Responsible Federated Learning in Smart Transportation: Outlooks and Challenges

Huang, Xiaowen, Huang, Tao, Gu, Shushi, Zhao, Shuguang, and Zhang, Guanglin (2024) Responsible Federated Learning in Smart Transportation: Outlooks and Challenges. IEEE Internet of Things Magazine, 7 (5). pp. 22-28.

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Abstract

Integrating artificial intelligence (AI) and federated learning (FL) in smart transportation has raised critical issues regarding their responsible use. Ensuring responsible AI is paramount for the stability and sustainability of intelligent transportation systems. Despite its importance, research on the responsible application of AI and FL in this domain remains nascent, with a paucity of in-depth investigations into their confluence. Our study analyzes the roles of FL in smart transportation, as well as the promoting effect of responsible AI on distributed smart transportation. Lastly, we discuss the challenges of developing and implementing responsible FL in smart transportation and propose potential solutions. By integrating responsible AI and FL, intelligent transportation systems are expected to achieve a higher degree of intelligence, personalization, safety, and transparency.

Item ID: 86883
Item Type: Article (Research - C1)
ISSN: 2576-3199
Copyright Information: Copyright © 2024, IEEE.
Date Deposited: 05 Nov 2025 06:44
FoR Codes: 40 ENGINEERING > 4007 Control engineering, mechatronics and robotics > 400703 Autonomous vehicle systems @ 100%
SEO Codes: 27 TRANSPORT > 2703 Ground transport > 270302 Autonomous road vehicles @ 100%
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