DRL Approach for Spectral-Energy Trade-off in RIS-assisted Full-duplex Multi-user MIMO Systems

Sravani Kurma, Keshav Singh, P. Sharma, Chih-Peng Li
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Abstract

Reconfigurable intelligent surface (RIS) is a break-through technology that enhances both energy efficiency (EE) and spectrum efficiency (SE) by artificial reconfiguration of the electromagnetic waves utilizing the reflective property of the metasurface elements. This work studies the optimization of the SE-EE trade-off using the deep reinforcement learning (DRL) algorithm in a RIS-assisted full-duplex multi-user multiple-input multiple-output (MIMO) communication system. We use partial channel state information to control the overhead signaling requirement and demand for energy supply to the system. We consider resource efficiency (RE), in which the RIS’s phase-shift design and power allocation at the nodes (i.e., node in BS in downlink (DL) and user in uplink (UL)) are jointly optimized, with the goal of investigating the SE-EE trade-off of the considered system using an appropriate performance metric. We adopt a DRL-based approach for the proposed system to tackle the challenges involved in optimization due to time-varying channels and exploitation in real-time applications. Additionally, simulation outcomes exemplify the efficiency and swift conver-gence rate of the proposed algorithm and demonstrate how different system characteristics, including co-channel interference (CCI), residual self-interference (RSI), and the number of RIS reflecting elements, affect the system’s performance.
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ris辅助全双工多用户MIMO系统频谱能量权衡的DRL方法
可重构智能表面(RIS)是一项突破性技术,通过利用超表面元素的反射特性对电磁波进行人工重构,从而提高能源效率(EE)和频谱效率(SE)。本工作研究了在ris辅助的全双工多用户多输入多输出(MIMO)通信系统中使用深度强化学习(DRL)算法优化SE-EE权衡。我们使用部分信道状态信息来控制架空信令需求和对系统能量供应的需求。我们考虑了资源效率(RE),其中RIS的相移设计和节点(即下行链路(DL)中的BS节点和上行链路(UL)中的用户)的功率分配被联合优化,目的是使用适当的性能指标调查所考虑系统的SE-EE权衡。我们采用基于drl的方法来解决由于时变信道和实时应用开发而涉及优化的挑战。此外,仿真结果证明了所提出算法的效率和快速收敛速度,并展示了不同的系统特性,包括同信道干扰(CCI)、剩余自干扰(RSI)和RIS反射元素的数量如何影响系统的性能。
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