Spatiotemporal analysis of drought occurrence in the Ouergha catchment, Morocco

IF 1.6 Q4 ENVIRONMENTAL SCIENCES AIMS Environmental Science Pub Date : 2023-01-01 DOI:10.3934/environsci.2023023
Kaoutar Mounir, I. La Jeunesse, H. Sellami, Abdessalam Elkhanchoufi
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Abstract

Although the spatiotemporal characterization of droughts is a key step in the design and implementation of practical measures to mitigate their impacts, it is hampered by the lack of hydro-climatic data with sufficient spatial density and duration. This study aimed to assess the trends and spatial patterns of drought occurrence in the Ouergha catchment in northern Morocco, which has been identified as a hot spot for climate change and variability. The study combined data from various sources, including the North Atlantic Oscillation Index (NAOi); Western Mediterranean Oscillation Index (WeMOi); a meteorological index (SPI), calculated using precipitation data; a hydrological index (SDI), calculated using precipitation data; and satellite images to calculate the Normalized Difference Vegetation Index (NDVI) and Normalized Difference Moisture Index (NDMI) from 1984/85 to 2016/17. The results showed that the adopted statistical analyses were effective in detecting the linearity and trend of drought in the Ouergha catchment scale. The correlations between various indices were moderate to strong between NAOi and SPI, WeMoi and SPI, as well as SPI and SDI, while the Mann-Kendall tests indicate an increasing trend of drought intensity in the catchment. During dry events, vegetation cover and moisture were maintained due to the presence of dam reserves. Overall, the study provides empirical evidence that confirms the severe drought conditions experienced in the Ouergha catchment. The unique set of data adds to the growing body of knowledge about drought in the region and underscores the urgency of preserving dam resources for sustainable use during future droughts.
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摩洛哥欧尔哈流域干旱发生的时空分析
尽管干旱的时空特征是设计和实施减轻其影响的实际措施的关键步骤,但缺乏具有足够空间密度和持续时间的水文气候数据阻碍了这一进程。本研究旨在评估摩洛哥北部Ouergha流域干旱发生的趋势和空间格局,该地区已被确定为气候变化和变率的热点。这项研究结合了来自不同来源的数据,包括北大西洋涛动指数(NAOi);西地中海涛动指数;利用降水数据计算的气象指数(SPI);利用降水数据计算的水文指数(SDI);计算1984/85年至2016/17年的归一化植被指数(NDVI)和归一化水分指数(NDMI)。结果表明,所采用的统计分析方法能够有效地检测出欧尔哈流域干旱的线性和趋势。NAOi与SPI、WeMoi与SPI、SPI与SDI的相关性均为中强,而Mann-Kendall检验表明流域干旱强度呈增加趋势。在干旱时期,由于大坝储备的存在,植被覆盖和水分得以保持。总体而言,该研究提供了经验证据,证实了欧尔哈流域经历的严重干旱条件。这组独特的数据增加了对该地区干旱的不断增长的知识体系,并强调了在未来干旱期间保护大坝资源以可持续利用的紧迫性。
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来源期刊
AIMS Environmental Science
AIMS Environmental Science ENVIRONMENTAL SCIENCES-
CiteScore
2.90
自引率
0.00%
发文量
31
审稿时长
5 weeks
期刊最新文献
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