Plant Heath Detection and Growth Monitoring Using ML and IoT

Authors

  • Shreyash Shastrakar Department Of Computer Science & Engineering KDK College of Engineering, Nagpur , Maharashtra, India Author
  • Suraj Naranje Department Of Computer Science & Engineering KDK College of Engineering, Nagpur , Maharashtra, India Author
  • Vansh Waghmare Department Of Computer Science & Engineering KDK College of Engineering, Nagpur , Maharashtra, India Author
  • Sushil Borkar Department Of Computer Science & Engineering KDK College of Engineering, Nagpur , Maharashtra, India Author
  • Truptesh Yednurwar Department Of Computer Science & Engineering KDK College of Engineering, Nagpur , Maharashtra, India Author
  • Suvidha Gurnule Department Of Computer Science & Engineering KDK College of Engineering, Nagpur , Maharashtra, India Author
  • Sakshi Bongirwar Department Of Computer Science & Engineering KDK College of Engineering, Nagpur , Maharashtra, India Author
  • Dr. A.A Jaiswal9 Department Of Computer Science & Engineering KDK College of Engineering, Nagpur , Maharashtra, India Author

Keywords:

Machine Learning (ML), Internet of Things (IoT), Soil Moisture Sensor, ESP-32 Microcontroller,DHT-11 Temperature Sensor , Breadboard.

Abstract

The health and growth of plants are crucial for agricultural productivity and food security. Traditional methods of plant health monitoring are time-consuming, labor-intensive, and often inaccurate. This study proposes an innovative approach to plant health detection and growth monitoring using machine learning and Internet of Things (IoT) technologies. Our system integrates sensors and cameras to collect real-time data on plant growth, temperature, humidity, and soil moisture. Machine learning algorithms are then applied to analyze this data and detect early signs of plant stress, disease, and pests. The system provides accurate and timely alerts to farmers, enabling them to take prompt action to prevent damage and optimize plant growth.

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References

References

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Published

22-03-2025

How to Cite

Plant Heath Detection and Growth Monitoring Using ML and IoT. (2025). International Journal for Research Publication and Seminar, 16(1), 247-256. https://jrpsjournal.in/index.php/j/article/view/95

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