基于传统离散无记忆MIMO衰落信道模型的认知无线电频谱感知性能评价

D. Patil, V. Wadhai
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引用次数: 3

摘要

频谱感知是认知无线电的关键任务。认知无线电(CR)作为一种机会性地利用未充分利用的频谱的技术已经得到了发展,在这种技术中,次要用户感知到主要用户的存在,如果频谱是空的,就使用它,而不会影响他们的性能。频谱感知受到许多不确定性的挑战,这些不确定性会降低感知的质量。采用无离散时间记忆的多输入多输出(MIMO)衰落信道传统模型,对不同频谱感知技术的性能进行了评价。考虑了非参数多感官检测场景下CR网络的信号检测,比较了脉冲噪声存在下CR网络的性能。研究重点是五种不同的频谱感知机制的性能评估,即能量检测(ED)、广义似然比检验(GLRT)、罗伊最大根检验(RLRT)、最大特征值检测(MED)和循环平稳特征检测(CSFD)。分析结果表明,GLRT方法在常规模型下的传感性能得到了提高,但在没有脉冲噪声的情况下,常规模型下的传感性能过于悲观。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance evaluation of spectrum sensing in Cognitive Radio for conventional discrete-time memoryless MIMO fading channel model
Spectrum sensing is the crucial task of a cognitive radio. Cognitive Radio (CR) have been advanced as a technology for the opportunistic use of underutilized spectrum where secondary users sense the presence of primary users and use the spectrum if it is empty, without affecting their performance. Spectrum sensing in CR is challenged by a number of uncertainties, which degrade the sensing. The discrete-time memory less multiple inputs multiple output (MIMO) fading channel conventional model is implemented to appraise the performance of different spectrum sensing techniques. The signal detection in CR networks under a non parametric multisensory detection scenario is considered for performance comparison under the presence of impulsive noise. The examination focuses on performance evaluation of five different spectrum sensing mechanisms namely energy detection (ED), Generalized Likelihood Ratio Test (GLRT), Roy's largest Root Test (RLRT), Maximum Eigenvalue detection (MED) and Cyclostationary feature detection (CSFD). The analysis of the result indicates that, the sensing performance is improved in GLRT method for conventional model also it can be concluded that the performance under the conventional model can be too pessimistic in absence of impulsive noise.
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