Deep Learning-based Malicious Energy Attack Detection in Sustainable IoT Network
Document Type
Conference Proceeding
Publication Date
1-1-2024
Abstract
Through the use of renewable energy, sustainable Internet of Things (IoT) network can significantly enhance its sustainability and scalability. However, it faces a unique security challenge known as malicious energy attack (MEA), which compromises information security by selectively charging nodes to manipulate the routing path in the network. To efficiently counter MEA, we introduce a two-stage deep learning framework to accurately detect the presence of MEA. It is composed of a stacked residual network (SR-Net) for classification and a stacked LSTM network (SL-Net) for prediction. This model is capable of determining whether an IoT network is under MEA attacks and identifying the affected nodes. Our experimental results verify the efficacy of our proposed model, with the SR-Net demonstrating an average binary cross entropy of less than 0.0590, and the SL-Net showcasing an average mean-square error of approximately 0.0215. These results suggest a high degree of accuracy in detecting MEAs, underscoring the potential of our approach in fortifying the security of sustainable IoT networks.
Identifier
85197922354 (Scopus)
ISBN
[9798350370997]
Publication Title
2024 International Conference on Computing, Networking and Communications, ICNC 2024
External Full Text Location
https://doi.org/10.1109/ICNC59896.2024.10556280
First Page
417
Last Page
422
Grant
2051356
Fund Ref
National Science Foundation
Recommended Citation
Zhang, Xinyu; Li, Long; Pu, Lina; Yang, Jing; Wang, Zichen; Fu, Rong; and Jiang, Zhipeng, "Deep Learning-based Malicious Energy Attack Detection in Sustainable IoT Network" (2024). Faculty Publications. 957.
https://digitalcommons.njit.edu/fac_pubs/957