River Flow Forecasting: a Hybrid Model of Self Organizing Maps and Least Square Support Vector Machine

  • Ismail S
  • Samsudin R
  • Shabri A
ISSN: 1812-2116
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Abstract

Successful river flow time series forecasting is a major goal and an essential proce- dure that is necessary in water resources planning and management. This study intro- duced a new hybrid model based on a combination of two familiar non-linear method of mathematical modeling: Self Organizing Map (SOM) and Least Square Support Vector Machine (LSSVM) model referred as SOM-LSSVM model. The hybrid model uses the SOM algorithm to cluster the training data into several disjointed clusters and the indi- vidual LSSVM is used to forecast the river flow. The feasibility of this proposed model is evaluated to actual river flow data from Bernam River located in Selangor, Malaysia. Their results have been compared to those obtained using LSSVM and artificial neural networks (ANN) models. The experiment results show that the SOM-LSSVM model outperforms other models for forecasting river flow. It also indicates that the proposed model can forecast more precisely and provides a promising alternative technique in river flow forecasting

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APA

Ismail, S., Samsudin, R., & Shabri, a. (2010). River Flow Forecasting: a Hybrid Model of Self Organizing Maps and Least Square Support Vector Machine. Hydrology and Earth System Sciences Discussions, 7, 8179–8212.

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