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      1 * Corresponding author: [email protected]

      2

      Comparative Evaluation of Neural Networks in Crop Yield Prediction of Paddy and Sugarcane Crop

       K. Krupavathi1*, M. Raghu Babu2 and A. Mani3

       1Department of Irrigation and Drainage Engineering, Dr. NTR College of Agricultural Engineering, Bapatla, ANGRAU, India

       2Department of Irrigation and Drainage Engineering, College of Agricultural Engineering, Madakasira, ANGRAU, India

       3Department of Soil and Water Engineering, Dr. NTR College of Agricultural Engineering, Bapatla, ANGRAU, India

       Abstract

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