A multi-attack intrusion detection model based on Mosaic coded convolutional neural network and centralized encoding

Author:

Hu Rong,Wu Zhongying,Xu YongORCID,Lai Taotao,Xia Canyu

Abstract

With the development of the Internet of Vehicles (IoV), attacks to the vehicle-mounted control area network (CAN) have seriously jeopardized the security of automobiles. As an important security measure, intrusion detection technologies have aroused great interest in researchers and many detection methods have also been proposed based on the vehicle’s CAN bus. However, many studies only considered one type of attack at a time but in real environments there may contain a variety of attack types simultaneously. In view of the deficiency in the current methods, this paper proposed a method to detect multi-intrusions at one time based on a Mosaic coded convolutional neural network (CNN) and a centralized coding method. A Mosaic-like data block was created to convert the one-dimensional CAN ID into a two-dimensional data grid for the CNN to effectively extract the data characteristics and maintain the time characteristics between the CAN IDs. Four types of attacks and all combinations of them were used to train and test our model. Finally, a centralized coding method was used to increase the discrimination capability of the model. Experimental results showed that this single model could successfully detect any combinations of the intrusion types with very high and stable performance.

Funder

Natural Science Foundation of Fujian Province

Fujian Key Laboratory of Information Processing and Intelligent Control (Minjiang University) 2021 Open Fund

Scientific research start-up fund of Fujian University of Technology

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference32 articles.

1. Special issue on security and privacy in network computing;H Wang;World Wide Web,2020

2. Dynamic pricing techniques for intelligent transportation system in smart cities: A systematic review;S Saharan;Comp Commun,2019

3. Intra-vehicle networks: A review;S Tuohy;IEEE Trans. Intell. Transp. Syst.,2015

4. Remote exploitation of an unaltered passenger vehicle;C Miller;Black Hat USA, Las Vegas, NV, USA, Tech. Rep

5. IDH-CAN: A hardware-based ID hopping CAN hechanism with enhanced security for automotive real-time applications;W Wu;IEEE Access,2018

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