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Prediction Approaches for Smart Cultivation: A Comparative Study

Author

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  • Amitabha Chakrabarty
  • Nafees Mansoor
  • Muhammad Irfan Uddin
  • Mosleh Hmoud Al-adaileh
  • Nizar Alsharif
  • Fawaz Waselallah Alsaade
  • Furqan Aziz

Abstract

Crop cultivation is one of the oldest activities of civilization. For a long time, crop production was carried out based on knowledge passed from generation to generation. However, due to the rapid growth in the human population of the world, human knowledge-based cultivation is not enough to meet the demanding need. To address this issue, the usage of machine learning-based tools has been studied in this paper. An experiment has been carried out over 0.3 million data. This dataset identifies 46 prominent parameters for cultivation, which is collected from the Department of Agriculture Extension, Bangladesh. Comparison between neural networks and numbers of machine learning algorithms has been carried out in this research. It is observed that the neural network outperforms the other methods by maintaining an average prediction accuracy of 96.06% for six different crops. Other contemporary machine learning algorithms, namely, support vector machine, random forest, and logistic regression, have average prediction accuracy of around 68.9%, 91.2%, and 62.39%, respectively.

Suggested Citation

  • Amitabha Chakrabarty & Nafees Mansoor & Muhammad Irfan Uddin & Mosleh Hmoud Al-adaileh & Nizar Alsharif & Fawaz Waselallah Alsaade & Furqan Aziz, 2021. "Prediction Approaches for Smart Cultivation: A Comparative Study," Complexity, Hindawi, vol. 2021, pages 1-16, April.
  • Handle: RePEc:hin:complx:5534379
    DOI: 10.1155/2021/5534379
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