A Transfer Learning Based Intrusion Detection System for Internet of Vehicles

Achref Haddaji, S. Ayed, L. Chaari
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引用次数: 2

Abstract

With the fast expansion of the internet of vehicles (IoV) and the emergence of new types of threats, the traditional machine learning-based intrusion detection systems must be updated to meet the security requirements of the current environment. Recently, deep learning has shown exceptional performance in IoV intrusion detection. However, deep learning-based intrusion detection system (DL-IDS) models are more fixated and dependent on the training dataset. In addition, the behavior changes with the occurrence of attacks. They pose a real problem for the DL-IDS and make their detection more complicate. In this paper, we present a deep transfer learning based intrusion detection in-vehicle (TRLID) model for IoV using the CAN bus protocol. In our proposed model, a data preparation approach is proposed to clean up bus data and convert it to an image for usage as input to the deep learning model. Indeed, we used transfer learning characteristics because they enable us to transfer the source task's knowledge to the target task. Therefore, we trained our model using different dataset including different attacks. The experimental results show that our proposed TRLID achieved good results where the intelligence integration of transfer learning was efficient for attacks detection.
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基于迁移学习的车联网入侵检测系统
随着车联网的快速发展和新型威胁的出现,传统的基于机器学习的入侵检测系统必须进行更新,以满足当前环境的安全要求。近年来,深度学习在车联网入侵检测中表现出了优异的性能。然而,基于深度学习的入侵检测系统(DL-IDS)模型更依赖于训练数据集。此外,随着攻击的发生,行为也会发生变化。它们给DL-IDS带来了真正的问题,并使其检测更加复杂。本文提出了一种基于CAN总线协议的基于深度迁移学习的车载入侵检测(TRLID)模型。在我们提出的模型中,提出了一种数据准备方法来清理总线数据并将其转换为图像以用作深度学习模型的输入。事实上,我们使用迁移学习特征是因为它们使我们能够将源任务的知识转移到目标任务中。因此,我们使用包含不同攻击的不同数据集来训练我们的模型。实验结果表明,我们提出的TRLID方法取得了良好的效果,其中迁移学习的智能集成对攻击检测是有效的。
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