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Comparative Analysis of Machine Learning Models for Crop's yield Prediction

  • Received : 2022.05.05
  • Published : 2022.05.30

Abstract

In light of the decreasing crop production and shortage of food across the world, one of the crucial criteria of agriculture nowadays is selecting the right crop for the right piece of land at the right time. First problem is that How Farmers can predict the right crop for cultivation because famers have no knowledge about prediction of crop. Second problem is that which algorithm is best that provide the maximum accuracy for crop prediction. Therefore, in this research Author proposed a method that would help to select the most suitable crop(s) for a specific land based on the analysis of the affecting parameters (Temperature, Humidity, Soil Moisture) using machine learning. In this work, the author implemented Random Forest Classifier, Support Vector Machine, k-Nearest Neighbor, and Decision Tree for crop selection. The author trained these algorithms with the training dataset and later these algorithms were tested with the test dataset. The author compared the performances of all the tested methods to arrive at the best outcome. In this way best algorithm from the mention above is selected for crop prediction.

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References

  1. A. Zafar, S. J. I. J. o. A. R. i. A. Mustafa, Finance, and M. Sciences, "SMEs and its role in economic and socioeconomic development of Pakistan," vol. 6, no. 4, 2017.
  2. B. M. Josephine et al., "Crop Yield Prediction Using Machine Learning," vol. 9, no. 02, 2020.
  3. S. S. Nair, C. Lueis, and V. Balachandran, "Crop Selection using IoT and Machine Learning."
  4. T. Van Klompenburg, A. Kassahun, C. J. C. Catal, and E. i. Agriculture, "Crop yield prediction using machine learning: A systematic literature review," vol. 177, p. 105709, 2020. https://doi.org/10.1016/j.compag.2020.105709
  5. S. S. Dahikar, S. V. J. I. j. o. i. r. i. e. Rode, electronics, instrumentation, and c. engineering, "Agricultural crop yield prediction using artificial neural network approach," vol. 2, no. 1, pp. 683-686, 2014.