Adaptive DFL‐based straggler mitigation mechanism for synchronous ring topology in digital twin networks

Author:

Waqas Khan Qazi1ORCID,Park Chan‐Won2,Ahmad Rashid3,Rizwan Atif14,Khan Anam Nawaz15,Lim Sunhwan6,Kim Do Hyeun7

Affiliation:

1. Department of Computer Engineering Jeju National University Jejusi Jeju Special Self‐Governing Province Republic of Korea

2. Autonomous IoT Research Section Intelligent Convergence Research Laboratory Electronics and Telecommunications Research Institute Daejeon Republic of Korea

3. Faculty of Computing and Information Technology Sohar University Sohar Sultanate of Oman

4. Department of Electronic Engineering Kyung Hee University Yongin South Korea

5. Bigdata Research Center Jeju National University Jeju Republic of Korea

6. Electronics and Telecommunications Research Institute Daejeon Daejeon Republic of Korea

7. Department of Computer Engineering (and Advanced Technology Research Institute) Jeju National University Jeju Republic of Korea

Abstract

AbstractDecentralised federated learning (DFL) transforms collaborative energy consumption prediction using distributed computation across a large network of edge nodes, ensuring data confidentiality by eliminating central data aggregation. Preserving individual privacy in energy forecasting is paramount, as it safeguards personal data from unauthorised examination. This highlights the importance of effectively handling local data to provide privacy protection. The authors proposed a DFL framework for residential energy forecasting, focusing on improving the performance and convergence of the collaborative model. The proposed framework enables local training of the long short‐term memory model with real‐time household energy data in a ring topology. Importantly, the framework addresses the issue of straggler nodes, nodes that lag in computation or communication, by proposing a heuristic straggler identification and mitigation mechanism to reduce their negative impact on overall system performance and communication efficiency. This approach improves collaborative energy prediction performance and ensures an overall reduction in waiting time, thus improving the convergence performance. Experimental results consistently demonstrate a low mean absolute error ranging from 3 to 3.2 across all edge nodes. The empirical findings unequivocally illustrate the efficiency of the proposed DFL architecture, highlighting its ability to improve communication efficiency and concurrently enhance performance.

Publisher

Institution of Engineering and Technology (IET)

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