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Hydrological drought forecasting and monitoring system development using artificial neural network (ANN) in Ethiopia

The objective of this study is to investigate and perform long–term forecasting of both streamflow and hydrological drought over Ethiopia. Observed streamflow and precipitation data are collected from 17 streamflow stations and 34 rainfall gauge stations to forecast future streamflow and hydrologica...

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Autores principales: Tareke, Kassa Abera, Awoke, Admasu Gebeyehu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9932452/
https://www.ncbi.nlm.nih.gov/pubmed/36816247
http://dx.doi.org/10.1016/j.heliyon.2023.e13287
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author Tareke, Kassa Abera
Awoke, Admasu Gebeyehu
author_facet Tareke, Kassa Abera
Awoke, Admasu Gebeyehu
author_sort Tareke, Kassa Abera
collection PubMed
description The objective of this study is to investigate and perform long–term forecasting of both streamflow and hydrological drought over Ethiopia. Observed streamflow and precipitation data are collected from 17 streamflow stations and 34 rainfall gauge stations to forecast future streamflow and hydrological drought from 2026 to 2099. Streamflow forecasting is performed using an artificial neural network (ANN) in conjunction with python software. Observed precipitation and streamflow data from 1973 to 2014 are used to train and test the ANN model by 70 and 30% ratios, respectively. After training the model, future downscaled precipitation data from regional climate models (RCM) have been used as input data to forecast future streamflow. Three RCM models were used to downscale historical and future climate data. RACMO is found a good downscaling model for all selected stations. The linear scaling bias correction technique results in less than 2% error compared to other alternative techniques. The result indicates that ANN is a good tool to forecast streamflow in areas having a good correlation between precipitation and streamflow such as Abbay, Awash, Baro, Omo Gibe, and Tekeze river basins. But in arid areas for example Genale Dawa, Wabishebele, and Rift Valley basins, the model is not suitable because the input data (precipitation) have high variation than the output variable (streamflow). In such areas, meteorological drought analysis and forecasting are better than hydrological drought analysis. Finally, future hydrological drought is analyzed using forecasted streamflow data as input to the streamflow drought index (SDI). The result indicates that 2028, 2036, 2042, 2044, 2062, and 2063 are the expected extreme drought years in most river basins of Ethiopia in the future. This shows that at least one extreme drought is expected in each decade in the future. Therefore, extensive research in drought analysis and forecasting is needed to develop an effective drought early warning system, and water resource management policy.
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spelling pubmed-99324522023-02-17 Hydrological drought forecasting and monitoring system development using artificial neural network (ANN) in Ethiopia Tareke, Kassa Abera Awoke, Admasu Gebeyehu Heliyon Research Article The objective of this study is to investigate and perform long–term forecasting of both streamflow and hydrological drought over Ethiopia. Observed streamflow and precipitation data are collected from 17 streamflow stations and 34 rainfall gauge stations to forecast future streamflow and hydrological drought from 2026 to 2099. Streamflow forecasting is performed using an artificial neural network (ANN) in conjunction with python software. Observed precipitation and streamflow data from 1973 to 2014 are used to train and test the ANN model by 70 and 30% ratios, respectively. After training the model, future downscaled precipitation data from regional climate models (RCM) have been used as input data to forecast future streamflow. Three RCM models were used to downscale historical and future climate data. RACMO is found a good downscaling model for all selected stations. The linear scaling bias correction technique results in less than 2% error compared to other alternative techniques. The result indicates that ANN is a good tool to forecast streamflow in areas having a good correlation between precipitation and streamflow such as Abbay, Awash, Baro, Omo Gibe, and Tekeze river basins. But in arid areas for example Genale Dawa, Wabishebele, and Rift Valley basins, the model is not suitable because the input data (precipitation) have high variation than the output variable (streamflow). In such areas, meteorological drought analysis and forecasting are better than hydrological drought analysis. Finally, future hydrological drought is analyzed using forecasted streamflow data as input to the streamflow drought index (SDI). The result indicates that 2028, 2036, 2042, 2044, 2062, and 2063 are the expected extreme drought years in most river basins of Ethiopia in the future. This shows that at least one extreme drought is expected in each decade in the future. Therefore, extensive research in drought analysis and forecasting is needed to develop an effective drought early warning system, and water resource management policy. Elsevier 2023-01-29 /pmc/articles/PMC9932452/ /pubmed/36816247 http://dx.doi.org/10.1016/j.heliyon.2023.e13287 Text en © 2023 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Research Article
Tareke, Kassa Abera
Awoke, Admasu Gebeyehu
Hydrological drought forecasting and monitoring system development using artificial neural network (ANN) in Ethiopia
title Hydrological drought forecasting and monitoring system development using artificial neural network (ANN) in Ethiopia
title_full Hydrological drought forecasting and monitoring system development using artificial neural network (ANN) in Ethiopia
title_fullStr Hydrological drought forecasting and monitoring system development using artificial neural network (ANN) in Ethiopia
title_full_unstemmed Hydrological drought forecasting and monitoring system development using artificial neural network (ANN) in Ethiopia
title_short Hydrological drought forecasting and monitoring system development using artificial neural network (ANN) in Ethiopia
title_sort hydrological drought forecasting and monitoring system development using artificial neural network (ann) in ethiopia
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9932452/
https://www.ncbi.nlm.nih.gov/pubmed/36816247
http://dx.doi.org/10.1016/j.heliyon.2023.e13287
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