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[3] Yadav, A.K. and Chandel, S.S. (2014) Solar Radiation Prediction Using Artificial Neural Network Techniques: A Review. Renewable and Sustainable Energy Reviews, 33, 772-781.
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[12] Cascade Feed Forward Neural Network.
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[15] Representation of Elman Neural Network. http://mnemstudio.org/neural-networks-elman.htm
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