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Threshold-Learning in Local Spectrum Sensing of Cognitive Radio

机译:认知无线电局部频谱感应的阈值学习

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Spectrum sensing is important for cognitive radios to utilize the idle spectrum opportunities, and recently cooperation schemes have been introduced to enhance spectrum sensing in specific areas. However, when a mobile cognitive node roams among heterogenous wireless network, it will be difficult to catch the changes of primary user's behavior, or to setup the cooperation relationship with local network nodes in a short time. In this paper, an self-learning spectrum sensing framework is proposed, which can enable the single mobile cognitive node to work in unknown wireless environment. When the wireless environment changes, the main sensing parameters (such as decision threshold, sampling frequency) could be adapted to optimum in the self-earning process. One adaptive algorithm is proposed to find the optimal decision threshold in energy detection sensing method. Simulation results show that, the proposed scheme could converge to optimal sensing parameters in spatial and temporal varying environment.
机译:频谱感测对于认知无线电来说是利用空闲光谱机会的认知机会,并且已经引入了最近的合作方案来增强特定区域的频谱感测。然而,当移动认知节点在异形无线网络中漫游时,很难捕获主要用户行为的变化,或者在短时间内与本地网络节点建立合作关系。在本文中,提出了一种自学习频谱感测框架,其可以使单个移动认知节点能够在未知的无线环境中工作。当无线环境发生变化时,主要感测参数(例如判定阈值,采样频率)可以适于在自收入过程中最佳。提出了一种自适应算法,以找到能量检测感测方法中的最佳决策阈值。仿真结果表明,该方案可以在空间和时间变化环境中收敛到最佳感测参数。

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