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Deep Reinforcement Learning for Modulation and Coding Scheme Selection in Cognitive HetNets

机译:认知HetNet中用于调制和编码方案选择的深度强化学习

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We study a cognitive heterogeneous network (HetNet), in which multiple pairs of secondary users coexist with a pair of primary users on a certain spectrum band. To protect primary transmissions, secondary transmitters (STs) adopt a sensing-based approach to access the spectrum band. Nevertheless, STs may cause uncertain interference to the primary receiver (PR) due to imperfect spectrum sensing, which is particularly significant when the wireless links between the primary transmitter (PT) and STs are extremely weak and the wireless links between STs and the PR are non-ignorable. This makes it difficult for the PR to select a proper modulation and/or coding scheme (MCS). To deal with the issue, we propose an intelligent deep reinforcement learning (DRL) based MCS selection algorithm for the primary transmission. With the proposed algorithm, the DRL agent at the PR is able to learn the pattern of the interference from the STs and predict the interference in the future. Simulation results show that the transmission rate of the proposed algorithm can converge to 90% ^ 100% transmission rate of the optimal MCS selection algorithm, which assumes that the interference from the STs is perfectly known at the PR as prior information. Meanwhile, the transmission rate of the proposed algorithm is around 100% higher than the transmission rate of the benchmark algorithm, which selects the MCS without the information about interference.
机译:我们研究了认知异构网络(HetNet),其中在特定频谱上,多对次要用户与一对主用户共存。为了保护主要传输,辅助发射器(ST)采用基于感测的方法来访问频谱带。但是,由于频谱感应不完善,ST可能会对主接收器(PR)造成不确定的干扰,这在主发送器(PT)与ST之间的无线链路非常弱并且ST与PR之间的无线链路很弱时尤其重要。不可忽略的。这使得PR难以选择适当的调制和/或编码方案(MCS)。为了解决这个问题,我们提出了一种基于智能深度强化学习(DRL)的MCS选择算法作为主要传输方式。利用所提出的算法,PR处的DRL代理能够了解来自ST的干扰模式并预测未来的干扰。仿真结果表明,该算法的传输速率可以收敛到最优MCS选择算法的90%^ 100%的传输速率,并假设在PR处将来自ST的干扰完全称为先验信息。同时,提出的算法的传输速率比基准算法的传输速率高100%左右,基准算法选择没有干扰信息的MCS。

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