Opportunistic Spectrum Access in OFDMA Systems

Shehzad Ahmad, A. Shahid, R. M. Ahmad, Adeel Akram, M. A. Nasim
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Abstract

This paper presents the novel idea for opportunity detection (detecting unoccupied sub-carriers/sub-channels) in downlink (DL) orthogonal frequency division multiple access (OFDMA) systems using cognitive radio (CR) sensing techniques and sub-channel utilization history information. Assuming availability of information about the basic parameters of the primary system as well as time and frequency synchronization of CR user with primary system, three techniques have been proposed for detection of unoccupied sub-channels in DL OFDMA systems: 1) Detection Method— it identifies unoccupied sub-carriers/sub-channel in DL OFDMA systems by exploiting the CR sensing techniques (i.e. matched filter and energy detection). 2) Prediction Method— it forecasts the future sub-channel state (empty or occupied) by classifying sub-channel history into different traffic patterns using ‘Traffic Classification Algorithm’. 3) Hybrid of Detection and Prediction Method— it also utilizes ‘Traffic Classification Algorithm’ to decide when to use detection and prediction methods in order to determine either sub-channel will remain empty or occupied in next time slot.
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OFDMA系统中的机会频谱接入
本文提出了一种利用认知无线电(CR)感知技术和子信道利用历史信息在下行正交频分多址(OFDMA)系统中进行机会检测(检测未被占用的子载波/子信道)的新思路。假设主系统基本参数信息的可用性,以及CR用户与主系统的时间和频率同步,提出了三种检测DL OFDMA系统中未占用子信道的技术:1)检测方法-利用CR感知技术(即匹配滤波器和能量检测)识别DL OFDMA系统中未占用的子载波/子信道。2)预测方法-它通过使用“流量分类算法”将子通道历史分类为不同的流量模式来预测未来子通道状态(空或被占用)。3)检测和预测方法的混合-它还利用“流量分类算法”来决定何时使用检测和预测方法,以确定哪个子通道将在下一个时隙保持空或被占用。
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