Because of the importance of water resources management, the need for accurate modeling of the rainfall–runoff process has rapidly grown in the past decades. Recently, the support vector machine (SVM) approach has been used by hydrologists for rainfall–runoff modeling and the other fields of hydrology. Similar to the other artificial intelligence models, such as artificial neural network (ANN) and adaptive neural fuzzy inference system, the SVM model is based on the autoregressive properties. In this paper, the wavelet analysis was linked to the SVM model concept for modeling the rainfall–runoff process of Aghchai and Eel River watersheds. In this way, the main time series of two variables, rainfall and runoff, were decomposed to multiple frequent time series by wavelet theory; then, these time series were imposed as input data on the SVM model in order to predict the runoff discharge one day ahead. The obtained results show that the wavelet SVM model can predict both short- and long-term runoff discharges by considering the seasonality effects. Also, the proposed hybrid model is relatively more appropriate than classical autoregressive ones such as ANN and SVM because it uses the multi-scale time series of rainfall and runoff data in the modeling process.
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Research Article|
January 25 2016
Hybrid wavelet-support vector machine approach for modelling rainfall–runoff process Available to Purchase
Mehdi Komasi;
1Faculty of Civil Engineering, Ayatollah Boroujerdi University, Boroujerd, Iran
E-mail: [email protected]
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Soroush Sharghi
Soroush Sharghi
2Hydraulic Structures, Ayatollah Boroujerdi University, Boroujerd, Iran
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Water Sci Technol (2016) 73 (8): 1937–1953.
Article history
Received:
September 03 2015
Accepted:
November 30 2015
Citation
Mehdi Komasi, Soroush Sharghi; Hybrid wavelet-support vector machine approach for modelling rainfall–runoff process. Water Sci Technol 27 April 2016; 73 (8): 1937–1953. doi: https://doi.org/10.2166/wst.2016.048
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