TY - GEN
T1 - RaftFed
T2 - 10th IEEE Smart World Congress, SWC 2024
AU - Chen, Yaxing
AU - Yang, Changan
AU - Fan, Qianyue
AU - Zhang, Yao
AU - Wang, Shiqian
AU - Di, Li
AU - Yu, Zhiwen
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - Vehicular crowd intelligence (VCI) is an emerging research field. Facilitated by state-of-the-art vehicular ad-hoc networks and artificial intelligence, various VCI applications come to place, e.g., collaborative sensing, positioning, and mapping. The collaborative property of VCI applications generally requires data to be shared among participants, thus forming network-wide intelligence. How to fulfill this process without compromising data privacy remains a challenging issue. Although federated learning (FL) is a promising tool to solve the problem, adapting conventional FL frameworks to VCI is nontrivial. First, the centralized model aggregation is unreliable in VCI because of the existence of stragglers with unfavorable channel conditions. Second, existing FL schemes are vulnerable to NonIID data, which is intensified by the data heterogeneity in VCI. Third, the dynamic nature of vehicular networks necessitates robust handling of nodes frequently opting in and out. This paper proposes a novel dual-layer federated learning framework called RaftFed to facilitate efficiently privacy-preserving VCI. By integrating with heartbeat and cache mechanisms, RaftFed is endowed with dynamic and asynchronous capabilities. The experimental results also show that RaftFed performs better than baselines regarding communication overhead, model accuracy, and model convergence.
AB - Vehicular crowd intelligence (VCI) is an emerging research field. Facilitated by state-of-the-art vehicular ad-hoc networks and artificial intelligence, various VCI applications come to place, e.g., collaborative sensing, positioning, and mapping. The collaborative property of VCI applications generally requires data to be shared among participants, thus forming network-wide intelligence. How to fulfill this process without compromising data privacy remains a challenging issue. Although federated learning (FL) is a promising tool to solve the problem, adapting conventional FL frameworks to VCI is nontrivial. First, the centralized model aggregation is unreliable in VCI because of the existence of stragglers with unfavorable channel conditions. Second, existing FL schemes are vulnerable to NonIID data, which is intensified by the data heterogeneity in VCI. Third, the dynamic nature of vehicular networks necessitates robust handling of nodes frequently opting in and out. This paper proposes a novel dual-layer federated learning framework called RaftFed to facilitate efficiently privacy-preserving VCI. By integrating with heartbeat and cache mechanisms, RaftFed is endowed with dynamic and asynchronous capabilities. The experimental results also show that RaftFed performs better than baselines regarding communication overhead, model accuracy, and model convergence.
KW - Crowd Intelligence
KW - Dynamic Clustering
KW - Federated Learning
KW - Vehicular Ad-hoc Networks
UR - http://www.scopus.com/inward/record.url?scp=105002234472&partnerID=8YFLogxK
U2 - 10.1109/SWC62898.2024.00077
DO - 10.1109/SWC62898.2024.00077
M3 - 会议稿件
AN - SCOPUS:105002234472
T3 - Proceedings - 2024 IEEE Smart World Congress, SWC 2024 - 2024 IEEE Ubiquitous Intelligence and Computing, Autonomous and Trusted Computing, Digital Twin, Metaverse, Privacy Computing and Data Security, Scalable Computing and Communications
SP - 321
EP - 329
BT - Proceedings - 2024 IEEE Smart World Congress, SWC 2024 - 2024 IEEE Ubiquitous Intelligence and Computing, Autonomous and Trusted Computing, Digital Twin, Metaverse, Privacy Computing and Data Security, Scalable Computing and Communications
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 2 December 2024 through 7 December 2024
ER -