Application of the L-moments approach to the analysis of regional flood frequency in Northern Algeria

被引:12
|
作者
Meddi M. [1 ]
Toumi S. [1 ]
Assani A.A. [2 ]
机构
[1] Ecole Nationale Supérieure D'Hydraulique de Blida, LGEE, Route de Soumaa, Bp. 31, Blida
[2] Département des Sciences de L'environnement, Université du Québec À Trois-Rivières, C.P. 500, Trois-Rivières, G9A 5H7, QC
关键词
L-Moments; Maximum Flow; Northern Algeria; Regionalization; Statistical Adjustment;
D O I
10.1504/IJHST.2017.080959
中图分类号
学科分类号
摘要
Algeria is periodically affected by severe and repeated flooding. Flood hazard studies require the estimation of extreme flood flows. To predict and estimate the characteristics of maximum flows, knowledge of their distribution law is essential. The L-moments method was used to determine homogeneous regions and the appropriate distribution for these regions. Three homogeneous regions were delineated. This technique produced a Pearson type III distribution for the coastal region and the Tell Atlas and a Pareto distribution for the steppe regions and high plateaus of Eastern and Western Algeria. To estimate maximum flow at ungauged sites for different return periods, the 'index-flood' method was used. An empirical formula was developed that uses the average annual maximum flow as a function of catchment area and the average slope of the main channel to estimate maximum flow at any point on the Oued. The coefficient of determination and the Nash criterion, for the three regions, are superiors to 88% and 83% respectively. The root mean squared error, for the three regions, is less than 12%. These values show the robustness of the developed models. © Copyright 2017 Inderscience Enterprises Ltd.
引用
收藏
页码:77 / 102
页数:25
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