Machine Learning Model of Plant Disease Prediction: Cotton Leaf Curl Virus (CLCV) on Cotton Crop

Authors

  • Rana Muhammad Nadeem Department of Computer Science Govt. Post Graduate College Burewala, Pakistan Author
  • Rab Nawaz Bashir Department of Computer Science COMSATS University, Vehari campus, Vehari, Pakistan Author
  • Rana Muhammad Saleem Department of Computer Science University of Agriculture Faisalabad, Sub Campus Burewala, Burewala, Pakistan Author
  • Muhammad Nazam Maqbool Department of the Artificial Intelligence UMT, Lahore Pakistan Author
  • Haris Ali Khan Department of Computer Science COMSATS University, Vehari campus, Vehari, Pakistan Author
  • Dewan M.Qaseem Hussain Department of Computer Science COMSATS University, Vehari campus, Vehari, Pakistan Author
  • Muhammad Shakeel Department of Computer Science, The University of Lahore, Pakistan Author

DOI:

https://doi.org/10.52584/QRJ.2002.01

Keywords:

Machine Learning, Precision agriculture, Cotton, Cotton Leave Curl Virus (CLCV), Internet of Things (IoT), Regression model

Abstract

The attack of various diseases is one of the major issues in agriculture, and it has a significant impact on the productivity of agriculture. The correlations between the plant disease life cycle and environmental conditions can be successfully used for the prediction and early warnings of the occurrence of diseases. This study proposes a machine-learning approach for the prediction of disease attacks based on environmental conditions. The proposed model is based on the crop field Internet of Things (IoT) based directly sensed temperature, humidity, and rainfall to predict the monthly occurrence of the Cotton Leaf Curl Virus (CLCV) disease on cotton crops. Moreover, the proposed regression model enables the prediction of the CLCV disease attack with a multiple co-efficient of co- relation value of 0.88 and a coefficient of determination (R2) of 0.82 from the prevailing temperature, humidity, and rainfall environmental conditions. The field evaluation reveals that the predicted accuracy of the proposed solution is 85%.

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Published

2022-12-28