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A Graph Convolutional Network-Based Deep Reinforcement Learning Approach for Resource Allocation in a Cognitive Radio Network

机译:一种图形卷积网络的资源分配在认知无线电网络中的基于卷积网络的深度加强学习方法

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摘要

Cognitive radio (CR) is a critical technique to solve the conflict between the explosive growth of traffic and severe spectrum scarcity. Reasonable radio resource allocation with CR can effectively achieve spectrum sharing and co-channel interference (CCI) mitigation. In this paper, we propose a joint channel selection and power adaptation scheme for the underlay cognitive radio network (CRN), maximizing the data rate of all secondary users (SUs) while guaranteeing the quality of service (QoS) of primary users (PUs). To exploit the underlying topology of CRNs, we model the communication network as dynamic graphs, and the random walk is used to imitate the users’ movements. Considering the lack of accurate channel state information (CSI), we use the user distance distribution contained in the graph to estimate CSI. Moreover, the graph convolutional network (GCN) is employed to extract the crucial interference features. Further, an end-to-end learning model is designed to implement the following resource allocation task to avoid the split with mismatched features and tasks. Finally, the deep reinforcement learning (DRL) framework is adopted for model learning, to explore the optimal resource allocation strategy. The simulation results verify the feasibility and convergence of the proposed scheme, and prove that its performance is significantly improved.
机译:认知无线电(CR)是解决交通爆炸性增长与严重频谱稀缺之间的冲突的关键技术。与CR合理的无线电资源分配可以有效实现频谱共享和共信道干扰(CCI)缓解。在本文中,我们提出了一个联合通道选择和功率适应方案,用于界面认知无线电网络(CRN),最大化所有二级用户(SUS)的数据速率,同时保证主要用户的服务质量(PUS) 。为了利用CRN的底层拓扑,我们将通信网络塑造为动态图形,随机散步用于模仿用户的动作。考虑到缺乏准确的频道状态信息(CSI),我们使用图中包含的用户距离分布来估计CSI。此外,采用图形卷积网络(GCN)来提取关键干扰特征。此外,旨在实现以下资源分配任务的端到端学习模型,以避免具有不匹配的特征和任务的拆分。最后,采用了深度加强学习(DRL)框架进行了模型学习,探讨了最佳资源分配策略。仿真结果验证了所提出的方案的可行性和收敛性,并证明其性能显着提高。

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