面向 5G-V2X 网络的基于自监督学习的隐私保护型入侵检测系统

IF 4.4 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Shajjad Hossain , Sidi-Mohammed Senouci , Bouziane Brik , Abdelwahab Boualouache
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引用次数: 0

摘要

随着 5G 的采用和联网汽车的普及,汽车行业正在发生变革,网络安全已成为人们关注的一个重要问题。在实施网络切片 (NS)、软件定义网络 (SDN) 和多接入边缘计算 (MEC) 等尖端 5G 服务时尤其如此。随着这些先进服务的普及,它们会带来新的漏洞,从而被网络攻击者利用。因此,网络入侵检测系统(NIDS)在保护车辆网络免受网络威胁方面至关重要。然而,它们的功效取决于大量数据,而这些数据往往包含敏感和机密信息,如车辆位置和车主行为,从而引发了隐私问题。为解决这一问题,我们提出了一种基于隐私保护自监督学习(SSL)的 5G-V2X 网络入侵检测系统。文献中的大多数作品都依赖于联合学习(FL),但往往忽略了终端设备上的数据标签。我们的方法利用 SSL,使用未标记的数据对 NIDS 进行预训练。然后,使用专家精心制作的极少量标记数据进行后期训练。这种新颖的技术可以在不损害隐私的情况下,使用海量数据集对 NIDS 进行训练,从而提高网络攻击防护的效率。我们创新的 SSL 预训练方法取得了显著的成果,在不同规模的训练数据集(包括只有 200 个数据样本的场景)中,准确率大幅提高了 9%。我们的方法凸显了显著增强汽车网络安全的潜力,展示了开创性的成就,为汽车网络安全领域树立了新标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A privacy-preserving Self-Supervised Learning-based intrusion detection system for 5G-V2X networks
In light of the ongoing transformation in the automotive industry, driven by the adoption of 5G and the proliferation of connected vehicles, network security has emerged as a critical concern. This is particularly true for the implementation of cutting-edge 5G services such as Network Slicing (NS), Software Defined Networking (SDN), and Multi-access Edge Computing (MEC). As these advanced services become more prevalent, they introduce new vulnerabilities that can be exploited by cyber attackers. Consequently, Network Intrusion Detection Systems (NIDSs) are pivotal in safeguarding vehicular networks against cyber threats. Still, their efficacy hinges on extensive data, which often contains sensitive and confidential information such as vehicle positions and owner’s behaviors, raising privacy concerns. To address this issue, we propose a Privacy-Preserving Self-Supervised Learning (SSL) based Intrusion Detection System for 5G-V2X networks. The majority of works in the literature relying on Federated Learning (FL) and often overlook data labeling on the end devices. Our methodology leverages SSL to pre-train NIDSs using unlabeled data. Post-training is then performed with a minimal amount of labeled data, which can be carefully crafted by an expert. This novel technique allows the training of NIDSs with huge datasets without compromising privacy, consequently enhancing the efficacy of cyber-attack protection. Our innovative SSL pre-training methodology has yielded remarkable results, demonstrating a substantial improvement of up to 9% in accuracy across a diverse range of training dataset sizes, including scenarios with as few as 200 data samples. Our approach highlights the potential to enhance automotive network security significantly, showcasing groundbreaking achievements that set a new standard in the field of automotive cybersecurity.
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来源期刊
Ad Hoc Networks
Ad Hoc Networks 工程技术-电信学
CiteScore
10.20
自引率
4.20%
发文量
131
审稿时长
4.8 months
期刊介绍: The Ad Hoc Networks is an international and archival journal providing a publication vehicle for complete coverage of all topics of interest to those involved in ad hoc and sensor networking areas. The Ad Hoc Networks considers original, high quality and unpublished contributions addressing all aspects of ad hoc and sensor networks. Specific areas of interest include, but are not limited to: Mobile and Wireless Ad Hoc Networks Sensor Networks Wireless Local and Personal Area Networks Home Networks Ad Hoc Networks of Autonomous Intelligent Systems Novel Architectures for Ad Hoc and Sensor Networks Self-organizing Network Architectures and Protocols Transport Layer Protocols Routing protocols (unicast, multicast, geocast, etc.) Media Access Control Techniques Error Control Schemes Power-Aware, Low-Power and Energy-Efficient Designs Synchronization and Scheduling Issues Mobility Management Mobility-Tolerant Communication Protocols Location Tracking and Location-based Services Resource and Information Management Security and Fault-Tolerance Issues Hardware and Software Platforms, Systems, and Testbeds Experimental and Prototype Results Quality-of-Service Issues Cross-Layer Interactions Scalability Issues Performance Analysis and Simulation of Protocols.
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