利用地理位置数据库增强压缩频谱传感

Zhijin Qin, Lin Wei, Yue Gao, C. Parini
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引用次数: 21

摘要

在认知无线电(CR)中,白区设备(WSD)需要在动态接入之前了解电视白区(TVWS)的频谱占用情况。为此提出了两种常见方案:1) 地理位置数据库和 2) 频谱感应。在地理定位数据库中,高效计算数字地面电视(DTT)位置概率和每个信道的最大允许功率变得非常重要,因为一旦有请求,数据库就应该做出快速响应。频谱传感是一种能提供更可靠、更实时的频谱占用结果的方案。然而,对于功率有限的 WSD 而言,高采样率是频谱感知的一大挑战。本文提出将基于位置概率的地理定位数据库与基于压缩传感(CS)的频谱传感相结合,以实现 WSD 的亚奈奎斯特采样率。地理位置数据库中的历史数据可用于支持频谱传感的信号恢复。此外,还提出了一种高效计算 DTT 位置概率的新方法。在 TVWS 中对所提算法进行了理论分析测试,结果表明所提算法的性能优于传统算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compressive spectrum sensing augmented by geo-location database
In cognitive radio (CR), white space devices (WSDs) need to have the knowledge of spectrum occupancy in TV white space (TVWS) before dynamic access. There are two common schemes proposed to achieve this: 1) geo-location database and 2) spectrum sensing. In geo-location database, calculating digital terrestrial television (DTT) location probability and maximum permitted power in each channel in an efficient way becomes important as the database is supposed to give a quick response once a request comes. Spectrum sensing is a scheme which can provide a more reliable and real-time results for spectrum occupancy. However, the high sampling rate is a big challenge in spectrum sensing for power limited WSDs. In this paper, we proposed to combine the location probability based geo-location database with compressive sensing (CS) based spectrum sensing to achieve sub-Nyquist sampling rates for WSDs. The history data from geo-location database is utilized to support the signal recovery for the spectrum sensing. In addition, a new method to calculate DTT location probability efficiently is proposed. Theoretical analysis of the proposed algorithm are tested in TVWS and it shows that performance of the proposed algorithm outperforms the traditional algorithm.
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