首页> 外文会议>2012 IEEE 13th International Workshop on Signal Processing Advances in Wireless Communications >Non-cooperative state tracking of a cognitive radio network with multiple primary users via multiple hypothesis testing
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Non-cooperative state tracking of a cognitive radio network with multiple primary users via multiple hypothesis testing

机译:通过多个假设检验对具有多个主要用户的认知无线电网络进行非合作状态跟踪

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摘要

This paper proposes an algorithm to enable a secondary user in a cognitive radio network to be aware of whether each primary transmitter is active or passive, namely network state estimation. The number of transmitters is unknown apriori. A secondary user needs to perform a multiple-hypothesis testing, which can be achieved via clustering the received observations such that observations sharing the same cluster are declared to have been generated from the same hypothesis. However, most of the clustering algorithms assume that data is available offline as a batch. We have earlier proposed the LOC algorithm, a Large-scale Online hierarchical Clustering algorithm for unsupervised sequential numerical data. Unlike most of clustering algorithms, hierarchical algorithms do not assume the number of clusters to be known apriori. In this paper, the LOC algorithm is applied in the context of multiple-hypothesis testing to enable each secondary user to track the network state. The received samples at a secondary user are fed to a proposed filter then to the LOC algorithm to obtain a hierarchical tree. We study the choice of an adequate cutting level and evaluate the spectrum sensing performance. We report a 93% average probability of correctly declaring a true hypothesis in a scenario where number of true hypotheses in the network is five.
机译:本文提出了一种算法,可使认知无线电网络中的辅助用户知道每个主发射机是主动还是被动,即网络状态估计。发射机的数量未知。次要用户需要执行多重假设检验,这可以通过对接收到的观察结果进行聚类来实现,从而宣布共享相同聚类的观察结果是从相同假设中生成的。但是,大多数聚类算法都假定数据可以批量脱机使用。我们之前已经提出了LOC算法,这是一种用于无监督序列数据的大规模在线层次聚类算法。与大多数聚类算法不同,分层算法不假定先验的聚类数量。本文将LOC算法应用于多重假设测试的环境中,以使每个次要用户都能跟踪网络状态。在次要用户处接收到的样本将被馈送到建议的过滤器,然后馈入LOC算法以获得分层树。我们研究选择适当的切割水平并评估频谱感测性能。我们报告了在网络中真实假设数为5的情况下正确声明真实假设的平均概率为93%。

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