6th Generation (6G) industrial wireless subnetworks are expected to replace wired connectivity for control operation in robots and production modules. Interference management techniques such as centralized power control can improve spectral efficiency in dense deployments of such subnetworks. However, existing solutions for centralized power control may require full channel state information (CSI) of all the desired and interfering links, which may be cumbersome and time-consuming to obtain in dense deployments. This paper presents a novel solution for centralized power control for industrial subnetworks based on Graph Neural Networks (GNNs). The proposed method only requires the subnetwork positioning information, usually known at the central controller, and the knowledge of the desired link channel gain during the execution phase. Simulation results show that our solution achieves similar spectral efficiency as the benchmark schemes requiring full CSI in runtime operations. Also, robustness to changes in the deployment density and environment characteristics with respect to the training phase is verified.
翻译:预计第六代(6G)工业无线子网络将取代在机器人和生产模块中进行控制操作的有线连接。中央电源控制等干涉管理技术可以提高这类子网络密集部署的光谱效率。然而,现有中央电源控制解决方案可能需要所有希望和干扰连接的完整频道状态信息,而这种信息在密集部署中可能十分繁琐且耗时。本文件为基于“Gifo Neal Network”(GNNs)的工业子网络集中电源控制提供了一个全新的解决方案。拟议方法仅需要子网络定位信息(通常为中央控制器所知道),并需要了解执行阶段所需的连接通道收益。模拟结果表明,我们解决方案的光谱效率与运行时需要全CSI的基准计划相似。此外,对部署密度和环境特征变化与培训阶段变化的稳健性进行了核查。