OFDM system identification based on m-sequence signatures in cognitive radio context

François-Xavier Socheleau, S. Houcke, A. Aïssa-El-Bey, P. Ciblat
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引用次数: 5

Abstract

In the context of cognitive radio, system identification is a crucial step towards radio environment awareness. In this paper, we present a new OFDM system identification method based on m-sequence (MS) specific characteristics. Thanks to their good random properties, m-sequences are commonly used in existing standards (such as Wifi or WiMAX) to modulate pilot tones for channel estimation and/or for synchronization purposes. We demonstrate that such sequences show extra-properties relevant to distinguish systems from each other and therefore advocate to generalize their use in a cognitive context. MS signatures are indeed of interest since they are able to discriminate OFDM based systems that have the same modulation parameters (intercarrier spacing, cyclic prefix duration, etc.). In order to detect these signatures, we conduct a hypothesis test based on the MS high order statistics. Detailed numerical examples demonstrate the efficiency of the proposed identification criterion and especially show its benefits compared to classical correlation based methods.
认知无线电环境下基于m序列特征的OFDM系统识别
在认知无线电的背景下,系统识别是实现无线电环境意识的关键一步。本文提出了一种基于m序列特性的OFDM系统识别方法。由于m序列具有良好的随机特性,因此在现有标准(如Wifi或WiMAX)中,m序列通常用于调制导频,用于信道估计和/或同步目的。我们证明了这些序列显示出与区分系统彼此相关的额外属性,因此主张在认知环境中推广它们的使用。MS签名确实令人感兴趣,因为它们能够区分具有相同调制参数(载波间间隔,循环前缀持续时间等)的基于OFDM的系统。为了检测这些特征,我们基于MS高阶统计量进行假设检验。详细的数值算例验证了所提出的识别准则的有效性,特别是与经典的基于相关的方法相比,该方法具有明显的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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