Security-Aware Malicious Event Detection using Multivariate Deep Regression Setup for Vehicular Ad hoc Network Aimed at Autonomous Transportation System

U. Tariq
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Abstract

Vehicular Ad-hoc Networks (VANET) are capable of offering inter and intra-vehicle wireless communication among mobility aware computing systems. Nodes are linked by applying concepts of mobile ad hoc networks. VANET uses cases empower vehicles to link to the network to aggregate and process messages in real-time. The proposed paper addresses a security vulnerability known as Sybil attack, in which numerous fake nodes broadcast false data to the neighboring nodes. In VANET, mobile nodes continuously change their network topology and exchange location sensor-generated data in real time. The basis of the presented technique is source testing that permits the scalable identification of Sybil nodes, without necessitating any pre-configuration, which was conceptualized from a comparative analysis of preceding research in the literature.
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基于多元深度回归的自主交通车辆自组织网络安全感知恶意事件检测
车辆自组织网络(VANET)能够在移动感知计算系统之间提供车间和车内无线通信。节点通过应用移动自组织网络的概念进行连接。VANET使用案例使车辆能够连接到网络,实时聚合和处理消息。提出的论文解决了一个被称为Sybil攻击的安全漏洞,其中许多假节点向相邻节点广播虚假数据。在VANET中,移动节点不断改变其网络拓扑,并实时交换位置传感器生成的数据。所提出的技术的基础是源代码测试,它允许对Sybil节点进行可扩展的识别,而不需要任何预配置,这是从先前文献中研究的比较分析中概念化的。
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