DOI: 10.1002/joc.5181
论文题名: Covariate and parameter uncertainty in non-stationary rainfall IDF curve
作者: Agilan V. ; Umamahesh N.V.
刊名: International Journal of Climatology
ISSN: 8998418
出版年: 2018
卷: 38, 期: 1 起始页码: 365
结束页码: 383
语种: 英语
英文关键词: Bayesian inference
; covariate uncertainty
; non-stationarity
; parameter uncertainty
; rainfall IDF curve
Scopus关键词: Bayesian networks
; Inference engines
; Probability distributions
; Uncertainty analysis
; Water management
; Water resources
; Bayesian inference
; Covariates
; IDF curves
; Non-stationarities
; Parameter uncertainty
; Rain
; Bayesian analysis
; covariance analysis
; estimation method
; parameterization
; precipitation intensity
; probability
; rainfall
; uncertainty analysis
英文摘要: Since the substantial evidence of non-stationarity in the extreme rainfall series is already reported, the current realm of hydrologic research focusing on developing methodologies for a non-stationary rainfall condition. As the rainfall intensity duration frequency (IDF) curve is primarily used in storm water management and infrastructure design, developing rainfall IDF curves in a non-stationary context is a current interest of water resource researchers. In order to construct non-stationary rainfall IDF curve, the probability distribution's parameters are allowed to change according to covariate value and the current practice is to use time as a covariate. However, the covariate can be any physical process and the recent studies show that the direct use of time as a covariate may increase the bias. Moreover, the significance of selecting covariate in developing non-stationary rainfall IDF curve is yet to be explored. Therefore, this study aims to find the uncertainties in rainfall return levels due to the choice of the covariate (covariate uncertainty). In addition, since the uncertainty in parameter estimates (parameter uncertainty) is the major source of uncertainty in the stationary IDF curve, the relative significance of covariate uncertainty, when compared to the parameter uncertainty, is also explored. The study results reveal that the covariate uncertainty is significant, especially when a number of covariates produce significantly superior non-stationary model and, remarkably, it is nearly equivalent to the parameter uncertainty in such cases. © 2017 Royal Meteorological Society
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资源类型: 期刊论文
标识符: http://119.78.100.158/handle/2HF3EXSE/117157
Appears in Collections: 气候减缓与适应
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作者单位: Department of Civil Engineering, National Institute of Technology, Warangal, India
Recommended Citation:
Agilan V.,Umamahesh N.V.. Covariate and parameter uncertainty in non-stationary rainfall IDF curve[J]. International Journal of Climatology,2018-01-01,38(1)