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Whitespace Prediction Using Hidden Markov Model Based Maximum Likelihood Classification

机译:基于隐马尔可夫模型的最大似然分类,空白预测

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The cornerstone of cognitive systems is environment awareness which enables agile and adaptive use of channel resources. Whitespace prediction based on learning the statistics of the wireless traffic has proven to be a powerful tool to achieve such awareness. In this paper, we propose a novel HiddenMarkov Model (HMM) based spectrum learning and prediction approach which accurately estimates the exact length of the whitespace in WiFi channels within the shared industrial scientific medical (ISM) bands. We show that extending the number of hidden states and formulating the prediction problem as a maximum likelihood (ML) classification leads to a substantial increase in the prediction horizon compared to classical approaches that predict the immediate (short-term) future. We verify the proposed algorithm through simulations which utilize a model for WiFi traffic based on extensive measurement campaigns.
机译:认知系统的基石是环境意识,它可以实现敏捷和自适应频道资源的使用。基于学习的空格预测,无线流量的统计数据已被证明是实现这种意识的强大工具。在本文中,我们提出了一种新的隐马马罗马夫模型(HMM)基于频谱学习和预测方法,其准确地估计了共享工业科学医学(ISM)频段内的WiFi信道中的空格的精确长度。我们表明,作为最大可能性(ML)分类的最大可能性(ML)分类扩展了隐藏状态的数量并将预测问题的分类导致预测地平线的大幅增加与预测直接(短期)未来的古典方法相比。我们通过模拟验证所提出的算法,该算法利用基于广泛的测量运动来利用WiFi流量的模型。

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