Title of article :
Minimum Input Variances for Modelling Rainfall-runoff Using ANN
Author/Authors :
Hassan, Zulkarnain Universiti Teknologi Malaysia - Faculty of Civil Engineering, Malaysia , Hassan, Zulkarnain Universiti Malaysia Perlis - School of Environmental Engineering, Malaysia , Shamsudin, Supiah Universiti Teknologi Malaysia - Razak School of Engineering and Advanced Technology, Malaysia , Harun, Sobri Universiti Teknologi Malaysia - Faculty of Civil Engineering, Malaysia
From page :
113
To page :
118
Abstract :
This paper presents the study of possible input variances for modeling the long-term runoff series using artificial neural network (ANN). ANN has the ability to derive the relationship between the inputs and outputs of a process without the physics being provided to it, and it is believed to be more flexible to be used compared to the conceptual models [1]. Data series from the Kurau River sub-catchment was applied to build the ANN networks and the model was calibrated using the input of rainfall, antecedent rainfall, temperature, antecedent temperature and antecedent runoff. In addition, the results were compared with the conceptual model, named IHACRES. The study reveal that ANN and IHACRES can simulate well for mean runoff but ANN gives a remarkable performance compared to IHACRES, if the model customizes with a good configuration.
Keywords :
Artificial neural network , runoff , IHACRES , rainfall , runoff
Journal title :
Jurnal Teknologi :F
Journal title :
Jurnal Teknologi :F
Record number :
2716551
Link To Document :
بازگشت