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Improving Big Data Clustering for Jamming Detection in Smart Mobility

机译:改善智能移动中干扰检测的大数据聚类

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Smart mobility, with its urban transportation services ranging from real-time traffic control to cooperative vehicle infrastructure systems, is becoming increasingly critical in smart cities. These smart mobility services thus need to be very well protected against a variety of security threats, such as intrusion, jamming, and Sybil attacks. One of the frequently cited attacks in smart mobility is the jamming attack. In order to detect the jamming attacks, different anti-jamming applications have been developed to reduce the impact of malicious jamming attacks. One important step in anti-jamming detection is to cluster the vehicular data. However, it is usually very time-consuming to detect the jamming attacks that may affect the safety of roads and vehicle communication in real-time. Therefore, this paper proposes an efficient big data clustering model, coresets-based clustering, to support the real-time detection of jamming attacks. We validate the model efficiency and applicability in the context of a typical smart mobility system: Vehicular Ad-hoc Network, known as VANET.
机译:智能移动性,其城市交通服务从实时交通控制到合作车辆基础设施系统,在智能城市越来越重要。因此,这些智能移动性服务需要很好地保护各种安全威胁,例如入侵,干扰和Sybil攻击。智能移动性中经常引用的攻击之一是干扰攻击。为了检测干扰攻击,已经开发出不同的抗干扰应用来减少恶意干扰攻击的影响。抗干扰检测中的一个重要步骤是聚集车辆数据。然而,检测可能在实时地影响道路和车辆通信安全的干扰攻击通常非常耗时。因此,本文提出了一种高效的大数据聚类模型,基于CORESETS的聚类,以支持取堵攻击的实时检测。我们在典型的智能移动系统的背景下验证模型效率和适用性:车辆ad-hoc网络,称为vanet。

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