IOT-Based Crop Recommendation Using Machine Learning

Authors

  • Sanket Chor HSBPVT’s GOI Faculty of Engineering, Kashti, SPPU, Maharashtra, India Author
  • Bhagyashri Dandekar HSBPVT’s GOI Faculty of Engineering, Kashti, SPPU, Maharashtra, India Author
  • Shelar Prerna HSBPVT’s GOI Faculty of Engineering, Kashti, SPPU, Maharashtra, India Author
  • Prof. Satish Shelke HSBPVT’s GOI Faculty of Engineering, Kashti, SPPU, Maharashtra, India Author
  • Dr. Sudhir Divekar HSBPVT’s GOI Faculty of Engineering, Kashti, SPPU, Maharashtra, India Author

Keywords:

IOT, cloud, python, machine learning

Abstract

This implementation report presents the design, development, and deployment of an IoT machine learning-based crop recommendation system. The system is designed to assist farmers with optimal crop recommendations made based on real-time environmental conditions reported by multiple low-cost IoT sensors. The sensors record major parameters like soil moisture, temperature, humidity, and pH levels that are sent to a cloud platform for centralized storage and processing. Sophisticated machine learning models scan present and past data to create accurate and timely crop recommendation advice in order to increase yield efficiency and support sustainable agriculture. Initial tests show enhancements in resource management and crop output, highlighting the promise of this combined solution for precision agriculture. Future efforts will be directed toward scaling the system, improving data analytics through incorporation of weather, and increasing the user interface for wider use across farming communities. Keywords: IoT-based Agriculture, Crop Recommendation System, Precision Agriculture, Machine Learning, Real-Time Data Acquisition, Sensor Networks, Cloud Computing, Environmental Monitoring, Data Preprocessing, Sustainable Farming

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Published

21-05-2025

Issue

Section

Research Articles

How to Cite

[1]
Sanket Chor, Bhagyashri Dandekar, Shelar Prerna, Prof. Satish Shelke, and Dr. Sudhir Divekar, “IOT-Based Crop Recommendation Using Machine Learning”, Int J Sci Res Sci Eng Technol, vol. 12, no. 3, pp. 272–282, May 2025, Accessed: May 24, 2025. [Online]. Available: https://ijsrset.com/index.php/home/article/view/IJSRSET2512307

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