IoT Intrusion Detection Model based on CNN-GRU

Authors

  • Zhaolian Wang
  • Hong Huang
  • Rui Du
  • Xing Li
  • Guotao Yuan

DOI:

https://doi.org/10.54097/fcis.v4i2.10302

Keywords:

IoT Intrusion Detection, CNN, GRU

Abstract

With the rapid development of IoT technology, security concerns surrounding IoT devices have gained attention. An intrusion detection system for IoT can quickly and accurately identify highly redundant data features in IoT traffic categories. To reduce data, feature redundancy during the identification process, this study proposes the use of Extreme Gradient Boosting (XGBoost) for feature selection to obtain an optimal feature subset. Additionally, to improve the accuracy of identifying malicious traffic in IoT devices, a fusion model combining Convolutional Neural Networks (CNN) and Gated Recurrent Units (GRU) for IoT intrusion detection is proposed. Finally, a comparative analysis experiment is conducted between CNN-GRU and CNN-LSTM, demonstrating that the proposed model achieves lower processing time while ensuring accuracy. Furthermore, the proposed method outperforms classical IoT intrusion detection algorithms in terms of precision and recall.

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References

Gupta B B, Dahiya A. Distributed Denial of Service (DDoS) Attacks: Classification, Attacks, Challenges and Countermeasures [M]. CRC press, 2021.

Chaabouni N, Mosbah M, Zemmari A, et al. Network intrusion detection for IoT security based on learning techniques [J]. IEEE Communications Surveys & Tutorials, 2019, 21(3): 2671-2701.

Makhdoom I, Abolhasan M, Lipman J, et al. Anatomy of threats to the internet of things[J]. IEEE communications surveys & tutorials, 2018, 21(2): 1636-1675.

Angrishi K. Turning internet of things (iot) into internet of vulnerabilities (iov): Iot botnets[J]. arXiv preprint arXiv: 1702. 03681, 2017.

Bhunia S S, Gurusamy M. Dynamic attack detection and mitigation in IoT using SDN[C]//2017 27th International telecommunication networks and applications conference (ITNAC). IEEE, 2017: 1-6.

Hodo E, Bellekens X, Hamilton A, et al. Threat analysis of IoT networks using artificial neural network intrusion detection system [C]//2016 International Symposium on Networks, Computers and Communications (ISNCC). IEEE, 2016: 1-6.

Chakraborty D, Narayanan V, Ghosh A. Integration of deep feature extraction and ensemble learning for outlier detection [J]. Pattern Recognition, 2019, 89: 161-171.

Wang Yun, Yu Yao, Zhao Yujia, et al. Intrusion Detection and Defense Mechanism Based on SDN in Home Internet of Things [J]. Control Engineering, 2021, 28(05): 1027-1032. DOI: 10. 14107/ j.cnki.kzgc.20200900.

Alkahtani H, Aldhyani T H H. Botnet attack detection by using CNN-LSTM model for Internet of Things applications[J]. Security and Communication Networks, 2021, 2021: 1-23.

Alkahtani H, Aldhyani T H H. Botnet attack detection by using CNN-LSTM model for Internet of Things applications[J]. Security and Communication Networks, 2021, 2021: 1-23.

Li Xiaojia, Zhao Guosheng, Wang Yang, Ning Ke. IoT Intrusion Detection Model for CNN and RNN Improvement [J/OL]. Computer Engineering and Applications: 1-10 [2023-04-21]. http://kns.cnki. net/kcms/ detail/11. 2127. TP. 2023 0302. 1415.004.html.

Liu J, Sun X, Jin J. Intrusion detection model based on principal component analysis and recurrent neural network[J]. Journal of Chinese Information Processing, 2020, 34(10): 105-112.

Zhou Jieying, He Pengfei, Qiu Rongfa, et al. Intrusion Detection Research Based on the Fusion of Random Forest and Gradient Boosting Tree[J]. Journal of Software, 2021, 32(10): 3254-3265. DOI: 10.13328/j.cnki.jos.006062.

Abbasi F, Naderan M, Alavi S E. Intrusion detection in iot with logistic regression and artificial neural network: further investigations on n-baiot dataset devices[J]. Journal of Computing and Security, 2021, 8(2): 27-42.

Nõmm S, Bahşi H. Unsupervised anomaly based botnet detection in IoT networks [C]//2018 17th IEEE international conference on machine learning and applications (ICMLA). IEEE, 2018: 1048-1053.

Hezam A A, Mostafa S A, Baharum Z, et al. Combining Deep Learning Models for Enhancing the Detection of Botnet Attacks in Multiple Sensors Internet of Things Networks[J]. JOIV: International Journal on Informatics Visualization, 2021, 5(4): 380-387.

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Published

26-06-2023

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Section

Articles

How to Cite

Wang, Z., Huang, H., Du, R., Li, X., & Yuan, G. (2023). IoT Intrusion Detection Model based on CNN-GRU. Frontiers in Computing and Intelligent Systems, 4(2), 90-95. https://doi.org/10.54097/fcis.v4i2.10302