A hybrid model of self organizing maps and least square support vector machine for river flow forecasting

Successful river flow forecasting is a major goal and an essential procedure that is necessary in water resource planning and management. There are many forecasting techniques used for river flow forecasting. This study proposed a hybrid model based on a combination of two methods: Self Organizing M...

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Main Authors: Ismail, S., Shabri, A., Samsudin, R.
Format: Article
Published: 2012
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Online Access:http://eprints.utm.my/id/eprint/46488/
https://dx.doi.org/10.5194/hess-16-4417-2012
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Institution: Universiti Teknologi Malaysia
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spelling my.utm.464882017-09-11T07:37:48Z http://eprints.utm.my/id/eprint/46488/ A hybrid model of self organizing maps and least square support vector machine for river flow forecasting Ismail, S. Shabri, A. Samsudin, R. GB Physical geography Successful river flow forecasting is a major goal and an essential procedure that is necessary in water resource planning and management. There are many forecasting techniques used for river flow forecasting. This study proposed a hybrid model based on a combination of two methods: Self Organizing Map (SOM) and Least Squares Support Vector Machine (LSSVM) model, referred to as the SOM-LSSVM model for river flow forecasting. The hybrid model uses the SOM algorithm to cluster the entire dataset into several disjointed clusters, where the monthly river flows data with similar input pattern are grouped together from a high dimensional input space onto a low dimensional output layer. By doing this, the data with similar input patterns will be mapped to neighbouring neurons in the SOM's output layer. After the dataset has been decomposed into several disjointed clusters, an individual LSSVM is applied to forecast the river flow. The feasibility of this proposed model is evaluated with respect to the actual river flow data from the Bernam River located in Selangor, Malaysia. The performance of the SOM-LSSVM was compared with other single models such as ARIMA, ANN and LSSVM. The performance of these models was then evaluated using various performance indicators. The experimental results show that the SOM-LSSVM model outperforms the other models and performs better than ANN, LSSVM as well as ARIMA for river flow forecasting. It also indicates that the proposed model can forecast more precisely, and provides a promising alternative technique for river flow forecasting. 2012 Article PeerReviewed Ismail, S. and Shabri, A. and Samsudin, R. (2012) A hybrid model of self organizing maps and least square support vector machine for river flow forecasting. Hydrology and Earth System Sciences, 16 (11). pp. 4417-4433. ISSN 1027-5606 https://dx.doi.org/10.5194/hess-16-4417-2012
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic GB Physical geography
spellingShingle GB Physical geography
Ismail, S.
Shabri, A.
Samsudin, R.
A hybrid model of self organizing maps and least square support vector machine for river flow forecasting
description Successful river flow forecasting is a major goal and an essential procedure that is necessary in water resource planning and management. There are many forecasting techniques used for river flow forecasting. This study proposed a hybrid model based on a combination of two methods: Self Organizing Map (SOM) and Least Squares Support Vector Machine (LSSVM) model, referred to as the SOM-LSSVM model for river flow forecasting. The hybrid model uses the SOM algorithm to cluster the entire dataset into several disjointed clusters, where the monthly river flows data with similar input pattern are grouped together from a high dimensional input space onto a low dimensional output layer. By doing this, the data with similar input patterns will be mapped to neighbouring neurons in the SOM's output layer. After the dataset has been decomposed into several disjointed clusters, an individual LSSVM is applied to forecast the river flow. The feasibility of this proposed model is evaluated with respect to the actual river flow data from the Bernam River located in Selangor, Malaysia. The performance of the SOM-LSSVM was compared with other single models such as ARIMA, ANN and LSSVM. The performance of these models was then evaluated using various performance indicators. The experimental results show that the SOM-LSSVM model outperforms the other models and performs better than ANN, LSSVM as well as ARIMA for river flow forecasting. It also indicates that the proposed model can forecast more precisely, and provides a promising alternative technique for river flow forecasting.
format Article
author Ismail, S.
Shabri, A.
Samsudin, R.
author_facet Ismail, S.
Shabri, A.
Samsudin, R.
author_sort Ismail, S.
title A hybrid model of self organizing maps and least square support vector machine for river flow forecasting
title_short A hybrid model of self organizing maps and least square support vector machine for river flow forecasting
title_full A hybrid model of self organizing maps and least square support vector machine for river flow forecasting
title_fullStr A hybrid model of self organizing maps and least square support vector machine for river flow forecasting
title_full_unstemmed A hybrid model of self organizing maps and least square support vector machine for river flow forecasting
title_sort hybrid model of self organizing maps and least square support vector machine for river flow forecasting
publishDate 2012
url http://eprints.utm.my/id/eprint/46488/
https://dx.doi.org/10.5194/hess-16-4417-2012
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