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Dynamic Power Allocation Scheme for NOMA Uplink in Cognitive Radio Networks Using Deep Q Learning

机译:使用Deep Q学习认知无线网络中NOMA上行链路动态功率分配方案

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Non-orthogonal multiple access (NOMA) is a promising technique to satisfy a host of access demand and provide higher throughput. It enables that multiple users are multiplexed with different power levels by using superposition coding at the transmitter side and successive interference cancellation at the receiver side. In this paper, we deal with the long-term throughput maximization of an uplink NOMA in the cognitive radio network (CRN). The secondary users (SUs) have limited capacity battery, hence, SUs equipped with an energy harvester can harvest energy from solar sources to prolong their operations. Particularly, a combination of NOMA and time division multiple access (TDMA) is proposed in order to reduce the complexity of massive wireless communication systems. By taking into account the practical applications, a deep Q learning algorithm is employed to maximize the long-term throughput of the system, where the agent (i.e secondary base station (SBS)) can interact with an environment to learn about system dynamics. As a result, the SBS learns how to allocate optimal transmission energy to SUs in each time slot. Simulation results demonstrate that the proposed scheme can achieve better performance than conventional schemes.
机译:非正交多次访问(NOMA)是一种有希望的技术,用于满足一系列访问需求并提供更高的吞吐量。它使得通过在接收器侧的发射机侧和连续的干扰消除处,通过在发射器侧的叠加编码和连续的干扰消除来实现多个用户的多路复用。在本文中,我们处理认知无线电网络(CRN)中上行链路NOMA的长期吞吐量最大化。二级用户(SUS)容量电池有限,因此,苏配备有能源收割机可以从太阳能源收获能量以延长其运营。特别地,提出了NOMA和时分多次访问(TDMA)的组合,以降低大规模无线通信系统的复杂性。通过考虑到实际应用,采用深度Q学习算法来最大化系统的长期吞吐量,其中代理(即二次基站(SBS))可以与环境交互以了解系统动态。因此,SBS学习如何在每个时隙中分配最佳传输能量到SUS。仿真结果表明,所提出的方案可以实现比传统方案更好的性能。

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