Enhanced Machine Learning Based Techniques for Security in Vehicular Ad-Hoc Networks

J. N, Rekha Patil
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Abstract

Vehicular Ad-Hoc Networks, also referred as VANETs, have emerged as an interesting area of research as a result of ever significant increase in the number of automobiles on roads. Built - in safety smart vehicular traffic infrastructure protects both passengers and drivers, but due to its dynamic nature, real-time implementation is difficult. They lay the groundwork for the creation of intelligent transportation systems (IPS) and frameworks, which allow road entities to communicate with one another and build new applications and services with the goal of improving both the driving experience and overall road safety. The demanding features of VANETs make it difficult to establish security measures, resulting in gaps that attackers could exploit. This research provides smart structured protective systems for VANETs that use machine learning (ML) based algorithms. The enhanced ML algorithms improves attack detection, protecting data inter-communications between various sources and destinations, and ensuring strong anonymity, authentication, and privacy. The proposed system trains and tests its machine learning algorithms on publicly available datasets of vehicle communications. As a result, the outcomes are repeatable and verifiable. The machine learning-based security system can detect attacks while maintaining low False Positive Rate values (FPR). The findings also suggest that the framework may benefit from employing a variety of algorithms present at various hierarchical levels, selecting algorithms with high performance and focus at the cost of preciseness in lower levels and additionally sophisticated, detailed, and accurate algorithms present in top levels.
基于增强机器学习的车载Ad-Hoc网络安全技术
车辆自组织网络,也被称为vanet,已经成为一个有趣的研究领域,因为道路上的汽车数量不断显著增加。内建的安全智能车辆交通基础设施既能保护乘客也能保护驾驶员,但由于其动态性,实时性较差。它们为智能交通系统(IPS)和框架的创建奠定了基础,这些系统和框架允许道路实体相互通信,并构建新的应用程序和服务,以改善驾驶体验和整体道路安全。VANETs苛刻的特性使其难以建立安全措施,从而导致攻击者可以利用的漏洞。本研究为使用基于机器学习(ML)算法的vanet提供了智能结构化保护系统。增强的ML算法改进了攻击检测,保护了不同源和目的之间的数据通信,并确保了强匿名性、身份验证和隐私性。该系统在公开的车辆通信数据集上训练和测试其机器学习算法。因此,结果是可重复和可验证的。基于机器学习的安全系统可以检测攻击,同时保持低误报率值(FPR)。研究结果还表明,该框架可能受益于采用不同层次上的各种算法,选择具有高性能和重点的算法,以牺牲较低层次的准确性为代价,以及在顶层呈现的额外复杂、详细和准确的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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