung, Campbell Siliennis Blanco, Nguyen Nam Anh, Tran Dieu Hang, Nguyen Thanh Thuy, Nguyen Anh Duc, Duong Hong Son
Water Resources Institute, No. 8 Phao Dai Lang, Dong Da, Hanoi, Vietnam.
Granma Provincial Delegation of Hydraulics Resources, Amdo Estévez s/n, Bayamo, Granma, Cuba.
Sci Rep. 2024 May 22;14(1):11659. doi: 10.1038/s41598-024-61709-9.
Drought is considered the most severe water-related disaster in the Cauto river basin, which is the longest river and the main agricultural producer in Cuba. Better understanding of drought characteristics is crucial to drought management. Given the sparsity of ground-based precipitation observations in the Cauto, this study aims at using gridded global precipitation to analyze the spatio-temporal variations of drought in this river basin. Firstly, the monthly Climate Hazards Group InfraRed Precipitation with Station data (CHIRPS) was calibrated with the gauged precipitation using the Thiessen polygon-based method and linear least squares regression equations. Then, the gridded standardized precipitation index (SPI) with time scales of 3, 6, 9 months and drought characteristics, namely, drought frequency, duration and intensity were calculated using the calibrated CHIRPS. Finally, the spatio-temporal analysis was performed to investigate the variations of drought in the Cauto river basin in time and space. The obtained results show that the calibrated CHIRPS is highly consistent with the gauged observations and is capable of determining the magnitude, time, and spatial extent of drought events in the Cauto river basin. The trend analysis by the Mann-Kendall test reveals that although the trend is not statistically significant, the SPI tends to decrease with time in the dry season, which indicates the more severe drought. The spatial analysis indicates that the lower altitude area of the Cauto river basin is suffered from longer drought duration and higher drought intensity than the upper one. This study expresses the importance of open global precipitation data sources in monitoring and quantifying drought characteristics in data-scarce regions.
干旱被认为是考托河流域最严重的与水相关的灾害,考托河是古巴最长的河流及主要农业产区。更好地了解干旱特征对于干旱管理至关重要。鉴于考托河流域地面降水观测数据稀少,本研究旨在利用网格化全球降水数据来分析该流域干旱的时空变化。首先,采用基于泰森多边形的方法和线性最小二乘回归方程,用实测降水对每月的气候灾害组红外降水与站点数据(CHIRPS)进行校准。然后,使用校准后的CHIRPS计算时间尺度为3、6、9个月的网格化标准化降水指数(SPI)以及干旱特征,即干旱频率、持续时间和强度。最后,进行时空分析以研究考托河流域干旱的时空变化。所得结果表明,校准后的CHIRPS与实测观测高度一致,能够确定考托河流域干旱事件的强度、时间和空间范围。通过曼-肯德尔检验进行的趋势分析表明,尽管趋势在统计上不显著,但在旱季SPI有随时间下降的趋势,这表明干旱更为严重。空间分析表明,考托河流域海拔较低地区的干旱持续时间比海拔较高地区更长,干旱强度也更高。本研究表明了开放的全球降水数据源在数据稀缺地区监测和量化干旱特征方面的重要性。