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A Secure Personalized Federated Learning Algorithm for Autonomous Driving

Yuchuan Fu, Xinlong Tang, Changle Li, F. Richard Yu, Nan Cheng

2024IEEE Transactions on Intelligent Transportation Systems18 citationsDOI

Abstract

Federated learning (FL) is a promising technology for autonomous driving, enabling connected and autonomous vehicles (CAVs) to collaborate in decision-making and environmental perception while preserving privacy. However, traditional FL algorithms face challenges related to imbalanced data distribution, fluctuating channel conditions, and potential security risks associated with malicious attacks on local models. This paper proposes a fair and secure FL algorithm that not only addresses the challenges arising from imbalanced data distribution and fluctuating channel conditions, but defends against malicious attacks. Specifically, we first propose a personalized local training round allocation algorithm to balance energy costs and accelerate model convergence. Next, in order to further guarantee security, we embed an attack module based on Gini impurity. Extensive simulations demonstrate that the proposed algorithm achieves energy fairness, reduces global iteration time, and exhibits resistance against malicious attacks.

Topics & Concepts

Computer scienceHuman–computer interactionComputer securityArtificial intelligencePrivacy-Preserving Technologies in Data