基于谱相干特征的混合信号检测与载波频率估计

Dong Li, Lin Zhang, Zhiqiang Liu, Zhiqiang Wu, Zhiping Zhang
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引用次数: 5

摘要

近年来,在快速发展的认知无线电网络研究中,由于频谱感知的需要,信号检测和射频参数估计受到了强烈的关注。在现有的大多数工作中,通常假设目标信号是一个单一的主用户信号,与其他信号在频谱上没有重叠。然而,在频谱拥挤的环境中,如认知无线电网络,或在频谱竞争的环境中,如战场,多个信号经常混合在一起,频谱上有明显的重叠。在我们之前的工作中,我们已经证明了使用二阶谱相关函数(SCF)循环平稳特征进行混合信号检测的可行性。在本文中,我们扩展了我们的工作,采用一种鲁棒算法来检测混合信号并通过谱相干函数(SOF)特征估计其载波频率。我们还评估了该算法在各种信道条件和信号混合场景下的检测和估计性能。仿真结果验证了该方案的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mixed signal detection and carrier frequency estimation based on spectral coherent features
Signal detection and RF parameter estimation have received strong interest in recent years due to the need of spectrum sensing in rapidly growing cognitive radio network research. In most of existing work, the target signal is often assumed to be a single primary user signal without overlap in spectrum with other signals. However, in a spectrally congested environment such as cognitive radio network, or in a spectrally contested environment such as a battlefield, multiple signals are often mixed together with significant overlap in spectrum. In our previous work, we have demonstrated the feasibility of using second order spectrum correlation function (SCF) cyclostationary feature to perform mixed signal detection. In this paper, we extend our work to employ a robust algorithm to detect mixed signals and estimate their carrier frequencies via spectral coherence function (SOF) features. We also evaluate the detection and estimation performances of the proposed algorithm in various channel conditions and signal mixture scenarios. Simulation results confirm the effectiveness of the proposed scheme.
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