Assessment of hydrological drought based on nonstationary runoff data

A nonstationary standardized runoff index (NSRI) is proposed by using the GAMLSS framework to assess the hydrological drought under nonstationary conditions. The definition of the NSRI is similar to that of SRI, but using a nonstationary Gamma distribution by incorporating meteorological variables a...

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Main Authors: Xueli Sun, Zhanling Li, Qingyun Tian
Format: Article
Language:English
Published: IWA Publishing 2020-10-01
Series:Hydrology Research
Subjects:
sri
Online Access:http://hr.iwaponline.com/content/51/5/894
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spelling doaj-b77ff9eaa608459abc26a9812ca5d8592020-12-17T06:40:23ZengIWA PublishingHydrology Research1998-95632224-79552020-10-0151589491010.2166/nh.2020.029029Assessment of hydrological drought based on nonstationary runoff dataXueli Sun0Zhanling Li1Qingyun Tian2 MOE Key Laboratory of Groundwater Circulation and Environmental Evolution, China University of Geosciences (Beijing), Beijing 100083, China and School of Water Resources and Environment, China University of Geosciences (Beijing), Beijing 100083, China MOE Key Laboratory of Groundwater Circulation and Environmental Evolution, China University of Geosciences (Beijing), Beijing 100083, China and School of Water Resources and Environment, China University of Geosciences (Beijing), Beijing 100083, China MOE Key Laboratory of Groundwater Circulation and Environmental Evolution, China University of Geosciences (Beijing), Beijing 100083, China and School of Water Resources and Environment, China University of Geosciences (Beijing), Beijing 100083, China A nonstationary standardized runoff index (NSRI) is proposed by using the GAMLSS framework to assess the hydrological drought under nonstationary conditions. The definition of the NSRI is similar to that of SRI, but using a nonstationary Gamma distribution by incorporating meteorological variables and antecedent runoff as covariates to describe the characteristics of runoff series. The new drought index is then applied to the upper reach of the Heihe River basin. Four models are developed, in which one is stationary, and the other three are nonstationary with one, two and three covariates, respectively. Results show that, for the nonstationary runoff series, the nonstationary models are more robust and reliable than the stationary one. Among these models, the model with two covariates performs the best. For the model with one covariate, the precipitation shows better in the fitting as a covariate in rainy seasons, and the antecedent runoff shows better in dry seasons. The NSRI identifies more drought events than SRI does, and the drought conditions in our case are mainly affected by precipitation. It is proved that the proposed new drought index is a more effective method for drought assessments under nonstationary conditions. HIGHLIGHTS A nonstationary standardized runoff index is developed.; Six alternative covariates and three kinds of nonstationary models are compared.; The nonstationary model with two covariates performs the best.; Hydrological drought conditions in this case is mainly affected by precipitation.;http://hr.iwaponline.com/content/51/5/894gamlsshydrological droughtnonstationarysri
collection DOAJ
language English
format Article
sources DOAJ
author Xueli Sun
Zhanling Li
Qingyun Tian
spellingShingle Xueli Sun
Zhanling Li
Qingyun Tian
Assessment of hydrological drought based on nonstationary runoff data
Hydrology Research
gamlss
hydrological drought
nonstationary
sri
author_facet Xueli Sun
Zhanling Li
Qingyun Tian
author_sort Xueli Sun
title Assessment of hydrological drought based on nonstationary runoff data
title_short Assessment of hydrological drought based on nonstationary runoff data
title_full Assessment of hydrological drought based on nonstationary runoff data
title_fullStr Assessment of hydrological drought based on nonstationary runoff data
title_full_unstemmed Assessment of hydrological drought based on nonstationary runoff data
title_sort assessment of hydrological drought based on nonstationary runoff data
publisher IWA Publishing
series Hydrology Research
issn 1998-9563
2224-7955
publishDate 2020-10-01
description A nonstationary standardized runoff index (NSRI) is proposed by using the GAMLSS framework to assess the hydrological drought under nonstationary conditions. The definition of the NSRI is similar to that of SRI, but using a nonstationary Gamma distribution by incorporating meteorological variables and antecedent runoff as covariates to describe the characteristics of runoff series. The new drought index is then applied to the upper reach of the Heihe River basin. Four models are developed, in which one is stationary, and the other three are nonstationary with one, two and three covariates, respectively. Results show that, for the nonstationary runoff series, the nonstationary models are more robust and reliable than the stationary one. Among these models, the model with two covariates performs the best. For the model with one covariate, the precipitation shows better in the fitting as a covariate in rainy seasons, and the antecedent runoff shows better in dry seasons. The NSRI identifies more drought events than SRI does, and the drought conditions in our case are mainly affected by precipitation. It is proved that the proposed new drought index is a more effective method for drought assessments under nonstationary conditions. HIGHLIGHTS A nonstationary standardized runoff index is developed.; Six alternative covariates and three kinds of nonstationary models are compared.; The nonstationary model with two covariates performs the best.; Hydrological drought conditions in this case is mainly affected by precipitation.;
topic gamlss
hydrological drought
nonstationary
sri
url http://hr.iwaponline.com/content/51/5/894
work_keys_str_mv AT xuelisun assessmentofhydrologicaldroughtbasedonnonstationaryrunoffdata
AT zhanlingli assessmentofhydrologicaldroughtbasedonnonstationaryrunoffdata
AT qingyuntian assessmentofhydrologicaldroughtbasedonnonstationaryrunoffdata
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