Wireless and Photonic Networks Research Centre of Excellence (WiPNET), Department of Computer and Communication Systems Engineering, Universiti Putra Malaysia, Serdang 43400, Selangor, Malaysia.
Department of Signal Theory and Communications, Universidad Carlos III de Madrid, 28911 Madrid, Spain.
Sensors (Basel). 2023 Jul 5;23(13):6175. doi: 10.3390/s23136175.
Fifth-generation (5G) networks have been deployed alongside fourth-generation networks in high-traffic areas. The most recent 5G mobile communication access technology includes mmWave and sub-6 GHz C-bands. However, 5G signals possibly interfere with existing radio systems because they are using adjacent and co-channel frequencies. Therefore, the minimisation of the interference of 5G with other signals already deployed for other services, such as fixed-satellite service Earth stations (FSS-Ess), is urgently needed. The novelty of this paper is that it addresses issues using measurements from 5G base stations (5G-BS) and FSS-ES, simulation analysis, and prediction modelling based on artificial neural network learning models (ANN-LMs). The ANN-LMs models are used to classify interference events into two classes, namely, adjacent and co-channel interference. In particular, ANN-LMs incorporating the radial basis function neural network (RBFNN) and general regression neural network (GRNN) are implemented. Numerical results considering real measurements carried out in Malaysia show that RBFNN evidences better accuracy with respect to its GRNN counterpart. The outcomes of this work can be exploited in the future as a baseline for coexistence and/or mitigation techniques.
第五代(5G)网络已与第四代网络一起在高流量区域部署。最新的 5G 移动通信接入技术包括毫米波和 sub-6GHz C 波段。然而,5G 信号可能会干扰现有的无线电系统,因为它们使用相邻和同信道频率。因此,迫切需要最小化 5G 对其他已经部署用于其他服务的信号的干扰,例如固定卫星服务地球站(FSS-Ess)。本文的新颖之处在于它使用来自 5G 基站(5G-BS)和 FSS-ES 的测量值、仿真分析以及基于人工神经网络学习模型(ANN-LMs)的预测建模来解决问题。ANN-LMs 模型用于将干扰事件分为两类,即邻频干扰和同信道干扰。特别是,实现了包含径向基函数神经网络(RBFNN)和广义回归神经网络(GRNN)的 ANN-LMs。考虑在马来西亚进行的实际测量的数值结果表明,RBFNN 在准确性方面优于其 GRNN 对应物。这项工作的结果可用于未来的共存和/或缓解技术的基准。