Using Deep Learning Networks to Identify Cyber Attacks on Intrusion Detection for In-Vehicle Networks

被引:14
|
作者
Lin, Hsiao-Chung [1 ]
Wang, Ping [1 ]
Chao, Kuo-Ming [2 ]
Lin, Wen-Hui [1 ]
Chen, Jia-Hong [1 ]
机构
[1] Kun Shan Univ, Fac Dept Informat Management, Green Energy Technol Res Ctr, Tainan 710303, Taiwan
[2] Bournemouth Univ, Dept Comp & Informat, Bournemouth BH12 5BB, Dorset, England
关键词
in-vehicle network; car-hacking; HCRL dataset; VGG16; XGBoost; SECURITY; SYSTEM;
D O I
10.3390/electronics11142180
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
With rapid advancements in in-vehicle network (IVN) technology, the demand for multiple advanced functions and networking in electric vehicles (EVs) has recently increased. To enable various intelligent functions, the electrical system of existing vehicles incorporates a controller area network (CAN) bus system that enables communication among electrical control units (ECUs). In practice, traditional network-based intrusion detection systems (NIDSs) cannot easily identify threats to the CAN bus system. Therefore, it is necessary to develop a new type of NIDS-namely, on-the-move Intrusion Detection System (OMIDS)-to categorise these threats. Accordingly, this paper proposes an intrusion detection model for IVNs, based on the VGG16 classifier deep learning model, to learn attack behaviour characteristics and classify threats. The experimental dataset was provided by the Hacking and Countermeasure Research Lab (HCRL) to validate classification performance for denial of service (DoS), fuzzy attacks, spoofing gear, and RPM in vehicle communications. The proposed classifier's performance was compared with that of the XBoost ensemble learning scheme to identify threats from in-vehicle networks. In particular, the test cases can detect anomalies in terms of accuracy, precision, recall, and F1-score to ensure detection accuracy and identify false alarm threats. The experimental results show that the classification accuracy of the dataset for HCRL Car-Hacking by the VGG16 and XBoost classifiers (n = 50) reached 97.8241% and 99.9995% for the 5-subcategory classification results on the testing data, respectively.
引用
收藏
页数:18
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