Enhanced Machine Learning Techniques for Pest Control and Leaf Disease Identification

Author:

Kesavan Sujatha1,Anbarasan Kalaivani2,Chandrasekharan Tamilselvi3,Sam Dahlia3,Ganesamoorthi Nalinashini4,Chandrasekar Kamatchi5,Kumar Ramaraj Krishna6,Ganga Bhavani Nallamilli Pushpa7,Veerabathran Srividhya8,Rengammal Sankari B.1,Jhansi Gujjula9

Affiliation:

1. EEE Department, Dr. MGR Educational and Research Institute, Chennai, India

2. Department of Computer Science and Engineering, Saveetha School of Engineering, Saveetha Institute of Medical & Technical Sciences Chennai, Tamil Nadu 602105, India

3. Department of Information Technology, Dr. MGR Educational and Research Institute, Chennai, India

4. Department of EIE, R. M. D. Engineering College, Chennai, India

5. Department of Biotechnology, The Oxford College of Science, Chennai, India

6. Department of EEE, School of Engineering, Vels Institute of Science, Technology and Advanced Studies, Chennai, India

7. Department of Electronics and Communications Engineering, Saveetha School of Engineering Chennai, Tamil Nadu, India

8. Department of EEE, Meenakshi Engineering College Chennai, Tamil Nadu 600078, India

9. Department of EEE, Dr. MGR Educational and Research Institute, Chennai, India

Abstract

The agricultural sector has become an important income source for our country. In terms of nutrient absorption, plant diseases affecting the agricultural yield are creating a great hazard. In agriculture, recognizing infectious plants seems challenging due to the premise of the needed infrastructure. To prevent the spread of diseases, the identification of infectious leaves in the plant is observed to be a necessary step. This work aims to propose a machine learning technique on the ANN method for plant diseases identification and classification. This paper proposes a novel hybrid algorithm, called Black Widow Optimization Algorithm with Mayfly Optimization Algorithm (BWO-MA), for solving global optimization problems. In this paper, a BWO-MA with Artificial Neural Networks (ANN) based diagnostic model for earlier diagnosis of plant diseases is developed. Comparison has been done with existing machine learning methods with the proposed BWO-MA-based ANN architecture to accommodate greater performance. The comprehensive analysis showed that our proposal achieved splendid state-of-the-art performance.

Publisher

BENTHAM SCIENCE PUBLISHERS

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