Towards SDN-Enabled, Intelligent Intrusion Detection System for Internet of Things (IoT)

The Internet of Things (IoT) has established itself as a multibillion-dollar business in recent years. Despite its obvious advantages, the widespread nature of IoT renders it insecure and a potential target for cyber-attacks. Furthermore, these devices broad connectivity and dynamic heterogeneous nature can open up a new surface of attack for refined malware attacks. There is a critical need to protect the IoT environment from such attacks and malware. Therefore this research aims to propose an intelligent, SDN-enabled hybrid framework leveraging Cuda Long Short Term Memory Gated Recurrent Unit (cuLSTMGRU) for efficient threat detection in IoT environments. To properly assess the proposed system, a state-of-the-art IoT-based dataset and standard evaluation metrics were used. The proposed model achieved 99.23 % detection accuracy with a low false-positive rate. For further verification, we compare the proposed model results with two of our constructed models (i.e., cuBLSTM and cuGRUDNN) and current benchmark algorithms. The proposed model outclassed the other models regarding speed efficiency, detection accuracy, precision, and other standard evaluation metrics. Finally, the proposed work employed 10-fold cross-validation to ensure that the results were completely unbiased. © 2013 IEEE.

Authors
Muthanna M.S.A.1 , Alkanhel R.2 , Muthanna A. 3 , Rafiq A.4 , Abdullah W.A.M.5
Journal
Publisher
Institute of Electrical and Electronics Engineers Inc.
Language
English
Pages
22756-22768
Status
Published
Volume
10
Year
2022
Organizations
  • 1 Institute of Computer Technologies and Information Security, Southern Federal University, Taganrog, Russian Federation
  • 2 Department of Information Technology, College of Computer and Information Sciences, Princess Nourah bint Abdulrahman University, Riyadh, Saudi Arabia
  • 3 Department of Applied Probability and Informatics, Peoples' Friendship University of Russia (RUDN University), Moscow, Russian Federation
  • 4 College of Computer Science and Technology, Chongqing University of Posts and Telecommunications, Chongqing, China
  • 5 Department of Mathematics Mechanics, Saint Petersburg State University, Saint Petersburg, Russian Federation
Keywords
Deep learning; intrusion detection; IoT; network security; software-defined network
Date of creation
06.07.2022
Date of change
06.07.2022
Short link
https://repository.rudn.ru/en/records/article/record/84260/
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