Data Heterogeneity-Robust Federated Learning via Group Client Selection in Industrial IoT
Zonghang Li, Yihong He, Hongfang Yu, Jiawen Kang, Xiaoping Li, Zenglin, Xu, Dusit Niyato

TL;DR
This paper introduces FedGS, a hierarchical federated learning framework for industrial IoT that enhances model accuracy and training efficiency on non-i.i.d. data by leveraging device clustering and robust synchronization protocols.
Contribution
The paper proposes FedGS, a novel hierarchical FL framework with a gradient-based device selection and synchronization protocol tailored for industrial IoT environments.
Findings
FedGS improves accuracy by 3.5% over FedAvg.
Reduces training rounds by 59%.
Demonstrates better convergence and communication efficiency.
Abstract
Nowadays, the industrial Internet of Things (IIoT) has played an integral role in Industry 4.0 and produced massive amounts of data for industrial intelligence. These data locate on decentralized devices in modern factories. To protect the confidentiality of industrial data, federated learning (FL) was introduced to collaboratively train shared machine learning models. However, the local data collected by different devices skew in class distribution and degrade industrial FL performance. This challenge has been widely studied at the mobile edge, but they ignored the rapidly changing streaming data and clustering nature of factory devices, and more seriously, they may threaten data security. In this paper, we propose FedGS, which is a hierarchical cloud-edge-end FL framework for 5G empowered industries, to improve industrial FL performance on non-i.i.d. data. Taking advantage of…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
