Real-World Implementation and Performance Analysis of Distributed Learning Frameworks for 6G IoT Applications

Author:

Naseh David1ORCID,Abdollahpour Mahdi1,Tarchi Daniele1ORCID

Affiliation:

1. Department of Electrical, Electronic and Information Engineering “Guglielmo Marconi”, University of Bologna, 40126 Bologna, Italy

Abstract

This paper explores the practical implementation and performance analysis of distributed learning (DL) frameworks on various client platforms, responding to the dynamic landscape of 6G technology and the pressing need for a fully connected distributed intelligence network for Internet of Things (IoT) devices. The heterogeneous nature of clients and data presents challenges for effective federated learning (FL) techniques, prompting our exploration of federated transfer learning (FTL) on Raspberry Pi, Odroid, and virtual machine platforms. Our study provides a detailed examination of the design, implementation, and evaluation of the FTL framework, specifically adapted to the unique constraints of various IoT platforms. By measuring the accuracy of FTL across diverse clients, we reveal its superior performance over traditional FL, particularly in terms of faster training and higher accuracy, due to the use of transfer learning (TL). Real-world measurements further demonstrate improved resource efficiency with lower average load, memory usage, temperature, power, and energy consumption when FTL is implemented compared to FL. Our experiments also showcase FTL’s robustness in scenarios where users leave the server’s communication coverage, resulting in fewer clients and less data for training. This adaptability underscores the effectiveness of FTL in environments with limited data, clients, and resources, contributing valuable information to the intersection of edge computing and DL for the 6G IoT.

Publisher

MDPI AG

Reference49 articles.

1. Machine Learning for 5G/B5G Mobile and Wireless Communications: Potential, Limitations, and Future Directions;Lee;IEEE Access,2019

2. Machine learning algorithms for wireless sensor networks: A survey;Amgoth;Inform. Fusion,2019

3. Naseh, D., Shinde, S.S., and Tarchi, D. (2023, January 2–4). Enabling Intelligent Vehicular Networks Through Distributed Learning in the Non-Terrestrial Networks 6G Vision. Proceedings of the European Wireless 2023; 28th European Wireless Conference, Rome, Italy.

4. Fontanesi, G., Ortíz, F., Lagunas, E., Baeza, V.M., Vázquez, M., Vásquez-Peralvo, J., Minardi, M., Vu, H., Honnaiah, P., and Lacoste, C. (2023). Artificial Intelligence for Satellite Communication and Non-Terrestrial Networks: A Survey. arXiv.

5. Deep Learning for Distributed Optimization: Applications to Wireless Resource Management;Lee;IEEE J. Sel. Areas Commun.,2019

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