Title of article :
Comparison of Regression, ARIMA and ANN Models for Reservoir Inflow Forecasting using Snowmelt Equivalent (a Case study of Karaj)
Author/Authors :
K. Mohammadi، نويسنده , , H. R. Eslami and Sh. Dayyani Dardashti، نويسنده ,
Issue Information :
فصلنامه با شماره پیاپی سال 2005
Pages :
14
From page :
17
To page :
30
Abstract :
The present study aims at applying different methods for predicting spring inflow to the Amir Kabir reservoir in the Karaj river watershed, located to the northwest of Tehran (Iran). Three different methods, artificial neural network (ANN), ARIMA time series and regression analysis between some hydroclimatological data and inflow, were used to predict the spring inflow. The spring inflow accounts for almost 60 percent of annual inflow to the reservoir. Twenty five years of observed data were used to train or calibrate the models and five years were applied for testing. The performances of models were compared and the ANN model was found to model the flows better. Thus, ANN can be an effective tool for reservoir inflow forecasting in the Amir Kabir reservoir using snowmelt equivalent data.
Keywords :
ARIMA , artificial neural network , regression analysis , River flow forecasting
Journal title :
Journal of Agricultural Science and Technology (JAST)
Serial Year :
2005
Journal title :
Journal of Agricultural Science and Technology (JAST)
Record number :
667148
Link To Document :
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