Deep Reinforcement Learning-Based Multipath Routing for LEO Megaconstellation Networks

被引:1
|
作者
Han, Chi [1 ]
Xiong, Wei [1 ,2 ]
Yu, Ronghuan [1 ,2 ]
机构
[1] Space Engn Univ, Natl Key Lab Space Target Awareness, Beijing 101400, Peoples R China
[2] Space Engn Univ, Sch Space Informat, Beijing 101400, Peoples R China
关键词
satellite network; multipath routing; deep reinforcement learning; traffic scheduling; hop count; GRAPH NEURAL-NETWORKS; TRAFFIC CONTROL; OPTIMIZATION; CHALLENGES;
D O I
10.3390/electronics13153054
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 expansion of megaconstellation networks (MCNs) represents a promising solution for achieving global Internet coverage. To meet the growing demand for satellite services, multipath routing allows the simultaneous establishment of multiple transmission paths, enabling the transmission of flows in parallel. Nevertheless, the mobility of satellites and time-varying link states presents a challenge for the discovery of optimal paths and traffic scheduling in multipath routing. Given the inflexibility of traditional static deep reinforcement learning (DRL)-based routing algorithms in dealing with time-varying constellation topologies, DRL-based multipath routing (DMR) enabled by a graph neural network (GNN) is proposed as a means of enhancing the transmission performance of MCNs. DMR decouples the stochastic optimization problem of multipath routing under traffic and bandwidth constraints into two subproblems: multipath routing discovery and multipath traffic scheduling. Firstly, the minimum hop count-based multipath route discovery algorithm (MHMRD) is proposed for the computation of multiple available paths between all source and destination nodes. Secondly, the GNN-based multipath traffic scheduling scheme (GMTS) is proposed as a means of dynamically scheduling the traffic on each available path for each data stream, based on the state information of ISLs and traffic demand. Simulation results demonstrate that the proposed scheme can be scaled to constellations with different configurations without the necessity for repeated training and enhance the throughput, completion ratio, and delay by 42.64%, 17.39%, and 3.66% in comparison with the shortest path first algorithm (SPF), respectively.
引用
收藏
页数:20
相关论文
共 50 条
  • [41] Reinforcement learning based dynamic distributed routing scheme for mega LEO satellite networks
    Yixin HUANG
    Shufan WU
    Zeyu KANG
    Zhongcheng MU
    Hai HUANG
    Xiaofeng WU
    Andrew Jack TANG
    Xuebin CHENG
    Chinese Journal of Aeronautics , 2023, (02) : 284 - 291
  • [42] Deep Reinforcement Learning-Based Channel and Power Allocation in Multibeam LEO Satellite Systems
    Li, Junrong
    Peng, Fuzhou
    Wang, Xijun
    Chen, Xiang
    IOT AS A SERVICE, IOTAAS 2023, 2025, 585 : 103 - 116
  • [43] Deep Distributional Reinforcement Learning-Based Adaptive Routing With Guaranteed Delay Bounds
    Liu, Jianmin
    Li, Dan
    Xu, Yongjun
    IEEE-ACM TRANSACTIONS ON NETWORKING, 2024, 32 (06) : 4692 - 4706
  • [44] A Deep Reinforcement Learning-based Routing Algorithm for Unknown Erroneous Cells in DMFBs
    Kawakami, Tomohisa
    Shiro, Chiharu
    Nishikawa, Hiroki
    Kong, Xiangbo
    Tomiyama, Hiroyuki
    Yamashita, Shigeru
    2023 21ST IEEE INTERREGIONAL NEWCAS CONFERENCE, NEWCAS, 2023,
  • [45] Deep Reinforcement Learning-Based Routing Optimization Algorithm for Edge Data Center
    Zhao, Jixin
    Zhang, Shukui
    Zhang, Yang
    Zhang, Li
    Long, Hao
    26TH IEEE SYMPOSIUM ON COMPUTERS AND COMMUNICATIONS (IEEE ISCC 2021), 2021,
  • [46] IMPROVING THE SCALABILITY OF DEEP REINFORCEMENT LEARNING-BASED ROUTING WITH CONTROL ON PARTIAL NODES
    Sun, Penghao
    Lan, Julong
    Guo, Zehua
    Xu, Yang
    Hu, Yuxiang
    2020 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, 2020, : 3557 - 3561
  • [47] A deep reinforcement learning-based approach for the home delivery and installation routing problem
    Qiu, Huaxin
    Wang, Sutong
    Yin, Yunqiang
    Wang, Dujuan
    Wang, Yanzhang
    INTERNATIONAL JOURNAL OF PRODUCTION ECONOMICS, 2022, 244
  • [48] Fast-Convergence Reinforcement Learning for Routing in LEO Satellite Networks
    Ding, Zhaolong
    Liu, Huijie
    Tian, Feng
    Yang, Zijian
    Wang, Nan
    SENSORS, 2023, 23 (11)
  • [49] Deep reinforcement learning-based routing and resource assignment in quantum key distribution-secured optical networks
    Sharma, Purva
    Gupta, Shubham
    Bhatia, Vimal
    Prakash, Shashi
    IET QUANTUM COMMUNICATION, 2023, 4 (03): : 136 - 145
  • [50] DQR: A Deep Reinforcement Learning-based QoS Routing Protocol in Cognitive Radio Mobile Ad Hoc Networks
    Thong Nhat Tran
    Toan-Van Nguyen
    Shim, Kyusung
    An, Beongku
    2021 INTERNATIONAL CONFERENCE ON ELECTRONICS, INFORMATION, AND COMMUNICATION (ICEIC), 2021,