Application of SARIMA model to forecasting monthly flows in Waterval River, South Africa

Knowledge of future river flow information is fundamental for development and management of a river system. In this study, Waterval River flow was forecasted by SARIMA model using GRETL statistical software. Mean monthly flows from 1960 to 2016 were used for modelling and forecasting. Different unit...

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Main Authors: Tadesse Kassahun Birhanu, Dinka Megersa Olumana
Format: Article
Language:English
Published: Sciendo 2017-12-01
Series:Journal of Water and Land Development
Subjects:
Online Access:http://www.degruyter.com/view/j/jwld.2017.35.issue-1/jwld-2017-0088/jwld-2017-0088.xml?format=INT
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spelling doaj-6291a87fa6884f308605c642be3edf592020-11-25T00:55:35ZengSciendoJournal of Water and Land Development2083-45352017-12-0135122923610.1515/jwld-2017-0088jwld-2017-0088Application of SARIMA model to forecasting monthly flows in Waterval River, South AfricaTadesse Kassahun Birhanu0Dinka Megersa Olumana1University of Johannesburg, Faculty of Engineering and the Built Environment, Department of Civil Engineering Science, Auckland Park Campus Kingsway, 524 Johannesburg, South AfricaUniversity of Johannesburg, Faculty of Engineering and the Built Environment, Department of Civil Engineering Science, Johannesburg, South AfricaKnowledge of future river flow information is fundamental for development and management of a river system. In this study, Waterval River flow was forecasted by SARIMA model using GRETL statistical software. Mean monthly flows from 1960 to 2016 were used for modelling and forecasting. Different unit root and Mann–Kendall trend analysis proved the stationarity of the observed flow time series. Based on seasonally differenced correlogram characteristics, different SARIMA models were evaluated; their parameters were optimized, and diagnostic check up of forecasts was made using white noise and heteroscedasticity tests. Finally, based on minimum Akaike Information (AI) and Hannan–Quinn (HQ) criteria, SARIMA (3, 0, 2) x (3, 1, 3)12 model was selected for Waterval River flow forecasting. Comparison of forecast performance of SARIMA models with that of computational intelligent forecasting techniques was recommended for future study.http://www.degruyter.com/view/j/jwld.2017.35.issue-1/jwld-2017-0088/jwld-2017-0088.xml?format=INTheteroscedasticitystationarity testtrend analysisvalidationwhite noise
collection DOAJ
language English
format Article
sources DOAJ
author Tadesse Kassahun Birhanu
Dinka Megersa Olumana
spellingShingle Tadesse Kassahun Birhanu
Dinka Megersa Olumana
Application of SARIMA model to forecasting monthly flows in Waterval River, South Africa
Journal of Water and Land Development
heteroscedasticity
stationarity test
trend analysis
validation
white noise
author_facet Tadesse Kassahun Birhanu
Dinka Megersa Olumana
author_sort Tadesse Kassahun Birhanu
title Application of SARIMA model to forecasting monthly flows in Waterval River, South Africa
title_short Application of SARIMA model to forecasting monthly flows in Waterval River, South Africa
title_full Application of SARIMA model to forecasting monthly flows in Waterval River, South Africa
title_fullStr Application of SARIMA model to forecasting monthly flows in Waterval River, South Africa
title_full_unstemmed Application of SARIMA model to forecasting monthly flows in Waterval River, South Africa
title_sort application of sarima model to forecasting monthly flows in waterval river, south africa
publisher Sciendo
series Journal of Water and Land Development
issn 2083-4535
publishDate 2017-12-01
description Knowledge of future river flow information is fundamental for development and management of a river system. In this study, Waterval River flow was forecasted by SARIMA model using GRETL statistical software. Mean monthly flows from 1960 to 2016 were used for modelling and forecasting. Different unit root and Mann–Kendall trend analysis proved the stationarity of the observed flow time series. Based on seasonally differenced correlogram characteristics, different SARIMA models were evaluated; their parameters were optimized, and diagnostic check up of forecasts was made using white noise and heteroscedasticity tests. Finally, based on minimum Akaike Information (AI) and Hannan–Quinn (HQ) criteria, SARIMA (3, 0, 2) x (3, 1, 3)12 model was selected for Waterval River flow forecasting. Comparison of forecast performance of SARIMA models with that of computational intelligent forecasting techniques was recommended for future study.
topic heteroscedasticity
stationarity test
trend analysis
validation
white noise
url http://www.degruyter.com/view/j/jwld.2017.35.issue-1/jwld-2017-0088/jwld-2017-0088.xml?format=INT
work_keys_str_mv AT tadessekassahunbirhanu applicationofsarimamodeltoforecastingmonthlyflowsinwatervalriversouthafrica
AT dinkamegersaolumana applicationofsarimamodeltoforecastingmonthlyflowsinwatervalriversouthafrica
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