基于6G的车联网安全可靠的迁移学习框架

IF 10.9 1区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Minrui Xu, D. Hoang, Jiawen Kang, D. Niyato, Qiang Yan, Dong In Kim
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引用次数: 15

摘要

在即将到来的6G时代,车联网(IoV)正朝着具有超高数据速率、无缝网络覆盖和人工智能(AI)无处不在的智能的6G IoV发展。迁移学习(TL)具有巨大的潜力,可以为有前景的6G IoV赋能,如智能驾驶辅助,其突出特点包括提高训练数据的质量和数量,加快学习过程,减少计算需求。尽管TL已被广泛应用于无线应用(如频谱管理和缓存),但其在6G IoV中的可靠性和安全性仍未得到很好的研究。例如,源域中的恶意车辆可能会向目标域转移和共享关于连接可用性的不可信模型(即知识),从而对学习过程的性能产生不利影响。因此,选择并激励值得信赖的车辆参与TL是很重要的。在本文中,我们首先介绍了TL和6G IoV的集成,并为6G IoV提供了TL应用。然后,我们通过使用声誉来评估预训练模型的可靠性,并利用联盟区块链来实现安全高效的去中心化声誉管理,设计了一个安全可靠的迁移学习框架。此外,针对TL车型市场,设计了一种基于深度学习的拍卖方案,以激励高信誉车辆参与车型共享。最后,仿真结果表明,所提出的框架是安全可靠的,并为6G IoV中的TL提供了精心设计的激励。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Secure and Reliable Transfer Learning Framework for 6G-Enabled Internet of Vehicles
In the coming 6G era, Internet of Vehicles (IoV) has been evolving towards 6G-enabled IoV with super-high data rate, seamless networking coverage, and ubiquitous intelligence by Artificial Intelligence (AI). Transfer Learning (TL) has great potential to empower promising 6G-enabled IoV, such as smart driving assistance, with its outstanding features including enhancing the quality and quantity of training data, speeding up learning processes, and reducing computing demands. Although TL had been widely adopted in wireless applications (e.g., spectrum management and caching), its reliability and security in 6G-enabled IoV were still not well investigated. For instance, malicious vehicles in source domains may transfer and share untrustworthy models (i.e., knowledge) about connection availability to target domains, thus adversely affecting the performance of learning processes. Therefore, it is important to select and also incentivize trustworthy vehicles to participate in TL. In this article, we first introduce the integration of TL and 6G-enabled IoV and provide TL applications for 6G-enabled IoV. We then design a secure and reliable transfer learning framework by using reputation to evaluate the reliability of pre-trained models and utilizing the consortium blockchain to achieve secure and efficient decentralized reputation management. Moreover, a deep learning-based auction scheme for the TL model market is designed to motivate high-reputation vehicles to participate in model sharing. Finally, the simulation results demonstrate that the proposed framework is secure and reliable with well-designed incentives for TL in 6G-enabled IoV.
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来源期刊
IEEE Wireless Communications
IEEE Wireless Communications 工程技术-电信学
CiteScore
24.20
自引率
1.60%
发文量
183
审稿时长
6-12 weeks
期刊介绍: IEEE Wireless Communications is tailored for professionals within the communications and networking communities. It addresses technical and policy issues associated with personalized, location-independent communications across various media and protocol layers. Encompassing both wired and wireless communications, the magazine explores the intersection of computing, the mobility of individuals, communicating devices, and personalized services. Every issue of this interdisciplinary publication presents high-quality articles delving into the revolutionary technological advances in personal, location-independent communications, and computing. IEEE Wireless Communications provides an insightful platform for individuals engaged in these dynamic fields, offering in-depth coverage of significant developments in the realm of communication technology.
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