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Main Authors: Zhang, Cui, Xu, Xiao, Wu, Qiong, Fan, Pingyi, Fan, Qiang, Zhu, Huiling, Wang, Jiangzhou
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.08444
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author Zhang, Cui
Xu, Xiao
Wu, Qiong
Fan, Pingyi
Fan, Qiang
Zhu, Huiling
Wang, Jiangzhou
author_facet Zhang, Cui
Xu, Xiao
Wu, Qiong
Fan, Pingyi
Fan, Qiang
Zhu, Huiling
Wang, Jiangzhou
contents In vehicle edge computing (VEC), asynchronous federated learning (AFL) is used, where the edge receives a local model and updates the global model, effectively reducing the global aggregation latency.Due to different amounts of local data,computing capabilities and locations of the vehicles, renewing the global model with same weight is inappropriate.The above factors will affect the local calculation time and upload time of the local model, and the vehicle may also be affected by Byzantine attacks, leading to the deterioration of the vehicle data. However, based on deep reinforcement learning (DRL), we can consider these factors comprehensively to eliminate vehicles with poor performance as much as possible and exclude vehicles that have suffered Byzantine attacks before AFL. At the same time, when aggregating AFL, we can focus on those vehicles with better performance to improve the accuracy and safety of the system. In this paper, we proposed a vehicle selection scheme based on DRL in VEC. In this scheme, vehicle s mobility, channel conditions with temporal variations, computational resources with temporal variations, different data amount, transmission channel status of vehicles as well as Byzantine attacks were taken into account.Simulation results show that the proposed scheme effectively improves the safety and accuracy of the global model.
format Preprint
id arxiv_https___arxiv_org_abs_2404_08444
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Anti-Byzantine Attacks Enabled Vehicle Selection for Asynchronous Federated Learning in Vehicular Edge Computing
Zhang, Cui
Xu, Xiao
Wu, Qiong
Fan, Pingyi
Fan, Qiang
Zhu, Huiling
Wang, Jiangzhou
Machine Learning
In vehicle edge computing (VEC), asynchronous federated learning (AFL) is used, where the edge receives a local model and updates the global model, effectively reducing the global aggregation latency.Due to different amounts of local data,computing capabilities and locations of the vehicles, renewing the global model with same weight is inappropriate.The above factors will affect the local calculation time and upload time of the local model, and the vehicle may also be affected by Byzantine attacks, leading to the deterioration of the vehicle data. However, based on deep reinforcement learning (DRL), we can consider these factors comprehensively to eliminate vehicles with poor performance as much as possible and exclude vehicles that have suffered Byzantine attacks before AFL. At the same time, when aggregating AFL, we can focus on those vehicles with better performance to improve the accuracy and safety of the system. In this paper, we proposed a vehicle selection scheme based on DRL in VEC. In this scheme, vehicle s mobility, channel conditions with temporal variations, computational resources with temporal variations, different data amount, transmission channel status of vehicles as well as Byzantine attacks were taken into account.Simulation results show that the proposed scheme effectively improves the safety and accuracy of the global model.
title Anti-Byzantine Attacks Enabled Vehicle Selection for Asynchronous Federated Learning in Vehicular Edge Computing
topic Machine Learning
url https://arxiv.org/abs/2404.08444