针对网络攻击的基于联邦学习的车辆轨迹预测

Zhe Wang, Tingkai Yan
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引用次数: 1

摘要

随着车联网的发展,车载无线通信面临着严峻的网络安全挑战。错误的信息,比如周围车辆发送的虚假车辆位置和速度,可能会导致车辆碰撞、交通堵塞,甚至造成人员伤亡。此外,车辆轨迹、用户账号信息等私家车数据泄露可能会对用户财产和安全造成损害。因此,有必要在故障数据饱和的车联网系统中实现网络攻击防御方案。针对上述问题,本文提出了一种基于联邦学习的抗网络攻击车辆轨迹预测算法(FL-TP)。FL-TP使用公开可用的车辆参考不当行为(VeReMi)数据集进行密集训练和测试,其中包含五种类型的网络攻击:恒定,恒定偏移,随机,随机偏移和最终停止。结果表明,在网络攻击渗透率最大的场景下,与基准方法相比,所提出的FL-TP算法的网络攻击检测和轨迹预测能力分别提高了6.99%和54.86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Learning-based Vehicle Trajectory Prediction against Cyberattacks
With the development of the Internet of Vehicles (IoV), vehicle wireless communication poses serious cybersecurity challenges. Faulty information, such as fake vehicle positions and speeds sent by surrounding vehicles, could cause vehicle collisions, traffic jams, and even casualties. Additionally, private vehicle data leakages, such as vehicle trajectory and user account information, may damage user property and security. Therefore, achieving a cyberattack-defense scheme in the IoV system with faulty data saturation is necessary. This paper proposes a Federated Learning-based Vehicle Trajectory Prediction Algorithm against Cyberattacks (FL-TP) to address the above problems. The FL-TP is intensively trained and tested using a publicly available Vehicular Reference Misbehavior (VeReMi) dataset with five types of cyberattacks: constant, constant offset, random, random offset, and eventual stop. The results show that the proposed FL-TP algorithm can improve cyberattack detection and trajectory prediction by up to 6.99 % and 54.86%, respectively, under the maximum cyberattack permeability scenarios compared with benchmark methods.
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