Adaptive multi-layer deployment for a digital-twin-empowered satellite-terrestrial integrated network数字孪生驱动的星地融合网络中的自适应多层部署

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作者
机构
[1] Beijing University of Posts and Telecommunications,Wireless Signal Processing and Network Laboratory
[2] Research Institute of China Telecom Co.,undefined
[3] Ltd.,undefined
关键词
Digital twin; Satellite-terrestrial integrated network; Deployment; Multi-agent reinforcement learning; 数字孪生; 星地融合网络; 部署; 多智能体强化学习; TN91;
D O I
10.1631/FITEE.2400327
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学科分类号
摘要
With the development of satellite communication technology, satellite-terrestrial integrated networks (STINs), which integrate satellite networks and ground networks, can realize global seamless coverage of communication services. Confronting the intricacies of network dynamics, the resource heterogeneity, and the unpredictability of user mobility, dynamic resource allocation within networks faces formidable challenges. Digital twin (DT), as a new technique, can reflect a physical network to a virtual network to monitor, analyze, and optimize the physical networks. Nevertheless, in the process of constructing a DT model, the deployment location and resource allocation of DTs may adversely affect its performance. Therefore, we propose a STIN model, which alleviates the problem of insufficient single-layer deployment flexibility of the traditional edge network by deploying DTs in multi-layer nodes in a STIN. To address the challenge of deploying DTs in the network, we propose a multi-layer DT deployment problem in the STIN to reduce system delay. Then we adopt a multi-agent reinforcement learning (MARL) scheme to explore the optimal strategy of the DT multi-layer deployment problem. The implemented scheme demonstrates a notable reduction in system delay, as evidenced by simulation outcomes.
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页码:246 / 259
页数:13
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