Radiation is a variable that governs many hydrological and phenological processes, but its measurements are not made routinely. To overcome this problem, continuous hydrological models that include evapotranspiration, snowmelt (using solar radiation data) and plant growth modules have applied different strategies to generate daily radiation data. In this paper, artificial neural networks (ANNs), temperature-based (TB) and stochastic (ST) approaches for estimation of solar radiation have been used and compared. These three approaches have been applied to the Ammameh Catchment, an alpine subcatchment of the Jadjroud River, in Iran. Results reveal better performance for ANNs than for TB and ST. However, the TB method because of its capability to generalize results and to be easily linked with hydrological models appears to be a good candidate to be applied in the catchments where the climatological data are limited.
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Research Article|
August 01 2002
Solar Radiation Estimation using Temperature-based, Stochastic and Artificial Neural Networks Approaches
S. Morid;
S. Morid
a
University of Tarbiat Modares, Tehran, Iran
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A. K. Gosain;
A. K. Gosain
b
Indian Institute of Technology, New Delhi, 110016, India
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Ashok K. Keshari
Ashok K. Keshari
b
Indian Institute of Technology, New Delhi, 110016, India
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Hydrology Research (2002) 33 (4): 291–304.
Article history
Received:
March 20 2000
Revision Received:
August 08 2001
Accepted:
January 29 2002
Citation
S. Morid, A. K. Gosain, Ashok K. Keshari; Solar Radiation Estimation using Temperature-based, Stochastic and Artificial Neural Networks Approaches. Hydrology Research 1 August 2002; 33 (4): 291–304. doi: https://doi.org/10.2166/nh.2002.0009
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