VANET网络机器学习算法的比较研究

Sara Ftaimi, T. Mazri
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引用次数: 10

摘要

车辆自组织网络(VANET)在改善道路安全、降低事故发生率和为乘客提供有价值的旅行体验方面具有不可思议的潜力。像任何其他网络一样,VANET也存在威胁其固有节点的问题和漏洞,并暗示其可靠性。为了解决VANET网络的安全问题,人们对机器学习算法进行了大量的研究,通过检测入侵和预测来提高VANET的可靠性,最终取得了令人满意的结果。因此,建立强大的VANET网络在很大程度上取决于其安全性和保护方案,这是本文的主题。本文首先概述VANET网络,然后着重介绍可能威胁VANET网络的各种攻击。接下来,我们介绍机器学习的主要概念,然后总结VANET网络中最常用的人工智能算法
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A comparative study of Machine learning algorithms for VANET networks
Vehicular Ad Hoc Networks (VANET) had incredible potential in improving road security, diminishing mishap rates and making the travel experience valuable for passengers. Like any other network, VANET too has problems and vulnerabilities that threaten its inherent nodes, and by implication, its reliability. In order to solve the security problems involving the VANET network, a lot of studies in machine learning algorithms have been undergone to improve the reliability of VANET by means of detecting intrusions and making prediction, ultimately, they have achieved satisfactory results. Therefore, the establishment of powerful VANET networks is significantly dependent on their security and protection alternatives, which is the subject of the present paper. This article starts with an overview of VANET Networks, then it proceeds to highlighting a variety of attacks that can threaten them. Next, we introduce the major concepts of machine learning before we conclude with the most frequently adopted artificial intelligence algorithms in the VANET networks
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