认知无线电通信中多跳频信号的盲源分离与跟踪

M. Mohammadi, Mohammad M. Taheri
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引用次数: 2

摘要

本文研究了一种源数未知且全部或部分源可能是具有跳频扩频能力的网络的盲源分离问题。我们应该首先找到源的数量,然后公平地跟踪每个检测到的网络。提取的检测源信息用于更新认知无线电的内部模型,帮助它预测和避免环境中有源FHSS无线电同时发射的频率。该方法不需要使用多个天线进行DOA估计,大大降低了算法的实现成本和复杂度。由于问题的实时性,与其他现有算法相比,该方法结构简单,具有较好的优越性。我们提出了一种基于概率分类器的方法来分离连续帧中的检测网络。仿真结果验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Blind source separation and tracking of multiple frequency hopping signals for cognitive radio communications
In this paper we consider a blind source separation problem in which the number of sources is unknown and all or some of the sources may be networks with frequency hopping spread spectrum capability. We should first find the number of sources and then fairly track each of the detected networks. The extracted information of detected sources are used to update an internal model in the cognitive radio that helps it to predict and avoid frequencies in which active FHSS radios in the environment are simultaneously transmitting. In the proposed method, there is no need to have several antennas for DOA estimation and this will significantly reduce implementation cost and complexity of the algorithm. Due to real time nature of the problem, the simple structure of this method in comparison with other existing algorithms will make it preferable. We propose a method based on a probabilistic classifier to separate detected networks in sequential frames. The efficiency of the proposed method is demonstrated by simulation results.
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