Priority-Based Load Balancing With Multiagent Deep Reinforcement Learning for SpaceAirGround Integrated Network Slicing

被引:2
|
作者
Tu, Haiyan [1 ]
Bellavista, Paolo [2 ]
Zhao, Liqiang [1 ]
Zheng, Gan [3 ]
Liang, Kai [4 ,5 ]
Wong, Kai-Kit [6 ,7 ]
机构
[1] Xidian Univ, State Key Lab Integrated Serv Networks, Xian 710071, Peoples R China
[2] Univ Bologna, Dept Comp Sci & Engn, I-40126 Bologna, Italy
[3] Univ Warwick, Sch Engn, Coventry CV4 7AL, England
[4] Xidian Univ, Sch Telecommun Engn, Xian 710071, Peoples R China
[5] Anhui Prov Key Lab Cyberspace Secur Situat Awarene, Hefei 230037, Peoples R China
[6] UCL, Dept Elect & Elect Engn, London WC1E 7JE, England
[7] Yonsei Univ, Yonsei Frontier Lab, Seoul 03722, South Korea
来源
IEEE INTERNET OF THINGS JOURNAL | 2024年 / 11卷 / 19期
关键词
Load management; Space-air-ground integrated networks; Resource management; Low earth orbit satellites; Satellites; Delays; Autonomous aerial vehicles; Load balancing (LB); multiagent deep deterministic policy gradient (MADDPG); multiobjective optimization; radio access network slicing; space-air-ground integrated networks (SAGINs); RESOURCE-ALLOCATION; OPTIMIZATION;
D O I
10.1109/JIOT.2024.3416157
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Space-air-ground integrated network (SAGIN) slicing has been studied for supporting diverse applications, which consists of the terrestrial layer (TL) deployed with base stations (BSs), the aerial layer (AL) deployed with unmanned aerial vehicles (UAVs), as well as the space layer (SL) deployed with low earth orbit (LEO) satellites. The capacity of each SAGIN component is limited, and efficient and synergic load balancing (LB) has not been fully considered yet in the exiting literature. For this motivation, we originally propose a priority-based LB scheme for SAGIN slicing, where the AL and SL are merged into one layer, namely non-TL (NTL). First, three typical slices (i.e., high-throughput, low-delay, and wide-coverage slices) are built under the same physical SAGIN. Then, a priority-based cross-layer LB approach is introduced, where the users will have the priority to access the terrestrial BS, and different slices have different offloading priorities. More specifically, the overloaded BS can offload the users of low-priority slices to the NTL preferentially. Furthermore, the throughput, delay, and coverage of the corresponding slices are jointly optimized by formulating a multiobjective optimization problem (MOOP). In addition, due to the independence and priority relationship of TL and NTL, the above MOOP is decoupled into two sub-MOOPs. Finally, we customize a two-layer multiagent deep deterministic policy gradient (MADDPG) algorithm for solving the two subproblems, which first optimizes the user-BS association and resource allocation at the TL, then it determines the UAVs' position deployment, users-UAV/LEO satellite association, and resource allocation at the NTL. The reported simulation results show the advantages of our proposed LB scheme and show that our proposed algorithm outperforms the benchmarkers.
引用
收藏
页码:30690 / 30703
页数:14
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