Analysis and Performance Evaluation of Transfer Learning Algorithms for 6G Wireless Networks

被引:7
作者
Consolaro, Niccolo Girelli [1 ]
Shinde, Swapnil Sadashiv [1 ]
Naseh, David [1 ]
Tarchi, Daniele [1 ]
机构
[1] Univ Bologna, Dept Elect Elect & Informat Engn Guglielmo Marconi, I-40126 Bologna, Italy
关键词
6G; intelligent defined networks; distributed machine learning; transfer learning; INDUSTRIAL INTERNET; LATENCY; ENERGY;
D O I
10.3390/electronics12153327
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The development of the 5G network and the transition to 6G has given rise to multiple challenges for ensuring high-quality and reliable network services. One of these main challenges is the emergent intelligent defined networks (IDN), designed to provide highly efficient connectivity, by merging artificial intelligence (AI) and networking concepts, to ensure distributed intelligence over the entire network. To this end, it will be necessary to develop and implement proper machine learning (ML) algorithms that take into account this new distributed nature of the network to represent increasingly dynamic, adaptable, scalable, and efficient systems. To be able to cope with more stringent service requirements, it is necessary to renew the ML approaches to make them more efficient and faster. Distributed learning (DL) approaches are shown to be effective in enabling the possibility of deploying intelligent nodes in a distributed network. Among several DL approaches, transfer learning (TL) is a valid technique to achieve the new objectives required by emerging networks. Through TL, it is possible to reuse ML models to solve new problems without having to recreate a learning model from scratch. TL, combined with distributed network scenarios, turns out to be one of the key technologies for the advent of this new era of distributed intelligence. The goal of this paper is to analyze TL performance in different networking scenarios through a proper MATLAB implementation.
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页数:21
相关论文
共 38 条
  • [1] Abdulnabi K., FRUIT CLASSIFICATION
  • [2] 6G-Enabled Ultra-Reliable Low-Latency Communication in Edge Networks
    Adhikari M.
    Hazra A.
    [J]. IEEE Communications Standards Magazine, 2022, 6 (01): : 67 - 74
  • [3] Autonomous Vehicles With a 6G-Based Intelligent Cybersecurity Model
    Algarni, Abdullah M.
    Thayananthan, Vijey
    [J]. IEEE ACCESS, 2023, 11 : 15284 - 15296
  • [4] Evolution of Non-Terrestrial Networks From 5G to 6G: A Survey
    Azari, M. Mahdi
    Solanki, Sourabh
    Chatzinotas, Symeon
    Kodheli, Oltjon
    Sallouha, Hazem
    Colpaert, Achiel
    Montoya, Jesus Fabian Mendoza
    Pollin, Sofie
    Haqiqatnejad, Alireza
    Mostaani, Arsham
    Lagunas, Eva
    Ottersten, Bjorn
    [J]. IEEE COMMUNICATIONS SURVEYS AND TUTORIALS, 2022, 24 (04): : 2633 - 2672
  • [5] A Systems Theory of Transfer Learning
    Cody, Tyler
    Beling, Peter A.
    [J]. IEEE SYSTEMS JOURNAL, 2023, 17 (01): : 26 - 37
  • [6] Transfer Learning for Disruptive 5G-Enabled Industrial Internet of Things
    Coutinho, Rodolfo W. L.
    Boukerche, Azzedine
    [J]. IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2022, 18 (06) : 4000 - 4007
  • [7] Dingxin Si, 2021, 2021 IEEE 21st International Conference on Communication Technology (ICCT), P976, DOI 10.1109/ICCT52962.2021.9657981
  • [8] Edwards J.R., 2007, PERSPECTIVES ORG FIT, P361
  • [9] Eichler G.C., 2023, P NOMS 2023 2023 IEE, P1, DOI [10.1109/NOMS56928.2023.10154422, DOI 10.1109/NOMS56928.2023.10154422]
  • [10] Single and Multi-Agent Deep Reinforcement Learning for AI-Enabled Wireless Networks: A Tutorial
    Feriani, Amal
    Hossain, Ekram
    [J]. IEEE COMMUNICATIONS SURVEYS AND TUTORIALS, 2021, 23 (02): : 1226 - 1252