Nothing Special   »   [go: up one dir, main page]

skip to main content
research-article

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.

References

[1]
Alsamhi SH, Shvetsov AV, Hawbani A, Shvetsova SV, Kumar S, and Zhao L Survey on federated learning enabling indoor navigation for industry 4.0 in B5G Future Gener Comput Syst 2023 148 250-265
[2]
Yang Y, Feng L, Sun Y, Li Y, Zhou F, Li W, and Wang S Decentralized cooperative caching and offloading for virtual reality task based on gan-powered multi-agent reinforcement learning IEEE Trans Serv Comput 2024 17 1 291-305
[3]
Otoum S, Ridhawi IA, Mouftah HT (2023) A federated learning and blockchain-enabled sustainable energy trade at the edge: a framework for industry 4.0. IEEE Internet Things J 10(4):3018–3026
[4]
Duan Q, Huang J, Hu S, Deng R, Lu Z, and Yu S Combining federated learning and edge computing toward ubiquitous intelligence in 6g network: Challenges, recent advances, and future directions IEEE Commun Surv Tutor 2023 25 4 2892-2950
[5]
Chai S and Huang J Dependent task scheduling using parallel deep neural networks in mobile edge computing J Grid Comput 2024 22 1 27
[6]
Li A, Song SL, Chen J, Li J, Liu X, Tallent NR, and Barker KJ Evaluating modern GPU interconnect: Pcie, nvlink, nv-sli, nvswitch and gpudirect IEEE Trans Parallel Distrib Syst 2020 31 1 94-110
[7]
Ranathunga T, McGibney A, Rea S, Bharti S (2023) Blockchain-based decentralized model aggregation for cross-silo federated learning in industry 4.0. IEEE Internet Things J 10(5):4449–4461
[8]
Aloqaily M, Ridhawi IA, Kanhere SS (2023) Reinforcing industry 4.0 with digital twins and blockchain-assisted federated learning. IEEE J Sel Areas Commun 41(11):3504–3516
[9]
Lakhan A, Grønli T, Bellavista P, Memon S, Alharby M, and Thinnukool O IoT workload offloading efficient intelligent transport system in federated ACNN integrated cooperated edge-cloud networks J Cloud Comput 2024 13 1 79
[10]
Du M, Zheng H, Gao M, Feng X (2024) Adaptive decentralized federated learning in resource-constrained IoT networks. IEEE Internet Things J 11(6):10739–10753
[11]
Kaur G and Grewal SK Aggregation techniques in wireless communication using federated learning: a survey Int J Wirel Mob Comput 2024 26 2 115-126
[12]
Pfeiffer K, Rapp M, Khalili R, Henkel J (2023) Federated learning for computationally constrained heterogeneous devices: A survey. ACM Comput Surv 55(14s):334:1–334:27
[13]
Kar B, Yahya W, Lin Y, and Ali A Offloading using traditional optimization and machine learning in federated cloud-edge-fog systems: A survey IEEE Commun Surv Tutor 2023 25 2 1199-1226
[14]
Sun X, Yang S, and Zhao C Lightweight industrial image classifier based on federated few-shot learning IEEE Trans Ind Inform 2023 19 6 7367-7376
[15]
Bugshan N, Khalil I, Rahman MS, Atiquzzaman M, Yi X, and Badsha S Toward trustworthy and privacy-preserving federated deep learning service framework for industrial internet of things IEEE Trans Ind Inform 2023 19 2 1535-1547
[16]
Yang W, Xiang W, Yang Y, and Cheng P Optimizing federated learning with deep reinforcement learning for digital twin empowered industrial IoT IEEE Trans Ind Inform 2023 19 2 1884-1893
[17]
Qiu W, Ai W, Chen H, Feng Q, and Tang G Decentralized federated learning for industrial IoT with deep echo state networks IEEE Trans Ind Inform 2023 19 4 5849-5857
[18]
Moudoud H and Cherkaoui S Multi-tasking federated learning meets blockchain to foster trust and security in the metaverse Ad Hoc Netw 2023 150 103 264
[19]
Guo X (2022) Implementation of a Blockchain-enabled Federated Learning Model that Supports Security and Privacy Comparisons. In: 5th IEEE International Conference on Information Systems and Computer Aided Education (ICISCAE) 2022. IEEE, Dalian, p 243–247
[20]
Bodagala H, Priyanka H, (2022) Security for IoT using federated learning. In: 2022 International Conference on Recent Trends in Microelectronics. Automation, Computing and Communications Systems (ICMACC), pp 131–136
[21]
Zhao L, Tang X, You Z, Pang Y, Xue H, Zhu L (2020) Operation and Security Considerations of Federated Learning Platform Based on Compute First Network. In: 2020 IEEE/CIC International Conference on Communications in China (ICCC Workshops). Chongqing, p 117-121
[22]
El Houda ZA, Nabousli D, Kaddoum G (2022) Cost-efficient federated reinforcement learning- based network routing for wireless networks. In: 2022 IEEE Future Networks World Forum (FNWF). Montreal, p 243-248
[23]
Behmandpoor P, Patrinos P, Moonen M (2022) Federated learning based resource allocation for wireless communication networks. In: 2022 30th European Signal Processing Conference (EUSIPCO). Belgrade, p 1656–1660
[24]
Shaheen M, Farooq MS, and Umer T AI-empowered mobile edge computing: inducing balanced federated learning strategy over edge for balanced data and optimized computation cost J Cloud Comput 2024 13 1 52
[25]
Giagkos D, Tzenetopoulos A, Masouros D, Soudris D, Xydis S (2023) Darly: Deep reinforcement learning for QoS-aware scheduling under resource heterogeneity optimizing serverless video analytics. 16th IEEE International Conference on Cloud Computing, CLOUD 2023, Chicago, IL, USA, July 2-8, 2023 pp 1–3
[26]
Xiong J and Zhu H Privmaskfl: A private masking approach for heterogeneous federated learning in IoT Comput Commun 2024 214 100-112
[27]
Razaque A, Khan M, Yoo J, Alotaibi A, Alshammari M, and Almiani M Blockchain-enabled heterogeneous 6G supported secure vehicular management system over cloud edge computing Internet Things 2024 25 101115
[28]
Qu Y, Pokhrel SR, Garg S, Gao L, Xiang Y (2021) A blockchained federated learning framework for cognitive computing in industry 4.0 networks. IEEE Trans Ind Inform 17(4):2964–2973
[29]
Qiu C, Yao H, Wang X, Zhang N, Yu FR, and Niyato D AI-chain: Blockchain energized edge intelligence for beyond 5G networks IEEE Netw 2020 34 6 62-69
[30]
Masood AB, Hasan A, Vassiliou V, and Lestas M A blockchain-based data-driven fault-tolerant control system for smart factories in industry 4.0 Comput Commun 2023 204 158-171
[31]
Huang X, Han L, Li D, Xie K, and Zhang Y A reliable and fair federated learning mechanism for mobile edge computing Comput Netw 2023 226 109 678
[32]
Li Y, Chen C, Liu N, Huang H, Zheng Z, and Yan Q A blockchain-based decentralized federated learning framework with committee consensus IEEE Netw 2021 35 1 234-241
[33]
Ayepah-Mensah D, Sun G, Boateng GO, Anokye S, and Liu G Blockchain-enabled federated learning-based resource allocation and trading for network slicing in 5G IEEE/ACM Trans Netw 2024 32 1 654-669
[34]
Huang X, Wu Y, Liang C, Chen Q, and Zhang J Distance-aware hierarchical federated learning in blockchain-enabled edge computing network IEEE Internet Things J 2023 10 21 19163-19176
[35]
Wan Y, Qu Y, Gao L, and Xiang Y Privacy-preserving blockchain-enabled federated learning for B5G-driven edge computing Comput Netw 2022 204 108671
[36]
Zhang Z, Yue S, and Zhang J Towards resource-efficient edge AI: from federated learning to semi-supervised model personalization IEEE Trans Mob Comput 2024 23 5 6104-6115
[37]
Aboueleneen N, Alwarafy A, Abdallah M (2023) Secure and energy-efficient communication for internet of drones networks: a deep reinforcement learning approach. In: IEEE International Wireless Communications and Mobile Computing, IWCMC 2023, Marrakesh, Morocco, June 19-23, 2023, pp 818–823

Recommendations

Comments

Please enable JavaScript to view thecomments powered by Disqus.

Information & Contributors

Information

Published In

cover image Journal of Cloud Computing: Advances, Systems and Applications
Journal of Cloud Computing: Advances, Systems and Applications  Volume 13, Issue 1
Dec 2024
2705 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

Qualifiers

  • 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

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • 0
    Total Citations
  • 0
    Total Downloads
  • Downloads (Last 12 months)0
  • Downloads (Last 6 weeks)0
Reflects downloads up to 05 Mar 2025

Other Metrics

Citations

View Options

View options

Figures

Tables

Media

Share

Share

Share this Publication link

Share on social media