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首页> 外文期刊>International journal of antennas and propagation >Cognitive Radio Transceivers: RF, Spectrum Sensing, and Learning Algorithms Review
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Cognitive Radio Transceivers: RF, Spectrum Sensing, and Learning Algorithms Review

机译:认知无线电收发器:RF,频谱感应和学习算法综述

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摘要

A cognitive transceiver is required to opportunistically use vacant spectrum resources licensed to primary users. Thus, it relies on a complete adaptive behavior composed of:reconfigurable radio frequency (RF) parts, enhanced spectrum sensing algorithms, and sophisticated machine learning techniques. In this paper, we present a review of the recent advances in CR transceivers hardware design and algorithms. For the RF part, three types of antennas are presented: UWB antennas, frequency-reconfigurable/tunable antennas, and UWB antennas with reconfigurable band notches. The main challenges faced by the design of the other RF blocks are also discussed. Sophisticated spectrum sensing algorithms that overcome main sensing challenges such as model uncertainty, hardware impairments, and wideband sensing are highlighted. The cognitive engine features are discussed. Moreover, we study unsupervised classification algorithms and a reinforcement learning (RL) algorithm that has been proposed to perform decision-making in CR networks.
机译:需要认知收发器来机会性地使用许可给主要用户的空闲频谱资源。因此,它依赖于一个完整的自适应行为,该行为包括:可重新配置的射频(RF)部件,增强的频谱感应算法和复杂的机器学习技术。在本文中,我们介绍了CR收发器硬件设计和算法的最新进展。对于RF部分,提出了三种类型的天线:UWB天线,频率可重新配置/可调天线以及带可重新配置陷波口的UWB天线。还讨论了其他RF模块设计面临的主要挑战。重点介绍了可克服主要传感挑战(例如模型不确定性,硬件损伤和宽带传感)的复杂频谱传感算法。讨论了认知引擎的功能。此外,我们研究了提出在CR网络中执行决策的无监督分类算法和增强学习(RL)算法。

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