基于高效能量检测的光谱测量方法研究

Hiroki Iwata, K. Umebayashi, Ahmed Al-Tahmeesschi, S. Joshi, M. López-Benítez, Janne J. Lehtomäki
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引用次数: 4

摘要

频谱占用率的统计信息是实现高效、智能的动态频谱共享的重要依据,可以通过长期、宽带、广域的频谱测量来获得。在本文中,我们研究了一种基于能量检测(ED)的频谱测量,其中本底噪声(NF)估计是适当的ED阈值设置的关键功能。典型的NF具有慢时变特性和频率依赖性,已经提出了几种NF估计算法,包括基于前向连续均值切除(FCME)算法的方法。然而,这些方法没有深入考虑NF的慢时变特性,计算效率低下。因此,我们提出了一种基于NF级变化检测的计算复杂度降低算法。该算法在NF不变的情况下跳过了NF估计过程,计算效率高。数值计算表明了该算法的有效性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Study on High-Efficiency Energy Detection-Based Spectrum Measurements
Statistical information in terms of spectrum occupancy is useful for the efficient and smart dynamic spectrum sharing, and it can be obtained by long-term, broadband, and wide-area spectrum measurements. In this paper, we investigate an energy detection (ED)-based spectrum measurements, in which the noise floor (NF) estimation is a key functionality for the appropriate ED threshold setting. Typically, the NF has the slowly time- varying property and frequency-dependency, and several NF estimation algorithms, including forward consecutive mean excision (FCME) algorithm-based method, have been proposed. However, these methods did not deeply consider the slowly time varying property of the NF and is computationally inefficient. Accordingly, we propose a computational complexity reduction algorithm based on NF level change detection. This algorithm is computationally efficient, since it skips the NF estimation process when the NF does not change. In numerical evaluations, we show the efficiency and the validity of the proposed algorithm.
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