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  • 杨黎明,周玉前,金宇峰,等.空天地协同网络的边缘计算与资源分配[J].电讯技术,2026,66(2): - .    [点击复制]
  • YANG Liming,ZHOU Yuqian,JIN Yufeng,et al.Edge Computing Offloading and Resource Allocation for Space-Air-Ground Collaborative Network[J].,2026,66(2): - .   [点击复制]
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空天地协同网络的边缘计算与资源分配
杨黎明,周玉前,金宇峰,赵鸿俊
0
(重庆邮电大学 通信与信息工程学院,重庆 400065)
摘要:
低轨道(Low Earth Orbit,LEO)卫星和高空平台(High Altitude Platform,HAP)成为了实现全域、全时段、全覆盖通信的关键技术。为了更好地为地面用户提供高效稳定的服务,针对HAP辅助的LEO卫星边缘计算,提出了一种终端-高空平台-低轨卫星组成的三层网络架构,任务可以在3个平台上处理,星间也可以协作实现星上负载均衡。考虑时间延迟、资源约束、建模问题的高度复杂性以及星地信道的快速衰落等问题,联合优化卸载决策、带宽与计算资源分配策略,提出了一种基于深度确定性策略梯度的任务卸载与资源分配算法,将问题建模为马尔可夫决策过程,同时对环境状态参数采用状态归一化算法进行预处理。与深度Q网络、全部卸载、无星间链路3种策略算法相比,所提出的算法在时延与能耗方面均能表现出优秀的性能。
关键词:  低轨卫星  高空平台  移动边缘计算  卸载决策  资源分配  深度强化学习
DOI:10.20079/j.issn.1001-893x.241009002
基金项目:重庆市自然科学基金创新发展联合基金(中国星网)(CSTB2023NSCQ-LZX0114)
Edge Computing Offloading and Resource Allocation for Space-Air-Ground Collaborative Network
YANG Liming,ZHOU Yuqian,JIN Yufeng,ZHAO Hongjun
(School of Communications and Information Engineering,Chongqing University of Posts and Telecommunications,Chongqing 400065,China)
Abstract:
Low Earth orbit(LEO) satellite and high altitude platform(HAP) have become the key technologies to achieve all-domain,full-time,and full-coverage communication.In order to better provide efficient and stable services for ground users,aiming at the HAP-assisted LEO satellite edge computing,a three-layer network architecture composed of terminals,HAPs,and LEO satellites is proposed,and the tasks can be processed on the three platforms,and the satellites can also cooperate to achieve on-board load balancing.Considering the problems of time delay,resource constraints,the high complexity of the modeling problem and the rapid fading of satellite-to-ground channels,by jointly optimizing offload decisions,bandwidth and computing resource allocation strategies,a task offloading and resource allocation algorithm based on deep deterministic policy gradient is proposed,which models the problem as a Markov decision process,and preprocesses the environmental state parameters by state normalization algorithm.Compared with three strategy algorithms including deep Q network,full offloading and no inter-satellite link,the proposed algorithm shows excellent performance in terms of delay and energy consumption.
Key words:  LEO satellite  high altitude platform  mobile edge computing  offload strategy  resource allocation  deep reinforcement learning
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