无先验信息的LTE信号分类和中心频率检测

T. Erpek, K. Steadman, Ram Krishnan, Qiao Chen
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引用次数: 0

摘要

在任意频率上创建认知长期演进(LTE)网络需要LTE特定的分类器。本文介绍了一种新的LTE信号分类方法,该方法不需要包括频率在内的信号参数的先验信息。该分类方法由多个步骤组成。第一步是使用基于相关的鉴别器,该鉴别器利用了LTE循环前缀、蜂窝特定参考符号序列和物理广播信道的特性。在此步骤结束时确定一组候选LTE信号频率和置信度因子。第二步使用置信因子缩小候选频率集。第三步是估计LTE信号的中心频率。这一步依赖于已知的信号特性,包括同步序列。时域LTE信号用频率和时间网格表示,并进行二维互相关。对算法进行了仿真,并在实时平台上实现。结果表明,在0.23秒内可以对信噪比小于0 dB的LTE信号进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LTE signal classification and center frequency detection without Priori information
Creating a cognitive Long Term Evolution (LTE) network on an arbitrary frequency requires an LTE specific classifier. This paper explains a novel LTE signal classification method that requires no a priori information about the signal parameters including its frequency. The classification method consists of multiple steps. The first step is using a correlation-based discriminator which exploits the characteristics of the LTE cyclic prefix, cell-specific reference symbol sequence and physical broadcast channel. A set of candidate LTE signal frequencies and confidence factors are determined at the end of this step. The candidate frequency set is narrowed down in the second step using the confidence factors. The third step is to estimate the center frequency of the LTE signal. This step relies on known signal characteristics including the synchronization sequences. The time-domain LTE signal is represented in frequency and time grids and two-dimensional cross-correlation is performed. The algorithms were simulated and then implemented on a real-time platform. The results show that an LTE signal with signal-to-noise ratio (SNR) of less than 0 dB can be classified within 0.23 sec.
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