Daily River Flow Forecasting with Hybrid Support Vector Machine - Particle Swarm Optimization

The application of artificial intelligence techniques for river flow forecasting can further improve the management of water resources and flood prevention. This study concerns the development of support vector machine (SVM) based model and its hybridization with particle swarm optimization (PSO) to...

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Published in:IOP Conference Series: Earth and Environmental Science
Main Author: Zaini N.; Malek M.A.; Yusoff M.; Mardi N.H.; Norhisham S.
Format: Conference paper
Language:English
Published: Institute of Physics Publishing 2018
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85046109729&doi=10.1088%2f1755-1315%2f140%2f1%2f012035&partnerID=40&md5=6fdd00456876b6dd9439e9abbb017925
id 2-s2.0-85046109729
spelling 2-s2.0-85046109729
Zaini N.; Malek M.A.; Yusoff M.; Mardi N.H.; Norhisham S.
Daily River Flow Forecasting with Hybrid Support Vector Machine - Particle Swarm Optimization
2018
IOP Conference Series: Earth and Environmental Science
140
1
10.1088/1755-1315/140/1/012035
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85046109729&doi=10.1088%2f1755-1315%2f140%2f1%2f012035&partnerID=40&md5=6fdd00456876b6dd9439e9abbb017925
The application of artificial intelligence techniques for river flow forecasting can further improve the management of water resources and flood prevention. This study concerns the development of support vector machine (SVM) based model and its hybridization with particle swarm optimization (PSO) to forecast short term daily river flow at Upper Bertam Catchment located in Cameron Highland, Malaysia. Ten years duration of historical rainfall, antecedent river flow data and various meteorology parameters data from 2003 to 2012 are used in this study. Four SVM based models are proposed which are SVM1, SVM2, SVM-PSO1 and SVM-PSO2 to forecast 1 to 7 day ahead of river flow. SVM1 and SVM-PSO1 are the models with historical rainfall and antecedent river flow as its input, while SVM2 and SVM-PSO2 are the models with historical rainfall, antecedent river flow data and additional meteorological parameters as input. The performances of the proposed model are measured in term of RMSE and R2 . It is found that, SVM2 outperformed SVM1 and SVM-PSO2 outperformed SVM-PSO1 which meant the additional meteorology parameters used as input to the proposed models significantly affect the model performances. Hybrid models SVM-PSO1 and SVM-PSO2 yield higher performances as compared to SVM1 and SVM2. It is found that hybrid models are more effective in forecasting river flow at 1 to 7 day ahead at the study area. © 2018 Published under licence by IOP Publishing Ltd.
Institute of Physics Publishing
17551307
English
Conference paper
All Open Access; Gold Open Access
author Zaini N.; Malek M.A.; Yusoff M.; Mardi N.H.; Norhisham S.
spellingShingle Zaini N.; Malek M.A.; Yusoff M.; Mardi N.H.; Norhisham S.
Daily River Flow Forecasting with Hybrid Support Vector Machine - Particle Swarm Optimization
author_facet Zaini N.; Malek M.A.; Yusoff M.; Mardi N.H.; Norhisham S.
author_sort Zaini N.; Malek M.A.; Yusoff M.; Mardi N.H.; Norhisham S.
title Daily River Flow Forecasting with Hybrid Support Vector Machine - Particle Swarm Optimization
title_short Daily River Flow Forecasting with Hybrid Support Vector Machine - Particle Swarm Optimization
title_full Daily River Flow Forecasting with Hybrid Support Vector Machine - Particle Swarm Optimization
title_fullStr Daily River Flow Forecasting with Hybrid Support Vector Machine - Particle Swarm Optimization
title_full_unstemmed Daily River Flow Forecasting with Hybrid Support Vector Machine - Particle Swarm Optimization
title_sort Daily River Flow Forecasting with Hybrid Support Vector Machine - Particle Swarm Optimization
publishDate 2018
container_title IOP Conference Series: Earth and Environmental Science
container_volume 140
container_issue 1
doi_str_mv 10.1088/1755-1315/140/1/012035
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85046109729&doi=10.1088%2f1755-1315%2f140%2f1%2f012035&partnerID=40&md5=6fdd00456876b6dd9439e9abbb017925
description The application of artificial intelligence techniques for river flow forecasting can further improve the management of water resources and flood prevention. This study concerns the development of support vector machine (SVM) based model and its hybridization with particle swarm optimization (PSO) to forecast short term daily river flow at Upper Bertam Catchment located in Cameron Highland, Malaysia. Ten years duration of historical rainfall, antecedent river flow data and various meteorology parameters data from 2003 to 2012 are used in this study. Four SVM based models are proposed which are SVM1, SVM2, SVM-PSO1 and SVM-PSO2 to forecast 1 to 7 day ahead of river flow. SVM1 and SVM-PSO1 are the models with historical rainfall and antecedent river flow as its input, while SVM2 and SVM-PSO2 are the models with historical rainfall, antecedent river flow data and additional meteorological parameters as input. The performances of the proposed model are measured in term of RMSE and R2 . It is found that, SVM2 outperformed SVM1 and SVM-PSO2 outperformed SVM-PSO1 which meant the additional meteorology parameters used as input to the proposed models significantly affect the model performances. Hybrid models SVM-PSO1 and SVM-PSO2 yield higher performances as compared to SVM1 and SVM2. It is found that hybrid models are more effective in forecasting river flow at 1 to 7 day ahead at the study area. © 2018 Published under licence by IOP Publishing Ltd.
publisher Institute of Physics Publishing
issn 17551307
language English
format Conference paper
accesstype All Open Access; Gold Open Access
record_format scopus
collection Scopus
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