Please use this identifier to cite or link to this item: https://er.knutd.edu.ua/handle/123456789/33934
Title: Design and implementation of an IoT-based system for intelligent crop health monitoring
Authors: Lavrik, Volodymyr
Alieksieieva, Hanna
Kovalska, Oksana
Lebedenko, Yuri
Sukalo, Maksym
Kudinov, Mykola
Vitaliy, Mezhuyev
Keywords: Internet of Things (IoT)
precision agriculture
deep learning
neural networks
YOLOv8
plant disease detection
edge computing
environmental monitoring
Issue Date: 31-Jan-2026
Citation: Lavrik V. Design and implementation of an IoT-based system for intelligent crop health monitoring / V. Lavrik, H. Alieksieieva, O. Kovalska, Y. Lebedenko, M. Sukalo, M. Kudinov, V. Mezhuyev // Second International Conference on Communication, Information, and Digital Technologies (31 January 2026). - SPIE digital library, 2026. - Vol. 14064. https://doi.org/10.1117/12.3090104.
Source: SPIE digital library
Abstract: This paper presents the development of an intelligent IoT device for automated, real-time monitoring of crop conditions in agriculture. The proposed solution involves Raspberry Pi Zero 2 W hardware, multi-sensor modules for environmental data collection, NB-IoT for long-range wireless communication, and the YOLOv8 convolutional neural network for plant image analysis. The objective is to create a compact, low-cost, and energy-efficient solution that enables early detection of plant diseases and environmental stress in remote or infrastructure-poor agricultural areas. The developed system enables accurate identification of disease symptoms and damage on crop leaves based on visual and environmental input, facilitating timely intervention and reducing yield loss. The YOLOv8 model was adapted for resource-constrained edge deployment, trained on a custom dataset of strawberry leaf diseases, and integrated into the embedded device with high accuracy and low latency. System testing confirmed reliable performance under field conditions, with successful image classification and robust NB-IoT communication. The proposed solution is scalable and applicable to various crops and contributes to the practical implementation of precision agriculture and intelligent farming systems.
DOI: 10.1117/12.3090104
URI: https://er.knutd.edu.ua/handle/123456789/33934
Faculty: Факультет мехатроніки та комп'ютерних технологій
Department: Кафедра прикладної фізики та вищої математики
ISBN: 0277-786X
Appears in Collections:Наукові публікації (статті)

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