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American Scientific Publishing Group

verified Journal

International Journal of BIM and Engineering Science

ISSN
Online: 2571-1075
Frequency

Twice a year

Publication Model

Open access journal. All articles are freely available online with no APC.

International Journal of BIM and Engineering Science
Full Length Article

Volume 10Issue 1PP: 26-34 • 2025

IoT-Based Smart Agricultural Monitoring Using WSN and Predictive Analytics with Artificial Intelligence (AI)

K. Dhineshkumar 1* ,
Tatiraju V. Rajani Kanth 2 ,
A. Babiyola 3 ,
Haritima Mishra 4
1Associate Professor, Department of Electrical and Electronics Engineering KIT-Kalaignarkarunanidhi Institute of Technology, Coimbatore, India
2Senior Manager, TVR Consulting Services Private Limited Gajularamaram, Medchal Malkangiri district, Hyderabad - 500055, Telegana, India
3Professor, Dept of ECE, Meenakshi Sundararajan Engineering College, Kodambakkam Chennai, India
4Artificial Intelligence and Machine Learning, Sagar Institute of Research & Technology, Bhopal, India
* Corresponding Author.
Received: March 03, 2024 Revised: August 11, 2024 Accepted: November 10, 2024

Abstract

Smart agriculture leverages Internet of Things (IoT) technology to improve crop yield, resource efficiency, and environmental sustainability. This study presents an IoT-based smart agricultural monitoring system that integrates Wireless Sensor Networks (WSNs) with predictive analytics to monitor key environmental parameters, such as soil moisture, temperature, humidity, and light intensity, in real-time. The system utilizes WSNs to gather data from distributed sensor nodes and employs machine learning models for predictive analytics, enabling proactive decision-making for optimized irrigation, fertilization, and pest control. Experimental results demonstrate that the proposed system enhances resource usage by 40% and increases crop yield by 30% compared to traditional farming methods with Artificial Intelligence (AI). Additionally, the predictive analytics component achieves an accuracy of 92% in forecasting environmental conditions, aiding in timely interventions and minimizing crop stress. This IoT-based solution supports sustainable farming practices and offers scalability for various agricultural applications, including precision farming and greenhouse monitoring.

Keywords

IoT Smart Agriculture Wireless Sensor Networks (WSN) Predictive Analytics Real-Time Monitoring Soil Moisture Resource Optimization Crop Yield Sustainable Farming Precision Agriculture Greenhouse Monitoring Artificial Intelligence (AI)

References

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Dhineshkumar, K., Kanth, Tatiraju V. Rajani, Babiyola, A., Mishra, Haritima. "IoT-Based Smart Agricultural Monitoring Using WSN and Predictive Analytics with Artificial Intelligence (AI)." International Journal of BIM and Engineering Science, vol. Volume 10, no. Issue 1, 2025, pp. 26-34. DOI: https://doi.org/10.54216/IJBES.100104
Dhineshkumar, K., Kanth, T., Babiyola, A., Mishra, H. (2025). IoT-Based Smart Agricultural Monitoring Using WSN and Predictive Analytics with Artificial Intelligence (AI). International Journal of BIM and Engineering Science, Volume 10(Issue 1), 26-34. DOI: https://doi.org/10.54216/IJBES.100104
Dhineshkumar, K., Kanth, Tatiraju V. Rajani, Babiyola, A., Mishra, Haritima. "IoT-Based Smart Agricultural Monitoring Using WSN and Predictive Analytics with Artificial Intelligence (AI)." International Journal of BIM and Engineering Science Volume 10, no. Issue 1 (2025): 26-34. DOI: https://doi.org/10.54216/IJBES.100104
Dhineshkumar, K., Kanth, T., Babiyola, A., Mishra, H. (2025) 'IoT-Based Smart Agricultural Monitoring Using WSN and Predictive Analytics with Artificial Intelligence (AI)', International Journal of BIM and Engineering Science, Volume 10(Issue 1), pp. 26-34. DOI: https://doi.org/10.54216/IJBES.100104
Dhineshkumar K, Kanth T, Babiyola A, Mishra H. IoT-Based Smart Agricultural Monitoring Using WSN and Predictive Analytics with Artificial Intelligence (AI). International Journal of BIM and Engineering Science. 2025;Volume 10(Issue 1):26-34. DOI: https://doi.org/10.54216/IJBES.100104
K. Dhineshkumar, T. Kanth, A. Babiyola, H. Mishra, "IoT-Based Smart Agricultural Monitoring Using WSN and Predictive Analytics with Artificial Intelligence (AI)," International Journal of BIM and Engineering Science, vol. Volume 10, no. Issue 1, pp. 26-34, 2025. DOI: https://doi.org/10.54216/IJBES.100104
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