An IOT-Driven Smart Agriculture Framework for Precision Farming, Resource Optimization, and Crop Health Monitoring

Authors

  • Engr. Faiza Irfan Senior Lecturer, Department Computer Science, Iqra University North Campus Author
  • Engr. Rukhsar Zaka Junior Lecturer, Department Computer Science, Iqra University North Campus Author
  • Engr. Sidra Rehman Senior Lecturer, Department Computer Science, Iqra University North Campus Author
  • Bushra Sattar Lab Instructor, Department Computer Science, Fast NUCES Karachi Author
  • Syed Arsalan Haider Senior Lecturer, Department Computer Science, Iqra University North Campus Author
  • Muhammad Ahsan Hayat Lecturer, Department Computer Science, Iqra University North Campus Author

DOI:

https://doi.org/10.63056/ACAD.004.03.0615

Keywords:

Internet of Things (IoT), Precision Agriculture, Smart Farming, Edge Computing, Crop Health Monitoring, LoRaWAN, NDVI, Artificial Intelligence, Blockchain Agriculture, Sustainable Farming

Abstract

The integration of the Internet of Things (IoT) into agriculture is revolutionizing the way food is produced, managed, and distributed. By combining networks of smart sensors, advanced communication protocols, distributed computing, and artificial intelligence (AI), IoT-based smart farming systems allow for precision monitoring and management of agricultural resources. These systems enable farmers to optimize irrigation, monitor crop health, and make real-time, data-driven decisions, thereby addressing challenges such as water scarcity, climate variability, and the growing demand for food. This paper presents an expanded IoT-driven smart agriculture framework with modular architecture, incorporating a perception layer, network layer, compute layer, application layer, and end-user layer. The framework integrates AI-based predictive analytics, blockchain for supply chain transparency, and renewable energy-powered devices. A pilot implementation on a 5-hectare wheat farm demonstrated a 30% reduction in water usage, early disease detection accuracy of 92%, and improved scalability for multi-crop environments. Comparative analysis with conventional farming practices shows significant improvements in resource efficiency and operational sustainability. The paper provides a detailed literature review, system design, experimental methodology, and future research directions, with a focus on interoperability, cost-effectiveness, and sustainability.

Downloads

Published

2025-08-16

How to Cite

An IOT-Driven Smart Agriculture Framework for Precision Farming, Resource Optimization, and Crop Health Monitoring. (2025). ACADEMIA International Journal for Social Sciences, 4(3), 3329-3342. https://doi.org/10.63056/ACAD.004.03.0615

Similar Articles

41-50 of 214

You may also start an advanced similarity search for this article.