首页> 外文会议>Global Telecommunications Conference (GLOBECOM 2011), 2011 IEEE >Bayesian Compressed Sensing Based Dynamic Joint Spectrum Sensing and Primary User Localization for Dynamic Spectrum Access
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Bayesian Compressed Sensing Based Dynamic Joint Spectrum Sensing and Primary User Localization for Dynamic Spectrum Access

机译:基于贝叶斯压缩感知的动态联合频谱感知和动态频谱接入的主要用户定位

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In cognitive radio (CR) and dynamic spectrum access (DSA) network research, most of current work on spectrum sensing focuses on the detection of existence of the spectrum holes for secondary user (SU) to harness. However, in a more sophisticated CR, the SU needs to detect more than just the existence of primary users (PUs) and spectrum holes: e.g., the transmission power and location of the primary users. In our previous work, we combined the spectrum sensing and PU power/localization detection together, and developed a joint PU detection and power/localization detection algorithm via compressed sensing (CS). By employing compressed sensing, the measurement ratio for the spectrum sensors is significantly reduced. However, if the measurement ratio is too low, the compressed sensing algorithm will not provide accurate estimates. Since the sparsity in the frequency domain is dynamically changing, it is unfeasible to set a predetermined measurement ratio. In this paper, we extend our previous work to employ the Bayesian Compressed Sensing (BCS) to improve the reconstruction results and dynamically determine the measurement ratio. Specifically, the BCS algorithm provides an 'error bar' along with the reconstruction of the target vector. This 'error bar' can then be used to determine if the current measurement ratio is sufficient. When the spectrum environment changes, the 'error bar' will change accordingly, giving us direction to increase or decrease the measurement ratio. Simulation results including the measurement ratio, the miss detection probability (MDP), false alarm probability (FAP) and reconstruction probability (RP) confirm the effectiveness and robustness of the proposed method.
机译:在认知无线电(CR)和动态频谱访问(DSA)网络研究中,当前有关频谱感测的大部分工作都集中于检测频谱孔的存在,以供次要用户(SU)利用。然而,在更复杂的CR中,SU需要检测的不仅是主要用户(PU)和频谱孔的存在:例如,主要用户的发射功率和位置。在我们之前的工作中,我们将频谱感应和PU功率/定位检测结合在一起,并通过压缩感应(CS)开发了联合的PU检测和功率/定位检测算法。通过采用压缩感测,频谱传感器的测量比率显着降低。但是,如果测量比率太低,则压缩传感算法将无法提供准确的估算值。由于频域中的稀疏度是动态变化的,因此设置预定的测量比率是不可行的。在本文中,我们扩展了以前的工作,以使用贝叶斯压缩感知(BCS)来改善重建结果并动态确定测量比。具体而言,BCS算法提供了“误差线”以及目标向量的重构。然后可以使用该“误差线”来确定当前的测量比率是否足够。当频谱环境发生变化时,“误差线”也会随之变化,这为我们提供了增加或减少测量比率的方向。仿真结果包括测量率,漏检概率(MDP),虚警概率(FAP)和重构概率(RP),证实了该方法的有效性和鲁棒性。

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