ZHANG Rui.An intrusion detection model based on convolution neural network for Internet of vehicles[J].Telecommunications Science,2024,40(12):51-62. DOI: 10.11959/j.issn.1000-0801.2024243.
An intrusion detection model based on convolution neural network for Internet of vehicles
In order to improve the accuracy of detecting the cyber-attacks in Internet of vehicles
hyper-parameter optimization convolution neural network-based ensemble Intrusion detection system (CNES) was proposed. In CNES
the convolution neural network (CNN) was adopted to serve as based learner in ensemble learning. Moreover
the particle swarm optimization was utilized to optimize the hyber-parameters of the CNN
and then CNN model was optimized. Confidence averaging and concatenation techniques were constructed to improve the accuracy. The performance of the proposed CNES was measured based on Car-Hacking and CICIDS2017 datasets. This shows the effectiveness of the proposed CNES for cyber-attack detection. The CNES achieves F1 score of 100% on Car-Hacking dataset.
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