IEEE Access (Jan 2021)

A Hybrid DL-Based Detection Mechanism for Cyber Threats in Secure Networks

  • Sirajuddin Qureshi,
  • Jingsha He,
  • Saima Tunio,
  • Nafei Zhu,
  • Faheem Akhtar,
  • Faheem Ullah,
  • Ahsan Nazir,
  • Ahsan Wajahat

DOI
https://doi.org/10.1109/ACCESS.2021.3081069
Journal volume & issue
Vol. 9
pp. 73938 – 73947

Abstract

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The astonishing growth of sophisticated ever-evolving cyber threats and attacks throws the entire Internet-of-Things (IoT) infrastructure into chaos. As the IoT belongs to the infrastructure of interconnected devices, it brings along significant security challenges. Cyber threat analysis is an augmentation of a network security infrastructure that primarily emphasizes on detection and prevention of sophisticated network-based threats and attacks. Moreover, it requires the security of network by investigation and classification of malicious activities. In this study, we propose a DL-enabled malware detection scheme using a hybrid technique based on the combination of a Deep Neural Network(DNN) and Long Short-Term Memory(LSTM) for the efficient identification of multi-class malware families in IoT infrastructure. The proposed scheme utilizes latest 2018 dataset named as N_BaIoT. Furthermore, our proposed scheme is evaluated using standard performance metrics such as accuracy, recall, precision, F1-score, and so forth. The DL-based malware detection system achieves 99.96% detection accuracy for IoT based threats. Finally, we also compare our proposed work with other robust and state-of-the-art detection schemes.

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