Journal article
2024 4th International Conference on Innovative Research in Applied Science, Engineering and Technology (IRASET), 2024
APA
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Slimani, H., Mhamdi, J., & Jilbab, A. (2024). Enhancing Crop Health in Smart Greenhouse Through IoT-Based Data Optimization and Deep Learning Algorithms. 2024 4th International Conference on Innovative Research in Applied Science, Engineering and Technology (IRASET).
Chicago/Turabian
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Slimani, Hicham, J. Mhamdi, and A. Jilbab. “Enhancing Crop Health in Smart Greenhouse Through IoT-Based Data Optimization and Deep Learning Algorithms.” 2024 4th International Conference on Innovative Research in Applied Science, Engineering and Technology (IRASET) (2024).
MLA
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Slimani, Hicham, et al. “Enhancing Crop Health in Smart Greenhouse Through IoT-Based Data Optimization and Deep Learning Algorithms.” 2024 4th International Conference on Innovative Research in Applied Science, Engineering and Technology (IRASET), 2024.
BibTeX Click to copy
@article{hicham2024a,
title = {Enhancing Crop Health in Smart Greenhouse Through IoT-Based Data Optimization and Deep Learning Algorithms},
year = {2024},
journal = {2024 4th International Conference on Innovative Research in Applied Science, Engineering and Technology (IRASET)},
author = {Slimani, Hicham and Mhamdi, J. and Jilbab, A.}
}
Integrating convolutional neural networks (CNNs) with the Internet of Things (IoT) is paramount in agriculture, particularly greenhouses. By leveraging IoT capabilities, operators can collect agro-environmental information inside the greenhouse based on installed sensor nodes. This data-driven approach minimizes water, fertilizer, and energy waste. Simul-taneously, CNNs enhance the monitoring systems by facilitating early detection and classification of crop diseases. Our research proposes a comprehensive solution: an online technology platform for intelligent greenhouses based on IoT and CNNs. This platform effectively collects environmental and physical variables and detects diseases in real time using image-based analysis. The results of our study demonstrate that the system architecture is a reliable IoT platform, leading to significant energy savings. Moreover, the disease identification accuracy and classification process achieved an impressive rate of over 98 %, ensuring the system's efficacy in identifying and categorizing diseases. Additionally, the system exhibits a recall rate of over 90 %, indicating its ability to identify and recall crop disease instances accurately.