Auto scheduling through distributed reinforcement learning in SDN based IoT environment

被引:1
作者
Wu, Yuanyuan [1 ]
机构
[1] Xiamen City Univ, Smart Data Monitoring & Anal Applicat Ctr, Xiamen 361008, Peoples R China
关键词
Software-defined networking; Internet of Things; Channel assignment; Traffic management; Reinforcement learning; Multi-channel reassignment; Packet loss and throughput; DEEP; NETWORKING;
D O I
10.1186/s13638-023-02314-8
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The Internet of Things (IoT), which is built on software-defined networking (SDN), employs a paradigm known as channel reassignment. This paradigm has great potential for enhancing the communication capabilities of the network. The traffic loads may be scheduled more effectively with the help of an SDN controller, which allows for the transaction of matching channels via a single connection. The present techniques of channel reassignment, on the other hand, are plagued by problems with optimisation and cooperative multi-channel reassignment, which affect both traffic and routers. In this paper, we provide a framework for SDN-IoT in the cloud that permits multi-channel reassignment and traffic management simultaneously. The multi-channel reassignment based on traffic management is optimised via the use of a deep reinforcement learning technique, which was developed in this paper. We do an analysis of the performance metrics in order to optimise the throughput while simultaneously reducing the rate of packet loss and the amount of delay in the process. This is achieved by distributing the required traffic loads over the linked channels that make up a single connection.
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页数:19
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共 35 条
  • [1] On the Optimizing of LTE System Performance for SISO and MIMO Modes
    Bin Salem, Ali Abdulqader
    Chong, Yung-Wey
    Hanshi, Sabri M.
    Wan, Tat-Chee
    [J]. 2015 THIRD INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE, MODELLING AND SIMULATION (AIMS 2015), 2015, : 412 - 416
  • [2] Bonawitz K, 2019, Arxiv, DOI arXiv:1902.01046
  • [3] Balancing transport and physical layers in wireless multihop networks: Jointly optimal congestion control and power control
    Chiang, M
    [J]. IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, 2005, 23 (01) : 104 - 116
  • [4] Duc NMD, 2012, IEEE ICC, P6489, DOI 10.1109/ICC.2012.6364707
  • [5] El-Mougy A, 2015, 2015 IEEE 40TH LOCAL COMPUTER NETWORKS CONFERENCE WORKSHOPS (LCN WORKSHOPS), P804, DOI 10.1109/LCNW.2015.7365931
  • [6] An Introduction to Deep Reinforcement Learning
    Francois-Lavet, Vincent
    Henderson, Peter
    Islam, Riashat
    Bellemare, Marc G.
    Pineau, Joelle
    [J]. FOUNDATIONS AND TRENDS IN MACHINE LEARNING, 2018, 11 (3-4): : 219 - 354
  • [7] Zhuo HH, 2020, Arxiv, DOI arXiv:1901.08277
  • [8] Securing Internet of Things with Software Defined Networking
    Kalkan, Kubra
    Zeadally, Sherali
    [J]. IEEE COMMUNICATIONS MAGAZINE, 2018, 56 (09) : 186 - 192
  • [9] Software-Defined Networking: A Comprehensive Survey
    Kreutz, Diego
    Ramos, Fernando M. V.
    Verissimo, Paulo Esteves
    Rothenberg, Christian Esteve
    Azodolmolky, Siamak
    Uhlig, Steve
    [J]. PROCEEDINGS OF THE IEEE, 2015, 103 (01) : 14 - 76
  • [10] Optimizing Throughput Performance in Distributed MIMO Wi-Fi Networks Using Deep Reinforcement Learning
    Krishnan, Neelakantan
    Torkildson, Eric
    Mandayam, Narayan B.
    Raychaudhuri, Dipankar
    Rantala, Enrico-Henrik
    Doppler, Klaus
    [J]. IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2020, 6 (01) : 135 - 150