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BGFL: a blockchain-enabled group federated learning at wireless industrial edges

Published: 08 October 2024 Publication History

Abstract

In the rapidly evolving landscape of Industry 4.0, the complex computational tasks and the associated massive data volumes present substantial opportunities for advancements in machine learning at industry edges. Federated learning (FL), which is a variant of distributed machine learning for edge-cloud computing, presents itself as a persuasive resolution for these industrial edges, with its main objectives being the mitigation of privacy breaches and the resolution of data privacy concerns. However, traditional FL methodologies encounter difficulties in effectively overseeing extensive undertakings in Industry 4.0 as a result of challenges including wireless communications with high latency, substantial heterogeneity, and insufficient security protocols. As a consequence of these obstacles, blockchain technology has garnered acclaim for its secure, decentralized, and transparent data storage functionalities. A novel blockchain-enabled group federated learning (BGFL) framework designed specifically for wireless industrial edges is presented in this paper. By strategically dividing industrial devices into multiple groups, the BGFL framework simultaneously reduces the wireless traffic loads required for convergence and improves the accuracy of collaborative learning. Moreover, to optimize aggregation procedures and reduce communication resource utilization, the BGFL employs a hierarchical aggregation strategy that consists of both local and global aggregation off-chain and on-chain, respectively. The integration of a smart contract mechanism serves to fortify the security framework. The results of comparative experimental analyses demonstrate that the BGFL framework enhances the resilience of the learning framework and effectively reduces wireless communication latency. Thus, it offers a scalable and efficient solution for offloading tasks in edge-cloud computing environments.

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        Published In

        cover image Journal of Cloud Computing: Advances, Systems and Applications
        Journal of Cloud Computing: Advances, Systems and Applications  Volume 13, Issue 1
        Nov 2024
        2535 pages

        Publisher

        Hindawi Limited

        London, United Kingdom

        Publication History

        Published: 08 October 2024
        Accepted: 26 August 2024
        Received: 07 May 2024

        Author Tags

        1. Federated learning
        2. Blockchain
        3. Edge-cloud cooperation
        4. Wireless traffic

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        • Research-article

        Funding Sources

        • The science and technology project of SGCC (State Grid Corporation of China):Research on Key Technologies and Applications of Intelligent Edge Computing for Transmission Line Defect Sensing

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