Single-channel blind separation of co-frequency PSK signals with unknown carrier frequency offsets

Xiaobei Liu, Y. Guan, S. Koh, Zilong Liu, Peng Wang
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引用次数: 6

Abstract

In this paper, the problem of single-channel blind source separation (SCBSS) of a mixture of two co-frequency phase-shift keying (PSK) signals with unknown carrier frequency offsets (CFOs) is investigated. Two SCBSS algorithms which are robust to CFOs are proposed to perform separation of the mixture signals. In the first algorithm, the phase changes of the received signals caused by CFOs are tracked when performing separation of the signals. In the second algorithm, the CFOs are estimated directly before separation by using the cyclostationary feature of the signal, and they are used as known values during the separation of the signals. Simulation results show that both of the two proposed algorithms lead to significant performance improvement as compared with that achieved by using the conventional SCBSS algorithm. When CFOs are small, the phase tracking based algorithm is preferred as it can achieve same performance as that achieved by using the cyclic-feature based algorithm, but with much lower complexity. When CFOs are big, the cyclic-feature based algorithm is a better choice because it can achieve much better performance than that achieved by using the phase tracking based algorithm.
载波频偏未知共频PSK信号的单通道盲分离
研究了载波频偏未知的两个共频移相键控信号混合的单通道盲源分离问题。提出了两种对cfo具有鲁棒性的SCBSS算法对混合信号进行分离。在第一种算法中,在对信号进行分离时,跟踪接收信号由cfo引起的相位变化。在第二种算法中,利用信号的循环平稳特征在分离前直接估计cfo,并在信号分离过程中作为已知值使用。仿真结果表明,与传统的SCBSS算法相比,两种算法的性能都有显著提高。当cfo较小时,基于相位跟踪的算法可以达到与基于循环特征的算法相同的性能,但复杂度要低得多。当cfo较大时,基于循环特征的算法是更好的选择,因为它比基于相位跟踪的算法可以获得更好的性能。
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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