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IoT-Enabled Plant Growth Prediction and Health Monitoring System Using Sensor Fusion and Machine Learning Techniques

[journal article]

Dada, Temitope James
Oge, Elekwa
Okhueleigbe, Vincent
Ishiwu, Jude
Onyeyili, Ikemefuna
Clarke, Shokare

Abstract

The major challenges farmers face are predicting plant growth and identifying health problems before it is too late. The manual observations in old methods typically result in resource waste and erroneous predictions, damaging the ecosystem and crop production. Getting a dependable and automated sys... view more

The major challenges farmers face are predicting plant growth and identifying health problems before it is too late. The manual observations in old methods typically result in resource waste and erroneous predictions, damaging the ecosystem and crop production. Getting a dependable and automated system to mitigate the challenges is now more important than ever.Given this pressing need, this paper proposes a creative solution using environmental and plant-specific sensors to collect real-time data. Then, it will be analysed using simplified machine learning algorithms, specifically Random Forest Classifiers, to precisely forecast plant growth stages and Support Vector Machine (SVM) to detect potential health problems. After testing this on various plant types, the accuracy of growth prediction was approximately 92.5% and 95.2% while detecting the plant's health issues.This system optimises crop yields and reduces resource consumption while minimising environmental impact. Furthermore, the system is flexible and more suitable for diverse farming needs, including smart farming and managing greenhouses. This research enables the farmers to make informed decisions and cultivate a more sustainable future.... view less

Keywords
agriculture

Classification
Natural Science and Engineering, Applied Sciences

Free Keywords
Agriculture; IoT; Support Vector Machine; Precision Agriculture; Sensor Fusion; Machine Learning

Document language
English

Publication Year
2025

Page/Pages
p. 7001-7006

Journal
Path of Science, 11 (2025) 1

ISSN
2413-9009

Status
Published Version; peer reviewed

Licence
Creative Commons - Attribution 4.0


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Home  |  Legal notices  |  Operational concept  |  Privacy policy
© 2007 - 2025 Social Science Open Access Repository (SSOAR).
Based on DSpace, Copyright (c) 2002-2022, DuraSpace. All rights reserved.