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Low-Complexity High-Accuracy 5G and LTE Multichannel Spectrum Analysis Aided by Unsupervised Machine Learning

机译:低复杂性高精度5G和LTE多通道频谱分析辅助无监督机器学习

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In this paper we propose a new method of occupied spectrum analysis for channel detection in a shared spectrum environment. Our approach is based on iterative multi-stage multi-resolution scanning using configurable Sliding Discrete Fourier Transform (SDFT) aided by an Unsupervised Machine Learning (UML) clustering method. The proposed low-complexity high-accuracy real-time spectrum scanning and channel detection is simulated for multiple Radio Access Networks (RAN) of Long-Term Evolution (LTE) & Fifth Generation (5G) channels in a shared frequency band. The results of the simulation show possible successful utilization of the proposed method as a sensing tool for spectrum sharing management and other applications where accurate channel detection occupancy is required.
机译:在本文中,我们提出了一种新的共享频谱环境中的频谱分析方法。我们的方法是基于迭代多级多分辨率扫描,使用由无监督的机器学习(UML)聚类方法辅助的可配置的滑动离散傅里叶变换(SDFT)。所提出的低复杂性高精度实时频谱扫描和信道检测被模拟用于共享频带中的长期演进(LTE)和第五代(5G)信道的多个无线电接入网络(RAN)。模拟结果表明,所提出的方法的成功利用作为频谱共享管理的传感工具和所需准确信道检测占用的其他应用。

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