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Markov chain existence and Hidden Markov models in spectrum sensing

机译:频谱感知中的马尔可夫链存在与隐马尔可夫模型

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The primary function of a cognitive radio is to detect idle frequencies or sub-bands, not used by the primary users (PUs), and allocate these frequencies to secondary users. The state of the sub-band at any time point is either free (unoccupied by a PU) or busy (occupied by a PU). The states of a sub-band are monitored over L consecutive time periods, where each period is of a given time interval. Existing research assume the presence of a Markov chain for sub-band utilization by PUs over time, but this assumption has not been validated. Therefore, in this paper we validate existence of a Markov chain for sub-band utilization using real-time measurements collected in the paging band (928-948 MHz). Furthermore, since the detection of idle sub-bands by a cognitive radio is prone to errors, we probabilistically model the errors and then formulate a spectrum sensing paradigm as a hidden Markov model that predicts the true states of a sub-band. The accuracy of our proposed method in predicting the true states of the sub-band is substantiated using extensive simulations.
机译:认知无线电的主要功能是检测未被主要用户(PU)使用的空闲频率或子带,并将这些频率分配给次要用户。子带在任何时间点的状态为空闲(PU没占用)或忙(PU没占用)。在L个连续的时间段内监视子带的状态,其中每个时间段都具有给定的时间间隔。现有研究假设随着时间的推移,存在用于PU子带利用的马尔可夫链,但是这一假设尚未得到验证。因此,在本文中,我们使用在寻呼频带(928-948 MHz)中收集的实时测量结果来验证用于子频带利用的马尔可夫链的存在。此外,由于认知无线电对空闲子带的检测容易出现错误,因此我们概率性地对错误进行建模,然后将频谱感测范式公式化为预测子带真实状态的隐马尔可夫模型。我们的方法在预测子带真实状态时的准确性已通过大量仿真得到证实。

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