Uncertainty in a Lumped and a Semi-Distributed Model for Discharge Prediction in Ghatshila Catchment

Hydrologic simulations of different models have direct impact on the accuracy of discharge prediction because of the diverse model structure. This study is an attempt to comprehend the uncertainty in discharge prediction of two models in the Ghatshila catchment, Subarnarekha Basin in India. A lumped...

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Main Authors: Aradhana Yaduvanshi, Prashant Srivastava, Abeyou W. Worqlul, Anand Kr Sinha
Format: Article
Language:English
Published: MDPI AG 2018-03-01
Series:Water
Subjects:
PDM
Online Access:http://www.mdpi.com/2073-4441/10/4/381
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spelling doaj-473264a73573413fb40f609d8c20be4b2020-11-24T22:49:13ZengMDPI AGWater2073-44412018-03-0110438110.3390/w10040381w10040381Uncertainty in a Lumped and a Semi-Distributed Model for Discharge Prediction in Ghatshila CatchmentAradhana Yaduvanshi0Prashant Srivastava1Abeyou W. Worqlul2Anand Kr Sinha3Centre of Excellence in Climatology, Birla Institute of Technology, Mesra, Ranchi, Jharkhand 835215, IndiaInstitute of Environment and Sustainable Development, Banaras Hindu University, Varanasi, Uttar Pradesh 221005, IndiaBlackland Research and Extension Center, Texas A&M Agrilife Research, Temple, TX 76502, USACivil and Environmental Engineering, Birla Institute of Technology, Mesra, Ranchi, Jharkhand 835215, IndiaHydrologic simulations of different models have direct impact on the accuracy of discharge prediction because of the diverse model structure. This study is an attempt to comprehend the uncertainty in discharge prediction of two models in the Ghatshila catchment, Subarnarekha Basin in India. A lumped Probability Distribution Model (PDM) and semi-distributed Soil and Water Assessment Tool (SWAT) were applied to simulate the discharge from 24 years of records (1982–2005), using gridded ground based meteorological variables. The results indicate a marginal outperformance of SWAT model with 0.69 Nash-Sutcliffe (NSE) for predicting discharge as compared to PDM with 0.62 NSE value. Extreme high flows are clearly depicted in the flow duration curve of SWAT model simulations. PDM model performed well in capturing low flows. However, with respect to input datasets and model complexity, SWAT requires both static and dynamic inputs for the parameterization of the model. This work is the comprehensive evaluation of discharge prediction in an Indian scenario using the selected models; ground based gridded rainfall and meteorological dataset. Uncertainty in the model prediction is established by means of Generalized Likelihood Uncertainty Estimation (GLUE) technique in both of the models.http://www.mdpi.com/2073-4441/10/4/381SWATPDMGLUEmodel structuredischarge
collection DOAJ
language English
format Article
sources DOAJ
author Aradhana Yaduvanshi
Prashant Srivastava
Abeyou W. Worqlul
Anand Kr Sinha
spellingShingle Aradhana Yaduvanshi
Prashant Srivastava
Abeyou W. Worqlul
Anand Kr Sinha
Uncertainty in a Lumped and a Semi-Distributed Model for Discharge Prediction in Ghatshila Catchment
Water
SWAT
PDM
GLUE
model structure
discharge
author_facet Aradhana Yaduvanshi
Prashant Srivastava
Abeyou W. Worqlul
Anand Kr Sinha
author_sort Aradhana Yaduvanshi
title Uncertainty in a Lumped and a Semi-Distributed Model for Discharge Prediction in Ghatshila Catchment
title_short Uncertainty in a Lumped and a Semi-Distributed Model for Discharge Prediction in Ghatshila Catchment
title_full Uncertainty in a Lumped and a Semi-Distributed Model for Discharge Prediction in Ghatshila Catchment
title_fullStr Uncertainty in a Lumped and a Semi-Distributed Model for Discharge Prediction in Ghatshila Catchment
title_full_unstemmed Uncertainty in a Lumped and a Semi-Distributed Model for Discharge Prediction in Ghatshila Catchment
title_sort uncertainty in a lumped and a semi-distributed model for discharge prediction in ghatshila catchment
publisher MDPI AG
series Water
issn 2073-4441
publishDate 2018-03-01
description Hydrologic simulations of different models have direct impact on the accuracy of discharge prediction because of the diverse model structure. This study is an attempt to comprehend the uncertainty in discharge prediction of two models in the Ghatshila catchment, Subarnarekha Basin in India. A lumped Probability Distribution Model (PDM) and semi-distributed Soil and Water Assessment Tool (SWAT) were applied to simulate the discharge from 24 years of records (1982–2005), using gridded ground based meteorological variables. The results indicate a marginal outperformance of SWAT model with 0.69 Nash-Sutcliffe (NSE) for predicting discharge as compared to PDM with 0.62 NSE value. Extreme high flows are clearly depicted in the flow duration curve of SWAT model simulations. PDM model performed well in capturing low flows. However, with respect to input datasets and model complexity, SWAT requires both static and dynamic inputs for the parameterization of the model. This work is the comprehensive evaluation of discharge prediction in an Indian scenario using the selected models; ground based gridded rainfall and meteorological dataset. Uncertainty in the model prediction is established by means of Generalized Likelihood Uncertainty Estimation (GLUE) technique in both of the models.
topic SWAT
PDM
GLUE
model structure
discharge
url http://www.mdpi.com/2073-4441/10/4/381
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AT prashantsrivastava uncertaintyinalumpedandasemidistributedmodelfordischargepredictioninghatshilacatchment
AT abeyouwworqlul uncertaintyinalumpedandasemidistributedmodelfordischargepredictioninghatshilacatchment
AT anandkrsinha uncertaintyinalumpedandasemidistributedmodelfordischargepredictioninghatshilacatchment
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