Employing an Artificial Neural Network Model to Predict Citrus Yield Based on Climate Factors
Saad S. Almady,
Mahmoud Abdel-Sattar,
Saleh M. Al-Sager
et al.
Abstract:Agricultural sustainability is dependent on the ability to predict crop yield, which is vital for farmers, consumers, and researchers. Most of the works used the amount of rainfall, average monthly temperature, relative humidity, etc. as inputs. In this paper, an attempt was made to predict the yield of the citrus crop (Washington Navel orange, Valencia orange, Murcott mandarin, Fremont mandarin, and Bearss Seedless lime) using weather factors and the accumulated heat units. These variables were used as input … Show more
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