MOB-FL: Mobility-Aware Federated Learning for Intelligent Connected Vehicles

Federated learning (FL) is a promising approach to enable the future Internet of vehicles consisting of intelligent connected vehicles (ICVs) with powerful sensing, computing and communication capabilities. We consider a base station (BS) coordinating nearby ICVs to train a neural network in a colla...

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Veröffentlicht in:arXiv.org 2022-12
Hauptverfasser: Bowen, Xie, Sun, Yuxuan, Zhou, Sheng, Niu, Zhisheng, Xu, Yang, Chen, Jingran, Gündüz, Deniz
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container_title arXiv.org
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creator Bowen, Xie
Sun, Yuxuan
Zhou, Sheng
Niu, Zhisheng
Xu, Yang
Chen, Jingran
Gündüz, Deniz
description Federated learning (FL) is a promising approach to enable the future Internet of vehicles consisting of intelligent connected vehicles (ICVs) with powerful sensing, computing and communication capabilities. We consider a base station (BS) coordinating nearby ICVs to train a neural network in a collaborative yet distributed manner, in order to limit data traffic and privacy leakage. However, due to the mobility of vehicles, the connections between the BS and ICVs are short-lived, which affects the resource utilization of ICVs, and thus, the convergence speed of the training process. In this paper, we propose an accelerated FL-ICV framework, by optimizing the duration of each training round and the number of local iterations, for better convergence performance of FL. We propose a mobility-aware optimization algorithm called MOB-FL, which aims at maximizing the resource utilization of ICVs under short-lived wireless connections, so as to increase the convergence speed. Simulation results based on the beam selection and the trajectory prediction tasks verify the effectiveness of the proposed solution.
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subjects Algorithms
Convergence
Federated learning
Internet of Vehicles
Neural networks
Optimization
Radio equipment
Resource utilization
Vehicles
title MOB-FL: Mobility-Aware Federated Learning for Intelligent Connected Vehicles
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