IAB Topology Design: A Graph Embedding and Deep Reinforcement Learning Approach

被引:15
|
作者
Simsek, Meryem [1 ]
Orhan, Oner [1 ]
Nassar, Marcel [1 ]
Elibol, Oguz [1 ]
Nikopour, Hosein [1 ]
机构
[1] Intel Labs, Santa Clara, CA 95054 USA
关键词
Network topology; Topology; Optimization; Machine learning; Wireless communication; 3GPP; Computer architecture; Integrated access and backhaul; IAB; graph embedding; deep reinforcement learning; topology adaptation;
D O I
10.1109/LCOMM.2020.3029513
中图分类号
TN [电子技术、通信技术];
学科分类号
0809 ;
摘要
As the density of cellular networks grows, it becomes exceedingly difficult to provide traditional fiber backhaul access to each cell site. Millimeter wave communication coupled with beamforming can be used to provide high-speed wireless backhaul to such cell sites. Therefore, the 3rd generation partnership project (3GPP) defines an integrated access and backhaul (IAB) architecture, in which the same infrastructure and spectral resources are shared to provide access and backhaul. However, this complicates the design of topologies in such networks as they need to enable efficient traffic flow and minimize congestion or increase robustness to backhaul link failure. We formulate this problem as a graph optimization problem that maximizes the lower bound of the network capacity and propose a topology formation approach based on a combination of deep reinforcement learning and graph embedding. Our proposed approach is significantly less complex, more scalable, and yields very close performance compared to the optimal dynamic programming approach and significant gains when compared with baseline approaches.
引用
收藏
页码:489 / 493
页数:5
相关论文
共 50 条
  • [31] SmartTRO: Optimizing topology robustness for Internet of Things via deep reinforcement learning with graph convolutional networks
    Peng, Yabin
    Liu, Caixia
    Liu, Shuxin
    Liu, Yuchen
    Wu, Yiteng
    [J]. COMPUTER NETWORKS, 2022, 218
  • [32] Deep Reinforcement Learning Based Autonomous Control Approach for Power System Topology Optimization
    Han, Xiaoyun
    Hao, Yi
    Chong, Zhiqiang
    Ma, Shiqiang
    Mu, Chaoxu
    [J]. 2022 41ST CHINESE CONTROL CONFERENCE (CCC), 2022, : 6041 - 6046
  • [33] Graph to Graph: a Topology Aware Approach for Graph Structures Learning and Generation
    Sun, Mingming
    Li, Ping
    [J]. 22ND INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE AND STATISTICS, VOL 89, 2019, 89
  • [34] Network Topology Optimization via Deep Reinforcement Learning
    Li, Zhuoran
    Wang, Xing
    Pan, Ling
    Zhu, Lin
    Wang, Zhendong
    Feng, Junlan
    Deng, Chao
    Huang, Longbo
    [J]. IEEE TRANSACTIONS ON COMMUNICATIONS, 2023, 71 (05) : 2847 - 2859
  • [35] Attributed Graph Clustering: A Deep Attentional Embedding Approach
    Wang, Chun
    Pan, Shirui
    Hu, Ruiqi
    Long, Guodong
    Jiang, Jing
    Zhang, Chengqi
    [J]. PROCEEDINGS OF THE TWENTY-EIGHTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, 2019, : 3670 - 3676
  • [36] SFC Embedding Meets Machine Learning: Deep Reinforcement Learning Approaches
    Liu, Yicen
    Lu, Yu
    Li, Xi
    Qiao, Wenxin
    Li, Zhiwei
    Zhao, Donghao
    [J]. IEEE COMMUNICATIONS LETTERS, 2021, 25 (06) : 1926 - 1930
  • [37] Virtual Network Embedding with Changeable Action Space: An Approach based on Graph Neural Network and Reinforcement Learning
    Tan, Yawen
    Wang, Jiadai
    Liu, Jiajia
    [J]. ICC 2023-IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS, 2023, : 3646 - 3651
  • [38] An Approach to Combine the Power of Deep Reinforcement Learning with a Graph Neural Network for Routing Optimization
    Chen, Bo
    Zhu, Di
    Wang, Yuwei
    Zhang, Peng
    [J]. ELECTRONICS, 2022, 11 (03)
  • [39] A Graph-Based Deep Reinforcement Learning Approach to Grasping Fully Occluded Objects
    Zuo, Guoyu
    Tong, Jiayuan
    Wang, Zihao
    Gong, Daoxiong
    [J]. COGNITIVE COMPUTATION, 2023, 15 (01) : 36 - 49
  • [40] A Graph-Based Deep Reinforcement Learning Approach to Grasping Fully Occluded Objects
    Guoyu Zuo
    Jiayuan Tong
    Zihao Wang
    Daoxiong Gong
    [J]. Cognitive Computation, 2023, 15 : 36 - 49