Enhancing V2X Security Through Combined Rule-Based and DL-Based Local Misbehavior Detection in Roadside Units

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Open Journal of Intelligent Transportation Systems Pub Date : 2024-10-14 DOI:10.1109/OJITS.2024.3479716
Seungyoung Park;Duksoo Kim;Seokwoo Lee
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Abstract

In this paper, we address the limitations of existing deep learning (DL) methods for local misbehavior detection (LMBD) in vehicle-to-everything (V2X) communication systems by proposing an approach that combines rule-based and DL-based techniques. Conventional DL-based methods at roadside units (RSUs) struggle with forwarding basic safety messages (BSMs) received from every vehicle to centralized locations and preprocessing them, which leads to considerable time delays. To overcome these challenges, our approach leveraged multi-access edge computing (MEC) connected to RSU to decentralize the processing workload, considerably reducing latency and resource consumption. Specifically, we implemented a system where RSUs directly receive and forward BSMs to the MEC server, bypassing traditional deduplication and sorting processes at the centralized server. However, due to the fixed locations of RSUs, they often receive only truncated sequences of BSMs from passing vehicles, which necessitates LMBD on these incomplete datasets. To mitigate the performance degradation of DL-based anomaly detection in truncated sequences, we integrated a rule-based method performed for single or two consecutively received BSMs. Simulation results demonstrated that this combined rule-based pre-screening with DL analysis effectively improves the overall detection performances.
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通过基于规则和基于 DL 的路边装置本地不当行为联合检测增强 V2X 安全性
本文针对现有深度学习(DL)方法在车对物(V2X)通信系统中本地不当行为检测(LMBD)方面的局限性,提出了一种将基于规则和基于 DL 的技术相结合的方法。路边装置(RSU)中传统的基于 DL 的方法难以将从每辆车接收到的基本安全信息(BSM)转发到集中位置并进行预处理,从而导致大量时间延迟。为了克服这些挑战,我们的方法利用连接到 RSU 的多访问边缘计算 (MEC) 来分散处理工作量,从而大大减少了延迟和资源消耗。具体来说,我们实施了一个系统,在该系统中,RSU 直接接收并向 MEC 服务器转发 BSM,绕过了集中服务器上的传统重复数据删除和分类流程。然而,由于 RSU 的位置固定,它们往往只能从过往车辆中接收到截断的 BSM 序列,因此必须对这些不完整的数据集进行 LMBD。为了减轻基于 DL 的异常检测在截断序列中的性能下降,我们整合了一种基于规则的方法,用于单个或两个连续接收的 BSM。仿真结果表明,这种将基于规则的预筛选与 DL 分析相结合的方法能有效提高整体检测性能。
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