Published September 9, 2022 | Version v1
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A Multilayer Deep Learning Approach for Malware Classification in 5G-Enabled IIoT

  • 1. School of Computing and Information Science, Anglia Ruskin University Cambridge, Cambridge, U.K.
  • 2. Department of Computer Science, Universitá degli Studi di Milano, Milano, Italy
  • 3. Faculty of Computing and Artificial Intelligence, Air University, Islamabad, Pakistan
  • 4. Department of Embedded Systems Engineering, Incheon National University, Incheon, Korea

Description

5G is becoming the foundation for the Industrial Internet of Things (IIoT) enabling more effective lowlatency integration of artificial intelligence and cloud computing in a framework of a smart and intelligent IIoT ecosystems enhancing the entire industrial procedure. However, it also increases the functional complexities of the underlying control system and introduces new powerful attack vectors leading to severe security and data privacy risks. Malware attacks are starting targeting weak but highly connected IoT devices showing the importance of security and privacy in this scenario. This article designs a 5G-enabled system, consisted in a deep learning based architecture aimed to classify malware attacks on the IIoT. Our methodology is based on an image representation of the malware and a convolutional neural networks that is designed to differentiate various malware attacks. The proposed architecture extracts complementary discriminative features by combining multiple layers achieving 97% of accuracy.

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Funding

CONCORDIA – Cyber security cOmpeteNCe fOr Research anD InnovAtion 830927
European Commission