Title of article :
Daily discharge forecasting using least square support vector regression and regression tree
Author/Authors :
Sahraei، Shahram نويسنده Currently, his investigation is about sediment load estimation using data driven models. , , Andalani، Saeed Zare نويسنده He is currently MSc student of hydraulic engineering in Tehran University , , Zakermoshfegh، Mohammad نويسنده he is currently Director of Research and Technology Affairs in Jundi-Shapur University ofTechnology , , Nikeghbal Sisakht، Babak نويسنده He is currently MSc student of Geotechnique engineering in Shiraz University, Iran , , Talebbeydokhti، Nasser نويسنده Department of Civil & Environmental Engineering, Shiraz University , , Moradkhani، Hamid نويسنده is Associate Professor of Water Resources Management and Hydraulic Engineering in the Civil and Environmental Engineering Department of Portland State University ,
Issue Information :
دوماهنامه با شماره پیاپی 0 سال 2015
Abstract :
Prediction of river
ow is one of the main issues in the eld of water resources
management. Because of the complexity of the rainfall-runo process, data-driven methods
have gained increased importance. In the current study, two newly developed models called
Least Square Support Vector Regression (LSSVR) and Regression Tree (RT) are used. The
LSSVR model is based on the constrained optimization method and applies structural risk
minimization in order to yield a general optimized result. Also, in the RT, data movement
is based on laws discovered in the tree. Both models have been applied to the data in the
Kashkan watershed. Variables include (a) recorded precipitation values in the Kashkan
watershed stations, and (b) outlet discharge values of one and two previous days. Present
discharge is considered as output of the two models. Following that, a sensitivity analysis
has been carried out on the input features and less important features have been diminished,
so that both models have provided better prediction on the data. The nal results of both
models have been compared. It was found that the LSSVR model has better performance.
Finally, the results present these models as suitable models in river
ow forecasting.
Journal title :
Scientia Iranica(Transactions A: Civil Engineering)
Journal title :
Scientia Iranica(Transactions A: Civil Engineering)