la - Detection:车辆技术安全的本地和自适应数据中心错误行为检测框架

IF 5.3 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Open Journal of Vehicular Technology Pub Date : 2024-12-09 DOI:10.1109/OJVT.2024.3513152
Rukhsar Sultana;Jyoti Grover;Meenakshi Tripathi;Prinkle Sharma
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引用次数: 0

摘要

车辆自组织网络(VANET)代表了一项巨大的技术进步,它增强了车辆技术(包括车辆和路边基础设施)之间的连通性,以确保道路安全并改善未来的交通服务。安全应用的有效性取决于定期广播的实时环境和车辆状态信息的可靠性和一致性。但是,当具有有效访问凭证的节点恶意传播错误信息时,就会出现内部威胁。现有的不当行为检测解决方案通常是静态的,缺乏对车辆网络动态特性所需的适应性,这在处理复杂的攻击(如拒绝服务(DoS)、数据重放和Sybil攻击)方面留下了空白。为了填补这一空白,我们提出了一个上下文感知、数据驱动的错误行为检测框架,该框架允许每辆车对接收到的消息执行合理性和一致性检查。自适应错误行为检测框架通过结合动态计算参数和置信区间来评估消息完整性,解决了本地化车辆中的关键安全挑战。为了确定是否存在不当行为,加权平均方法有效地降低了误报的可能性。仿真结果表明,我们提出的机制显著提高了对关键不当行为类型的检测性能,包括虚假信息传播、DoS、破坏性和Sybil攻击变体,优于使用VeReMi扩展数据集的现有基准测试。
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LA-DETECTS: Local and Adaptive Data-Centric Misbehavior Detection Framework for Vehicular Technology Security
Vehicular Ad Hoc Networks (VANET) represent an immense technological advancement enhancing connectivity among Vehicular Technology including vehicles and roadside infrastructure to ensure road safety and improve forthcoming transportation services. The effectiveness of safety applications depends on the reliability and consistency of periodically broadcasted real-time environmental and vehicle state information. However, insider threats arise when nodes with valid access credentials disseminate maliciously incorrect information. Existing misbehavior detection solutions are often static and lack the adaptability required for the dynamic nature of vehicular networks, leaving a gap in addressing sophisticated attacks such as Denial of Service (DoS), data replay, and Sybil attacks. To fill this gap, we propose a context-aware, data-driven misbehavior detection framework that allows each vehicle to perform plausibility and consistency checks on received messages. The Adaptive Misbehavior Detection Framework addresses critical security challenges within localized vehicles by incorporating dynamically computed parameters and confidence intervals to assess message integrity. To determine the presence of misbehavior, a weighted average approach effectively reduces the possibility of false positives. Simulation results demonstrate that our proposed mechanism significantly enhances detection performance against key misbehavior types, including false information dissemination, DoS, disruptive, and variants of Sybil attacks variants, outperforming existing benchmarks with the VeReMi extension dataset.
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来源期刊
CiteScore
9.60
自引率
0.00%
发文量
25
审稿时长
10 weeks
期刊最新文献
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