DeepDetect: An innovative hybrid deep learning framework for anomaly detection in IoT networks

被引:1
|
作者
Zulfiqar, Zeenat [1 ]
Malik, Saif U. R. [2 ]
Moqurrab, Syed Atif [3 ]
Zulfiqar, Zubair [4 ]
Yaseen, Usman [5 ]
Srivastava, Gautam [6 ,7 ,8 ,9 ]
机构
[1] COMSATS Univ, Dept Comp Sci, Islamabad, Pakistan
[2] Cybernet AS, Informat Secur Inst, Tallinn, Estonia
[3] Univ Bedfordshire, Sch Comp Sci & Technol, Univ Sq, Luton LU1 3JU, England
[4] Natl Univ Sci & Technol NUST, Dept Software Engn, Islamabad, Pakistan
[5] Univ Derby, Derby, England
[6] Brandon Univ, Dept Math & Comp Sci, Brandon, MB, Canada
[7] Lebanese Amer Univ, Dept Comp Sci & Math, Byblos, Lebanon
[8] China Med Univ, Res Ctr Interneural Comp, Taichung, Taiwan
[9] Chitkara Univ, Inst Engn & Technol, Ctr Res Impact & Outcome, Rajpura 140401, Punjab, India
关键词
Anomaly detection; Network security; 5G; Deep learning; Internet of things; NSL-KDD; INTRUSION; MODEL; PERFORMANCE; MECHANISM; ENSEMBLE; MACHINE;
D O I
10.1016/j.jocs.2024.102426
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
The presence of threats and anomalies in the Internet of Things infrastructure is a rising concern. Attacks, such as Denial of Service, User to Root, Probing, and Malicious operations can lead to the failure of an Internet of Things system. Traditional machine learning methods rely entirely on feature engineering availability to determine which data features will be considered by the model and contribute to its training and classification and "dimensionality"reduction techniques to find the most optimal correlation between data points that influence the outcome. The performance of the model mostly depends on the features that are used. This reliance on feature engineering and its effects on the model performance has been demonstrated from the perspective of the Internet of Things intrusion detection system. Unfortunately, given the risks associated with the Internet of Things intrusion, feature selection considerations are quite complicated due to the subjective complexity. Each feature has its benefits and drawbacks depending on which features are selected. Deep structured learning is a subcategory of machine learning. It realizes features inevitably out of raw data as it has a deep structure that contains multiple hidden layers. However, deep learning models such as recurrent neural networks can capture arbitrary-length dependencies, which are difficult to handle and train. However, it is suffering from exploiting and vanishing gradient problems. On the other hand, the log-cosh conditional variational Autoencoder ignores the detection of the multiple class classification problem, and it has a high level of false alarms and a not high detection accuracy. Moreover, the Autoencoder ignores to detect multi-class classification. Furthermore, there is evidence that a single convolutional neural network cannot fully exploit the rich information in network traffic. To deal with the challenges, this research proposed a novel approach for network anomaly detection. The proposed model consists of multiple convolutional neural networks, gate- recurrent units, and a bi-directional-long-short-term memory network. The proposed model employs multiple convolution neural networks to grasp spatial features from the spatial dimension through network traffic. Furthermore, gate recurrent units overwhelm the problem of gradient disappearing- and effectively capture the correlation between the features. In addition, the bi-directional-long short-term memory network approach was used. This layer benefits from preserving the historical context for a long time and extracting temporal features from backward and forward network traffic data. The proposed hybrid model improves network traffic's accuracy and detection rate while lowering the false positive rate. The proposed model is evaluated and tested on the intrusion detection benchmark NSL-KDD dataset. Our proposed model outperforms other methods, as evidenced by the experimental results. The overall accuracy of the proposed model for multi-class classification is 99.31% and binary-class classification is 99.12%.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] A Novel Hybrid Deep Learning Framework for Intrusion Detection Systems in WSN-IoT Networks
    Maheswari, M.
    Karthika, R. A.
    INTELLIGENT AUTOMATION AND SOFT COMPUTING, 2022, 33 (01): : 365 - 382
  • [2] A Hybrid Deep Learning Approach for Intrusion Detection in IoT Networks
    Emec, Murat
    Ozcanhan, Mehmet Hilal
    ADVANCES IN ELECTRICAL AND COMPUTER ENGINEERING, 2022, 22 (01) : 3 - 12
  • [3] Deep Learning-Driven Anomaly Detection for Green IoT Edge Networks
    Bushehri, Ahmad Shahnejat
    Amirnia, Ashkan
    Belkhiri, Adel
    Keivanpour, Samira
    de Magalhaes, Felipe Gohring
    Nicolescu, Gabriela
    IEEE TRANSACTIONS ON GREEN COMMUNICATIONS AND NETWORKING, 2024, 8 (01): : 498 - 513
  • [4] Innovative Defense: Deep Learning-Powered Intrusion Detection for IoT Networks
    Binbusayyis, Adel
    IEEE ACCESS, 2025, 13 : 31105 - 31120
  • [5] Anomaly Detection at the IoT Edge using Deep Learning
    Utomo, Darmawan
    Hsiung, Pao-Ann
    2019 IEEE INTERNATIONAL CONFERENCE ON CONSUMER ELECTRONICS - TAIWAN (ICCE-TW), 2019,
  • [6] Anomaly-Based Intrusion Detection Model Using Deep Learning for IoT Networks
    Alsoufi, Muaadh A.
    Siraj, Maheyzah Md
    Ghaleb, Fuad A.
    Al-Razgan, Muna
    Al-Asaly, Mahfoudh Saeed
    Alfakih, Taha
    Saeed, Faisal
    CMES-COMPUTER MODELING IN ENGINEERING & SCIENCES, 2024, 141 (01): : 823 - 845
  • [7] Design and Development of a Deep Learning-Based Model for Anomaly Detection in IoT Networks
    Ullah, Imtiaz
    Mahmoud, Qusay H.
    IEEE ACCESS, 2021, 9 (09): : 103906 - 103926
  • [8] Machine Learning Approaches for Anomaly Detection in IoT Networks
    Kumar, Gotte Ranjith
    Kulkarni, Anagha Deepak
    Kumar, B. Santhosh
    Singh, Navdeep
    Revathi, V
    Kumar, T. Ch. Anil
    2024 INTERNATIONAL CONFERENCE ON ADVANCES IN COMPUTING, COMMUNICATION AND APPLIED INFORMATICS, ACCAI 2024, 2024,
  • [9] An Unsupervised Deep Learning Framework for Anomaly Detection
    Kuo, Che-Wei
    Ying, Josh Jia-Ching
    INTELLIGENT INFORMATION AND DATABASE SYSTEMS, ACIIDS 2023, PT I, 2023, 13995 : 284 - 295
  • [10] An explainable deep learning-enabled intrusion detection framework in IoT networks
    Keshk, Marwa
    Koroniotis, Nickolaos
    Pham, Nam
    Moustafa, Nour
    Turnbull, Benjamin
    Zomaya, Albert Y.
    INFORMATION SCIENCES, 2023, 639