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Time Series Analysis of Multiple Primary User Environment using HMM-based Spectrum Sensing

机译:基于HMM的频谱感测的多次用户环境的时间序列分析

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In this paper, we propose a method to estimate the communication parameters and the number of Primary Users (PUs) by using Hidden Markov Model (HMM) from time series data such as received power in the environment. Many researchers focus on a measurement based Radio Environment Database (RED) that utilizes the actual received signal power obtained by spectrum sensing as an enabler for an efficient frequency sharing. In addition, by estimating average received power and channel occupancy, etc. from radio observation information obtained by spectrum sensing, it is possible to realize high precision RED construction. Conventional research on parameter estimation using machine learning for a system like wireless LAN assumes that the number of PUs existing in the sensing environment is known. This assumption is not realistic in an actual environment. In this research, we estimate the number of PUs and parameters of each PU by using HMM and the Bayesian Information Criterion (BIC) for spectrum sensing when the number of PUs existing in the sensing environment is unknown. Thereby, the parameters related to the each PU in the sensing environment can be separated and stored in RED. Moreover, when estimating by using HMM and BIC, we improve the estimation result of the number of PUs by using the threshold for the estimation result of the transition probability matrix which is the parameter of HMM. The simulation results confirm that the number of PUs can be estimated with high precision when targeting wireless LAN.
机译:在本文中,我们提出了一种通过使用来自环境序列数据(例如环境中的所接收功率)的隐马尔可夫模型(HMM)来估计通信参数和主要用户数(PU)的方法。许多研究人员专注于基于测量的无线电环境数据库(红色),其利用通过频谱感测获得的实际接收信号功率作为有效频率共享的启动器。另外,通过通过光谱感测获得的无线电观察信息估计平均接收的电力和信道占用等,可以实现高精度的红色结构。使用无线LAN的系统的机器学习的参数估计的常规研究假定是已知在感测环境中存在的PU的数量。这种假设在实际环境中并不逼真。在这项研究中,当感应环境中存在的栓塞数未知时,我们通过使用HMM和贝叶斯信息标准(BIC)来估计每个PU的PU和参数的数量和贝叶斯信息标准(BIC)。由此,可以分离与传感环境中的每个PU相关的参数并以红色存储。此外,当通过使用HMM和BIC估计时,我们通过使用作为HMM的参数的转变概率矩阵的估计结果的阈值来改善PU的数量的估计结果。仿真结果证实,在定位无线LAN时,可以高精度地估计PU的数量。

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