Open Access iconOpen Access

ARTICLE

FedEPC: An Efficient and Privacy-Enhancing Clustering Federated Learning Method for Sensing-Computing Fusion Scenarios

Ning Tang1,2, Wang Luo1,2,*, Yiwei Wang1,2, Bao Feng1,2, Shuang Yang1,2, Jiangtao Xu3, Daohua Zhu3, Zhechen Huang3, Wei Liang3

1 State Grid Electric Power Research Institute Co., Ltd., Nanjing, 211100, China
2 Nanjing Nari Information & Communication Technology Co., Ltd., Nanjing, 211100, China
3 Electric Power Research Institute of State Grid Jiangsu Electric Power Co., Ltd., Nanjing, 211103, China

* Corresponding Author: Wang Luo. Email: email

Computers, Materials & Continua 2025, 85(2), 4091-4113. https://doi.org/10.32604/cmc.2025.066241

Abstract

With the deep integration of edge computing, 5G and Artificial Intelligence of Things (AIoT) technologies, the large-scale deployment of intelligent terminal devices has given rise to data silos and privacy security challenges in sensing-computing fusion scenarios. Traditional federated learning (FL) algorithms face significant limitations in practical applications due to client drift, model bias, and resource constraints under non-independent and identically distributed (Non-IID) data, as well as the computational overhead and utility loss caused by privacy-preserving techniques. To address these issues, this paper proposes an Efficient and Privacy-enhancing Clustering Federated Learning method (FedEPC). This method introduces a dual-round client selection mechanism to optimize training. First, the Sparsity-based Privacy-preserving Representation Extraction Module (SPRE) and Adaptive Isomorphic Devices Clustering Module (AIDC) cluster clients based on privacy-sensitive features. Second, the Context-aware In-cluster Client Selection Module (CICS) dynamically selects representative devices for training, ensuring heterogeneous data distributions are fully represented. By conducting federated training within clusters and aggregating personalized models, FedEPC effectively mitigates weight divergence caused by data heterogeneity, reduces the impact of client drift and straggler issues. Experimental results demonstrate that FedEPC significantly improves test accuracy in highly Non-IID data scenarios compared to FedAvg and existing clustering FL methods. By ensuring privacy security, FedEPC provides an efficient and robust solution for FL in resource-constrained devices within sensing-computing fusion scenarios, offering both theoretical value and engineering practicality.

Keywords

Federated learning; edge computing; clustering; NON-IID; privacy

Cite This Article

APA Style
Tang, N., Luo, W., Wang, Y., Feng, B., Yang, S. et al. (2025). FedEPC: An Efficient and Privacy-Enhancing Clustering Federated Learning Method for Sensing-Computing Fusion Scenarios. Computers, Materials & Continua, 85(2), 4091–4113. https://doi.org/10.32604/cmc.2025.066241
Vancouver Style
Tang N, Luo W, Wang Y, Feng B, Yang S, Xu J, et al. FedEPC: An Efficient and Privacy-Enhancing Clustering Federated Learning Method for Sensing-Computing Fusion Scenarios. Comput Mater Contin. 2025;85(2):4091–4113. https://doi.org/10.32604/cmc.2025.066241
IEEE Style
N. Tang et al., “FedEPC: An Efficient and Privacy-Enhancing Clustering Federated Learning Method for Sensing-Computing Fusion Scenarios,” Comput. Mater. Contin., vol. 85, no. 2, pp. 4091–4113, 2025. https://doi.org/10.32604/cmc.2025.066241



cc Copyright © 2025 The Author(s). Published by Tech Science Press.
This work is licensed under a Creative Commons Attribution 4.0 International License , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
  • 715

    View

  • 440

    Download

  • 0

    Like

Share Link