Addressing uncertainty in extreme rainfall intensity for semi-arid urban regions: case study of Delhi, India

被引:0
作者
Ranjana Ray Chaudhuri
Prateek Sharma
机构
[1] TERI School of Advanced Studies,Department of Regional Water Studies
[2] TERI School of Advanced Studies,Department of Energy and Environment
来源
Natural Hazards | 2020年 / 104卷
关键词
Extreme rainfall; Short duration; Uncertainty; Semi-arid; Bayesian; Delhi;
D O I
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中图分类号
学科分类号
摘要
Classical approaches are used to develop rainfall intensity duration frequency curves for the estimation of design rainfall intensities corresponding to various return periods. The study modelled extreme rainfall intensities at different durations and compared the classical Gumbel and generalized extreme value (GEV) distributions in semi-arid urban region. The model and parameter uncertainties are translated to uncertainties in design storm estimates. A broader insight emerges that rainfall extremes in 1 h and 3 h are sensitive to the choice of frequency analysis (GEV in this case) and helps address anticipated intensification of extreme events for short duration at urban local scale. In comparison with Gumbel, GEV predicts higher extreme rainfall intensity corresponding to various return periods and duration (for 1-h duration the increase in extreme rainfall intensity is from 27 to 33% for return periods 10 years and higher, 3-h and 50-year return period—20%, 3-h and 100-year return period—20.6%, 24 h at similar return periods—10%). The Bayesian posterior distribution has a calibration effect on the GEV predictions and reduces the upper range of uncertainty in the GEV probability model prediction from a range of 16–31% to 10–28.4% for return period varying from 10 to 50 year for 1-h storms. In geographically similar areas these extreme intensities may be used to prepare for the rising flash flood risks.
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页码:2307 / 2324
页数:17
相关论文
共 124 条
[31]  
Zin WZW(2008)Rainfall depth–duration–frequency curves and their uncertainties J Hydrol undefined undefined-undefined
[32]  
Fadhel S(2013)Battle of extreme value distributions: a global survey on extreme daily rainfall Water Resour Res undefined undefined-undefined
[33]  
Rico-Ramirez MA(2020)Appraisal of hydro-meteorological factors during extreme precipitation event: case study of Kedarnath cloudburst, Uttarakhand, India Nat Hazards undefined undefined-undefined
[34]  
Han D(2017)The future intensification of hourly precipitation extremes Nat Clim Change undefined undefined-undefined
[35]  
Fawcett L(2017)Generalized extreme value shape parameter and its nature for extreme precipitation using long time series and the Bayesian approach Hydrol Sci J undefined undefined-undefined
[36]  
Green AC(2013)Development of IDF-curves for tropical India by random cascade modeling Hydrol Earth Syst Sci Discuss undefined undefined-undefined
[37]  
Ganguli P(2017)Mapping extreme rainfall statistics for Canada under climate change using updated intensity-duration-frequency curves J Water Resour Plan Manag undefined undefined-undefined
[38]  
Coulibaly P(1987)A comparison of maximum likelihood and Bayesian estimators for the three-parameter Weibull distribution Appl Stat undefined undefined-undefined
[39]  
Ganguli P(2017)Precipitation intensity–duration–frequency curves and their uncertainties for Ghaap plateau Clim Risk Manag undefined undefined-undefined
[40]  
Coulibaly P(2015)Bayesian estimation of rainfall intensity–duration–frequency relationships J Hydrol undefined undefined-undefined