Corpus ID: 16167655

Agricultural Crop Yield Prediction Using Artificial Neural Network Approach Miss .

  title={Agricultural Crop Yield Prediction Using Artificial Neural Network Approach Miss .},
  author={Snehal S. Dahikar and S. V. Rode},
By considering various situations of climatologically phenomena affecting local weather conditions in various parts of the world. These weather conditions have a direct effect on crop yield. Various researches have been done exploring the connections between large-scale climatologically phenomena and crop yield. Artificial neural networks have been demonstrated to be powerful tools for modeling and prediction, to increase their effectiveness. Crop prediction methodology is used to predict the… Expand

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