Analyzing Adversarial Attacks Against Deep Learning for Intrusion Detection in IoT Networks

被引:106
|
作者
Ibitoye, Olakunle [1 ]
Shafiq, Omair [1 ]
Matrawy, Ashraf [1 ]
机构
[1] Carleton Univ, Sch Informat Technol, Ottawa, ON, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Intrusion Detection; Adversarial samples; Feed-forward Neural Networks (FNN); Resilience; Self-normalizing Neural Networks (SNN); Internet of things (IoT);
D O I
10.1109/globecom38437.2019.9014337
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Adversarial attacks have been widely studied in the field of computer vision but their impact on network security applications remains an area of open research. As IoT, 5G and AI continue to converge to realize the promise of the fourth industrial revolution (Industry 4.0), security incidents and events on IoT networks have increased. Deep learning techniques are being applied to detect and mitigate many of such security threats against IoT networks. Feed-forward Neural Networks (FNN) have been widely used for classifying intrusion attacks in IoT networks. In this paper, we consider a variant of the FNN known as the Self-normalizing Neural Network (SNN) and compare its performance with the FNN for classifying intrusion attacks in an IoT network. Our analysis is performed using the BoT-IoT dataset from the Cyber Range Lab of the center of UNSW Canberra Cyber. In our experimental results, the FNN outperforms the SNN for intrusion detection in IoT networks based on multiple performance metrics such as accuracy, precision, and recall as well as multi-classification metrics such as Cohen Cappas score. However, when tested for adversarial robustness, the SNN demonstrates better resilience against the adversarial samples from the IoT dataset, presenting a promising future in the quest for safer and more secure deep learning in IoT networks.
引用
收藏
页数:6
相关论文
共 50 条
  • [21] Deep Learning in IoT Intrusion Detection
    Tsimenidis, Stefanos
    Lagkas, Thomas
    Rantos, Konstantinos
    JOURNAL OF NETWORK AND SYSTEMS MANAGEMENT, 2022, 30 (01)
  • [22] Evading Deep Reinforcement Learning-based Network Intrusion Detection with Adversarial Attacks
    Merzouk, Mohamed Amine
    Delas, Josephine
    Neal, Christopher
    Cuppens, Frederic
    Boulahia-Cuppens, Nora
    Yaich, Reda
    PROCEEDINGS OF THE 17TH INTERNATIONAL CONFERENCE ON AVAILABILITY, RELIABILITY AND SECURITY, ARES 2022, 2022,
  • [23] Intrusion detection models for IOT networks via deep learning approaches
    Madhu B.
    Venu Gopala Chari M.
    Vankdothu R.
    Silivery A.K.
    Aerranagula V.
    Measurement: Sensors, 2023, 25
  • [24] Adversarial Machine Learning Attacks against Intrusion Detection Systems: A Survey on Strategies and Defense
    Alotaibi, Afnan
    Rassam, Murad A.
    FUTURE INTERNET, 2023, 15 (02)
  • [25] Adversarial attacks against supervised machine learning based network intrusion detection systems
    Alshahrani, Ebtihaj
    Alghazzawi, Daniyal
    Alotaibi, Reem
    Rabie, Osama
    PLOS ONE, 2022, 17 (10):
  • [26] Defense Against Adversarial Attacks in Deep Learning
    Li, Yuancheng
    Wang, Yimeng
    APPLIED SCIENCES-BASEL, 2019, 9 (01):
  • [27] Anomaly based network intrusion detection for IoT attacks using deep learning technique
    Sharma, Bhawana
    Sharma, Lokesh
    Lal, Chhagan
    Roy, Satyabrata
    COMPUTERS & ELECTRICAL ENGINEERING, 2023, 107
  • [28] On the Robustness of Intrusion Detection Systems for Vehicles Against Adversarial Attacks
    Choi, Jeongseok
    Kim, Hyoungshick
    INFORMATION SECURITY APPLICATIONS, 2021, 13009 : 39 - 50
  • [29] Adversarial Examples Against the Deep Learning Based Network Intrusion Detection Systems
    Yang, Kaichen
    Liu, Jianqing
    Zhang, Chi
    Fang, Yuguang
    2018 IEEE MILITARY COMMUNICATIONS CONFERENCE (MILCOM 2018), 2018, : 559 - 564
  • [30] Forming Adversarial Example Attacks Against Deep Neural Networks With Reinforcement Learning
    Akers, Matthew
    Barton, Armon
    COMPUTER, 2024, 57 (01) : 88 - 99