A Hybrid Neural Network for Simultaneous Multi-Attack Detection in Sensor Networks

Nishanth Chennagouni,Mohammad Monjur,Wei Lu,Qiaoyan Yu

2023 ASIAN HARDWARE ORIENTED SECURITY AND TRUST SYMPOSIUM, ASIANHOST(2023)

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摘要
As a critical component in Internet-of-Things and Artificial Intelligence applications, wireless sensor networks suffer from various cybersecurity attacks, such as jamming and relay attacks. Since heterogeneous attacks could co-exist in practical application scenarios, existing works that only mitigate one type of attacks will expose some vulnerability space for adversaries to explore. Moreover, due to the emergence of new attacks, it is imperative to empower sensor networks with intelligent defense methods to address attack variants. In this work, we propose a hybrid convolutional-recurrent neural network (CRNN) to simultaneously detect multiple attacks in wireless sensor networks. The proposed CRNN architecture is capable of handling multi-label classification with 44% fewer neurons than RNN. Our simulation results indicate that CRNNs achieves 12% higher sensitivity in simultaneously identifying jamming and replay attacks compared to CNN. When attempting to detect multi-class attacks, CRNNs reduce the misclassification rate by 17% over CNN. Furthermore, the proposed CRNN obtains the highest temporal correlation in model learning compared to CNN and RNN.
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关键词
Neural Network,Sensor Networks,Simultaneous Detection,Hybrid Neural Network,Detection In Sensor Networks,Convolutional Neural Network,Recurrent Neural Network,Multi-label,Types Of Attacks,Wireless Sensor Networks,Misclassification Rate,Replay Attacks,Multiple Attacks,Convolutional Recurrent Neural Network,Jamming Attacks,Machine Learning,Spectroscopic,Artificial Neural Network,Convolutional Layers,Receiver Node,Attack Detection,Short-time Fourier Transform,Convolutional Neural Network Model,Long Short-term Memory,Precision And Recall,Dense Layer,Gaussian Mixture Model,Supervised Learning,Wide Area Network
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