Cooperative sequential binary hypothesis testing using cyclostationary features

K. Aditya Mohan, C. Murthy
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引用次数: 2

Abstract

A cognitive radio should be capable of finding the best spectrum band for communication depending on primary transmissions, the ambient noise level and interference. The first step in achieving this goal is to sense the existence of primary and secondary transmitters in various channels. In addition to the problem of signal detection, there is a need to distinguish between different signals at very low SNR. In this paper, the spectral correlation function is used for hypothesis testing. The sufficient statistic for feature vector based detection in the presence of timing uncertainty is derived. Sequential detection is used to decrease the average number of samples required for testing. Theoretical expressions for the stopping time at low SNR are derived for the AWGN channel. In a fading environment, the performance is evaluated using an approximate expression for the distribution of spectral correlation function. Monte-Carlo simulations verify the accuracy of the theoretical expressions.
基于循环平稳特征的合作序贯二元假设检验
认知无线电应该能够根据主要传输、环境噪声水平和干扰找到最佳的通信频段。实现这一目标的第一步是在各种信道中感知主发射机和次发射机的存在。除了信号检测问题外,还需要在非常低的信噪比下区分不同的信号。本文采用谱相关函数进行假设检验。导出了存在时间不确定性时基于特征向量的检测的充分统计量。顺序检测用于减少测试所需样本的平均数量。推导了低信噪比下AWGN信道停止时间的理论表达式。在衰落环境下,使用谱相关函数分布的近似表达式来评估性能。蒙特卡罗仿真验证了理论表达式的准确性。
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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