Graphic Deep Reinforcement Learning for Dynamic Resource Allocation in Space-Air-Ground Integrated Networks

Yue Cai;Peng Cheng;Zhuo Chen;Wei Xiang;Branka Vucetic;Yonghui Li
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Abstract

Space-Air-Ground integrated network (SAGIN) is a crucial component of the 6G, enabling global and seamless communication coverage. This multi-layered communication system integrates space, air, and terrestrial segments, each with computational capability, and also serves as a ubiquitous computing platform. An efficient task offloading and resource allocation scheme is key in SAGIN to maximize resource utilization efficiency, meeting the stringent quality of service (QoS) requirements for different service types. In this paper, we introduce a dynamic SAGIN model featuring diverse antenna configurations, two timescale types, different channel models for each segment, and dual service types. We formulate a problem of sequential decision-making task offloading and resource allocation. Our proposed solution is an innovative online approach referred to as graphic deep reinforcement learning (GDRL). This approach utilizes a graph neural network (GNN)-based feature extraction network to identify the inherent dependencies within the graphical structure of the states. We design an action mapping network with an encoding scheme for end-to-end generation of task offloading and resource allocation decisions. Additionally, we incorporate meta-learning into GDRL to swiftly adapt to rapid changes in key parameters of the SAGIN environment, significantly reducing online deployment complexity. Simulation results validate that our proposed GDRL significantly outperforms state-of-the-art DRL approaches by achieving the highest reward and lowest overall latency.
用于天-空-地一体化网络动态资源分配的图形化深度强化学习
空间-空地综合网络(SAGIN)是6G的关键组成部分,可实现全球无缝通信覆盖。这种多层通信系统集成了空间、空中和地面三个部分,每个部分都具有计算能力,并作为一个泛在计算平台。高效的任务卸载和资源分配方案是SAGIN系统实现资源利用效率最大化的关键,能够满足不同业务类型对服务质量(QoS)的严格要求。在本文中,我们介绍了一个动态SAGIN模型,该模型具有不同的天线配置、两种时间标度类型、每个段的不同信道模型和双业务类型。我们提出了一个顺序决策、任务卸载和资源分配问题。我们提出的解决方案是一种创新的在线方法,称为图形深度强化学习(GDRL)。该方法利用基于图形神经网络(GNN)的特征提取网络来识别状态图形结构中的固有依赖关系。我们设计了一个具有端到端生成任务卸载和资源分配决策编码方案的动作映射网络。此外,我们将元学习整合到GDRL中,以快速适应SAGIN环境关键参数的快速变化,显著降低在线部署的复杂性。仿真结果验证了我们提出的GDRL通过实现最高的奖励和最低的总体延迟,显着优于最先进的DRL方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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