IEEE Access (Jan 2021)

LocKedge: Low-Complexity Cyberattack Detection in IoT Edge Computing

  • Truong Thu Huong,
  • Ta Phuong Bac,
  • Dao M. Long,
  • Bui D. Thang,
  • Nguyen T. Binh,
  • Tran D. Luong,
  • Tran Kim Phuc

DOI
https://doi.org/10.1109/ACCESS.2021.3058528
Journal volume & issue
Vol. 9
pp. 29696 – 29710

Abstract

Read online

Internet of Things (IoT) and its applications are becoming commonplace with more devices, but always at risk of network security. It is therefore crucial for an IoT network design to identify attackers accurately, quickly and promptly. Many solutions have been proposed, mainly concerning secure IoT architectures and classification algorithms, but none of them have paid enough attention to reducing the complexity. Our proposal in this paper is an edge-cloud architecture that fulfills the detection task right at the edge layer, near the source of the attacks for quick response, versatility, as well as reducing the Cloud's workload. We also propose a multi-attack detection mechanism called LocKedge (Low-Complexity Cyberattack Detection in IoT Edge Computing), which has low complexity for deployment at the edge zone while still maintaining high accuracy. LocKedge is implemented in two manners: centralized manner and federated learning manner in order to verify the performance of the architecture from different perspectives. The performance of our proposed mechanism is compared with that of other machine learning and deep learning methods using the most updated BoT-IoT data set. The results show that LocKedge outperforms other algorithms such as NN, CNN, RNN, KNN, SVM, KNN, RF and Decision Tree in terms of accuracy and NN in terms of complexity.

Keywords