Detecting hydro-climatic change using spatiotemporal analysis of rainfall time series in Western Algeria

被引:0
|
作者
Leila Hamlaoui-Moulai
Mohammed Mesbah
Doudja Souag-Gamane
Abderrahmane Medjerab
机构
[1] University of Science and Technology Houari Boumediène,LEGHYD Laboratory, Civil Engineering Faculty
[2] University of Science and Technology Houari Boumediène,LGBO Laboratory, Earth Sciences Faculty
[3] University of Science and Technology Houari Boumediène,LGAT Laboratory, Earth Sciences Faculty
来源
Natural Hazards | 2013年 / 65卷
关键词
Rainfall series; Statistics; Cartography; Spectra analysis; West Algeria;
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中图分类号
学科分类号
摘要
The knowledge of the climatic behavior especially that one of semi-arid regions is required to optimize the management of water resources. Here climate variability is directly related to water resources that are of a high socio-economic and environmental significance. This work deals mainly with a statistical analysis of the precipitation regime to assess its spatial distribution and temporal variation in north-western Algeria. For this, a time series and a principal component analysis are performed on rainfall series representing annual precipitations of twenty-one meteorological stations for the period 1914 to 2004, the most complete and longest of West Algeria, in order to detect patterns and trends in the region. A spectral analysis of the time series revealed the existence of a period of roughly 30 years for all stations. Furthermore, the trend of a wide part of the obtained spectra suggests the existence of another period longer than the samples size.
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页码:1293 / 1311
页数:18
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