Smart AgroSense: An IoT-Based Multi-Point Wireless Sensor System for Precision Farming
Authors
Shri Ramswaroop Memorial College of Engineering and Management, Lucknow (India)
Shri Ramswaroop Memorial College of Engineering and Management, Lucknow (India)
Vishwakarma Institute of Technology, Pune (India)
Pune Institute of Computer Technology (India)
PVG'S College of Engineering, Technology and Management, Pune (India)
Article Information
Publication Timeline
Submitted: 2025-12-06
Accepted: 2025-12-12
Published: 2026-01-05
Abstract
This paper presents Smart AgroSense, a cost-effective and energy-efficient IoT-based multi-point Wireless Sensor Network (WSN) designed for real-time precision agriculture. The system utilizes ESP32 microcontrollers and nRF24L01 RF transceivers to form a robust many-to-one communication architecture. Three remote sensor nodes, each integrating a DHT22 temperature–humidity sensor and a capacitive soil-moisture sensor, transmit localized environmental data to a central base station using a time-staggered, fixed-sequence protocol that ensures ordered and collision-free communication. It demonstrates a functional proof of concept for decentralized WSNs in agriculture, addressing challenges such as inefficient irrigation and delayed decision-making, and promoting sustainable, data-driven farming practices.
Keywords
IoT, Wireless Sensor Network (WSN)
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References
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