AI-Driven Automated System for Paddy Disease Detection Using Sensor Networks and Drone-Based Image Analysis
Authors
Department of Electronics, Wayamba University of Sri Lanka, Kuliyapitiya (Sri Lanka)
Department of Electronics, Wayamba University of Sri Lanka, Kuliyapitiya (Sri Lanka)
Article Information
DOI: 10.51584/IJRIAS.2026.11010008
Subject Category: Agriculture
Volume/Issue: 11/1 | Page No: 113-120
Publication Timeline
Submitted: 2025-12-24
Accepted: 2025-12-30
Published: 2026-01-22
Abstract
Paddy cultivation is vital for Sri Lanka’s food security, but increasing plant diseases due to adverse climate, declining soil health, irregular water availability, and unpredictable weather have caused a continuous drop in yield, highlighting the need for effective disease detection. This study presents an integrated paddy disease detection system that combines Internet of Things based environmental sensing with drone-based remotesensing imagery and artificial intelligence techniques. The proposed system employs an ESP32 microcontroller interfaced with more accurate sensors to monitor soil, water, and agro-climatic parameters in real time. Machine learning models are applied to analyze the collected sensor data and predict potential paddy diseases based on environmental conditions. In parallel, a drone imaging system captures high-resolution images of paddy fields, which are processed using deep learning models developed with Keras and TensorFlow to detect and classify disease symptoms. A Flask-based web application is developed to visualize sensor data, display disease predictions, and provide actionable recommendations for farmers and agricultural officers. Experimental results demonstrate that the proposed system achieves an overall disease detection accuracy of 98%, with additional evaluation using precision, recall, F1-score, and confusion matrix analysis confirming its robustness and reliability. The practicality of the proposed system is enhanced by its low cost, portability, and modular design, enabling easy deployment in small and large paddy fields and allowing scalability to regional and national agricultural monitoring systems.
Keywords
Sensor-based paddy disease
Downloads
References
1. Ayyappan, A. B., Gobinath, T., Kumar, M., et al. (2025). Rice plant disease detection using convolutional neural networks. Discover Artificial Intelligence, 5, 50. [Google Scholar] [Crossref]
2. Prajwal Gowda, B. S., Nisarga, M. A., Rachana, M., Shashank, S., & Raj, B. S. (2020). Paddy crop disease detection using machine learning. International Journal of Engineering Research & Technology, 8, 192– 195. [Google Scholar] [Crossref]
3. Daniya, T., & Vigneshwari, S. (2019). A review on machine learning techniques for rice plant disease detection in agricultural research. System, 28, 49–62. [Google Scholar] [Crossref]
4. Wu, Y., Yang, Z., & Liu, Y. (2023). Internet-of-things-based multiple-sensor monitoring system for soil information diagnosis using a smartphone. Micromachines, 14, Article 123. [Google Scholar] [Crossref]
5. Khirade, S. D., & Patil, A. B. (2015). Plant disease detection using image processing. In Proceedings of the International Conference on Computing Communication Control and Automation (pp. 768–771). https://doi.org/10.1109/ICCUBEA.2015.153 [Google Scholar] [Crossref]
6. Huang, J., Li, J., Li, Z., Zhu, Z., Shen, C., Qi, G., & Yu, G. (2022). Detection of diseases using machine learning image recognition technology in artificial intelligence. Computational Intelligence and Neuroscience, 2022, 5658641. https://doi.org/10.1155/2022/5658641 [Google Scholar] [Crossref]
Metrics
Views & Downloads
Similar Articles
- Breeding for a Greener Future: Selective Breeding and Crossbreeding Approaches to Minimize Methane Emissions in Ruminant Livestock
- Determinants of Adoption of Post-Harvest Losses Prevention Techniques among Banana/Plantain Marketers in Lagos State, Nigeria
- Enhancing Rice Yield Prediction Using UAV-Based Multispectral Imaging and Machine Learning Algorithms
- Seed-Borne Fungi of Groundnuts (Arachis Hypogaea) and Their Management with Ginger (Zingiber Officinale) Extract In Makurdi, Nigeria
- The Influence of Landforms and Slope on Agricultural Cropping Patterns in Chhatrapati Sambhajinagar District