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2021 Fiscal Year Research-status Report

Radio Resource Management in 5G and Beyond Networks: A Layered In-network Learning Approach

Research Project

Project/Area Number 20K11764
Research InstitutionIbaraki University

Principal Investigator

王 瀟岩  茨城大学, 理工学研究科(工学野), 准教授 (10725667)

Co-Investigator(Kenkyū-buntansha) 梅比良 正弘  茨城大学, 理工学研究科(工学野), 特命研究員 (00436239)
Project Period (FY) 2020-04-01 – 2023-03-31
Keywordswireless access / reinforcement learning / federated learning
Outline of Annual Research Achievements

In FY2021, based on our previous results, we continued our research on achieving global optimization at low bandwidth consumption by integrating federated learning technique. To deal with the global non-independent and identically distributed environmental dataset and constrained bandwidth resources, we propose to integrate federated learning-based edge server upon intelligent BSs, to form a layered in-network learning framework. We compared the performance of the proposed approach with centralized optimal results, in terms of spectrum efficiency and bandwidth consumption through simulations.

Current Status of Research Progress
Current Status of Research Progress

2: Research has progressed on the whole more than it was originally planned.

Reason

We consider that the research progresses smoothly. We have published 2 journal papers, 2 internal conference papers and multiple domestic conference papers in FY2021 under the support of this funding.

Strategy for Future Research Activity

In the following year, we will consider the problems with sophisticated and practical models. Meanwhile, we will perform the experiments by realizing the proposed scheme in testbeds.

Causes of Carryover

コロナウィルス感染防止のため、多数の国際・国内学会が中止するため、残額が生じてしまう。残りの助成金は2022年度の学会の参加費と学術論文の登録費として使用する予定である。

  • Research Products

    (4 results)

All 2022 2021

All Journal Article (2 results) (of which Int'l Joint Research: 1 results,  Peer Reviewed: 2 results,  Open Access: 1 results) Presentation (2 results) (of which Int'l Joint Research: 2 results)

  • [Journal Article] Asynchronous Federated Deep Reinforcement Learning-Based URLLC-Aware Computation Offloading in Space-Assisted Vehicular Networks2022

    • Author(s)
      Chao Pan, Zhao Wang, Haijun Liao, Zhenyu Zhou, Xiaoyan Wang, Muhammad Tariq, and Sattam Al-Otaibi
    • Journal Title

      IEEE Transactions on Intelligent Transportation Systems

      Volume: early access Pages: 1-13

    • DOI

      10.1109/TITS.2022.3150756

    • Peer Reviewed / Int'l Joint Research
  • [Journal Article] Reinforcement Learning for Joint Channel/Subframe Selection of LTE in the Unlicensed Spectrum2021

    • Author(s)
      Yuki Kishimoto, Xiaoyan Wang, and Masahiro Umehira
    • Journal Title

      Wireless Communications and Mobile Computing

      Volume: 2021 Pages: 1-15

    • DOI

      10.1155/2021/9985972

    • Peer Reviewed / Open Access
  • [Presentation] A Deep Reinforcement Learning based Analog Beamforming Approach in Downlink MISO Systems2022

    • Author(s)
      Hang Zhou, Xiaoyan Wang, Masahiro Umehira, and Yusheng Ji
    • Organizer
      IEEE Vehicular Technology Conference
    • Int'l Joint Research
  • [Presentation] Deep Reinforcement Learning based Usage Aware Spectrum Access Scheme2021

    • Author(s)
      Yuto Teraki, Xiaoyan Wang, Masahiro Umehira and Yusheng Ji
    • Organizer
      nternational Symposium on Wireless Personal Multimedia Communications
    • Int'l Joint Research

URL: 

Published: 2022-12-28  

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