Title of article :
Long Lead Rainfall Prediction Using Statistical Downscaling and Arti cial Neural Network Modeling
Author/Authors :
Karamouz, M. university of tehran - School of Civil Engineering, تهران, ايران , Fallahi, M. amirkabir university of technology - School of Civil Engineering, تهران, ايران , Nazif, S. university of tehran - School of Civil Engineering, تهران, ايران , Rahimi Farahani, M. amirkabir university of technology - School of Civil Engineering, تهران, ايران
From page :
165
To page :
172
Abstract :
Long lead rainfall prediction is important in the management and operation of water resources and many models have been developed for this purpose. Each of the developed models has its special strengths and weaknesses that must be considered in real time applications. In this paper, eld and General Circulation Models (GCM) data are used with the Statistical Downscaling Model (SDSM) and the Arti cial Neural Network (ANN) model for long lead rainfall prediction. These models have been used for the prediction of rainfall for 5 months (from December to April) in a study area in the south eastern part of Iran. The SDSM model considers climate change scenarios using the selected climate parameters in rainfall prediction, but the ANN models are driven by observed data and do not consider physical relations between variables. The results show that SDSM outperforms the ANN model.
Keywords :
Statistical Downscaling Model (SDSM) , Arti cial Neural Network (ANN) , Precipitation , GCM.
Journal title :
Scientia Iranica(Transactions B:Mechanical Engineering)
Journal title :
Scientia Iranica(Transactions B:Mechanical Engineering)
Record number :
2700160
Link To Document :
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