Advanced High-order Hidden Bivariate Markov Model Based Spectrum Prediction

Yangxiao Zhao, Zhiming Hong, Yu Luo, Guodong Wang, Lina Pu
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引用次数: 1

Abstract

The majority of existing spectrum prediction models in Cognitive Radio Networks (CRNs) don’t fully explore the hidden correlation among adjacent observations. In this paper, we first develop a novel prediction approach termed high-order hidden bivariate Markov model (H2BMM) for a stationary CRN. The proposed H2BMM leverages the advantages of both HBMM and high-order, which applies two dimensional parameters, i.e., hidden process and underlying process, to more accurately describe the channel behavior. In addition, the current channel state is predicted by observingmultiple previous states. Afterwards, themobility of secondary users is fully considered and we propose an advanced approach based on H2BMM, termed Advanced H2BMM, to accommodate a mobile CRN. Extensive simulations are conducted and results verify that the prediction accuracy is significantly improved using the proposed (H2BMM. The Advanced H2BMM is also evaluated with comparison to H2BMM and results show considerable improvements of H2BMM in a mobile environment. Received on 7 December 2017; accepted on 9 December 2017; published on 12 December 2017
基于高级高阶隐二元马尔可夫模型的频谱预测
现有的认知无线电网络(crn)中的大多数频谱预测模型都没有充分挖掘相邻观测之间的隐藏相关性。在本文中,我们首先开发了一种新的预测方法,称为高阶隐二元马尔可夫模型(H2BMM),用于平稳CRN。所提出的H2BMM利用了HBMM和高阶的优点,采用二维参数,即隐藏过程和底层过程,更准确地描述通道行为。此外,通过观察多个先前的状态来预测当前的通道状态。之后,充分考虑了二级用户的移动性,我们提出了一种基于H2BMM的高级方法,称为高级H2BMM,以适应移动CRN。进行了大量的仿真,结果验证了使用所提出的(H2BMM)可以显著提高预测精度。与H2BMM相比,先进的H2BMM也进行了评估,结果表明H2BMM在移动环境中有相当大的改进。2017年12月7日收到;2017年12月9日验收;发布于2017年12月12日
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