том 29 издание 4 страницы 759-777

Lightweight deep transfer learning for earthquake detection in resource-constrained IoT devices

Тип публикацииJournal Article
Дата публикации2025-07-15
scimago Q2
wos Q2
БС2
SJR0.530
CiteScore3.3
Impact factor2.0
ISSN13834649, 1573157X
Краткое описание
In a natural disaster, intelligent Internet of Things (IoT) systems can be utilized to respond appropriately. Recently, the application of IoT technology in seismology, particularly in earthquake detection, has garnered much attention. This approach’s attractiveness lies in its simplicity of installation, minimal processing power requirements, cost-effectiveness, and expansive coverage, even in areas lacking Internet connectivity. However, the locality of installed sensors brings variations in seismic and noise data, making the earthquake detection task very challenging because of the false alarms. Network-based systems connecting multiple IoTs can resolve the issue by running highly computation-intensive algorithms on a powerful server or cloud and aggregating the data sent from those sensors. On the other hand, Standalone IoT devices operate independently, making decisions locally using both traditional and machine learning methods to manage false alarms. However, these techniques struggle to handle diverse noise patterns and often fail to detect low-magnitude earthquakes in noisy environments. While deep learning models can enhance earthquake detection in such conditions, their high computational cost makes them impractical for resource-constrained devices. To address these challenges, this article introduces a lightweight deep learning model incorporating a transfer learning approach for standalone devices. The proposed model outperforms traditional machine learning methods in earthquake detection using IoT sensors while significantly reducing computational demands. Designed to operate without internet connectivity, the Multi-headed Convolutional Neural Network (MCNN) model achieves 99% accuracy without incurring additional processing costs. Furthermore, it demonstrates high adaptability and the ability to update rapidly with minimal configuration changes.
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ГОСТ |
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Khan I. et al. Lightweight deep transfer learning for earthquake detection in resource-constrained IoT devices // Journal of Seismology. 2025. Vol. 29. No. 4. pp. 759-777.
ГОСТ со всеми авторами (до 50) Скопировать
Khan I., Ahn J. K., Young-Woo Kwon Lightweight deep transfer learning for earthquake detection in resource-constrained IoT devices // Journal of Seismology. 2025. Vol. 29. No. 4. pp. 759-777.
RIS |
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TY - JOUR
DO - 10.1007/s10950-025-10303-1
UR - https://link.springer.com/10.1007/s10950-025-10303-1
TI - Lightweight deep transfer learning for earthquake detection in resource-constrained IoT devices
T2 - Journal of Seismology
AU - Khan, Irshad
AU - Ahn, Jae Kwang
AU - Young-Woo Kwon
PY - 2025
DA - 2025/07/15
PB - Springer Nature
SP - 759-777
IS - 4
VL - 29
SN - 1383-4649
SN - 1573-157X
ER -
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@article{2025_Khan,
author = {Irshad Khan and Jae Kwang Ahn and Young-Woo Kwon},
title = {Lightweight deep transfer learning for earthquake detection in resource-constrained IoT devices},
journal = {Journal of Seismology},
year = {2025},
volume = {29},
publisher = {Springer Nature},
month = {jul},
url = {https://link.springer.com/10.1007/s10950-025-10303-1},
number = {4},
pages = {759--777},
doi = {10.1007/s10950-025-10303-1}
}
MLA
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Khan, Irshad, et al. “Lightweight deep transfer learning for earthquake detection in resource-constrained IoT devices.” Journal of Seismology, vol. 29, no. 4, Jul. 2025, pp. 759-777. https://link.springer.com/10.1007/s10950-025-10303-1.