利用有限块长编码和硬件损伤为工业物联网网络提供 RSMA 支持的干扰管理

Nahed Belhadj Mohamed;Md. Zoheb Hassan;Georges Kaddoum
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引用次数: 0

摘要

随着工业物联网(IIoT)设备的日益增多,需要开发高效的无线电资源分配技术来优化频谱利用率。在人口稠密的物联网网络中,将多个物联网设备同时调度到相同的无线电资源块(RRB)上所产生的干扰会严重降低网络的可实现容量。本文研究了 IIoT 网络的干扰管理问题,该问题既考虑了有限块长(FBL)编码传输,也考虑了由实用的低复杂度射频前端产生的硬件损伤(HWIs)引起的信号失真。我们使用速率分割多路访问(RSMA)方案,通过相同的 RRB 有效调度集群中的多个物联网设备。为了提高系统的可实现容量,我们提出了一个联合聚类和发射功率分配(PA)问题。为了解决优化问题因其非凸性结构而造成的固有计算难点,我们提出了一个分两步进行的分布式聚类和功率管理(DCPM)框架。首先,DCPM 框架采用贪婪聚类算法为每个接入点获取一组聚类设备,同时最大化聚类设备的信号干扰加噪声比。然后,DCPM 框架采用多代理深度强化学习(DRL)框架来优化聚类设备之间的发送功率放大器。所提出的 DRL 算法可学习合适的发送功率策略,而无需精确的瞬时信号失真信息。我们的仿真结果表明,我们提出的 DCPM 框架能无缝适应不同的信道条件,在有 HWI 引起的信号失真和没有 HWI 引起的信号失真的情况下,其性能都优于几种基准方案。
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RSMA-Enabled Interference Management for Industrial Internet of Things Networks With Finite Blocklength Coding and Hardware Impairments
The increasing proliferation of industrial internet of things (IIoT) devices requires the development of efficient radio resource allocation techniques to optimize spectrum utilization. In densely populated IIoT networks, the interference that results from simultaneously scheduling multiple IIoT devices over the same radio resource blocks (RRBs) severely degrades a network’s achievable capacity. This paper investigates an interference management problem for IIoT networks that considers both finite blocklength (FBL)-coded transmission and signal distortions induced by hardware impairments (HWIs) arising from practical, low-complexity radio-frequency front ends. We use the rate-splitting multiple access (RSMA) scheme to effectively schedule multiple IIoT devices in a cluster over the same RRB(s). To enhance the system’s achievable capacity, a joint clustering and transmit power allocation (PA) problem is formulated. To tackle the optimization problem’s inherent computational intractability due to its non-convex structure, a two-step distributed clustering and power management (DCPM) framework is proposed. First, the DCPM framework obtains a set of clustered devices for each access point by employing a greedy clustering algorithm while maximizing the clustered devices’ signal-to-interference-plus-noise ratio. Then, the DCPM framework employs a multi-agent deep reinforcement learning (DRL) framework to optimize transmit PA among the clustered devices. The proposed DRL algorithm learns a suitable transmit PA policy that does not require precise information about instantaneous signal distortions. Our simulation results demonstrate that our proposed DCPM framework adapts seamlessly to varying channel conditions and outperforms several benchmark schemes with and without HWI-induced signal distortions.
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