认知无线电网络中最优量化与高效协同频谱感知

Aunsa Shah, Au Koo
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引用次数: 3

摘要

硬决策组合具有带宽效率,但不可靠;软决策组合具有可靠性,但带宽消耗较大。报告来自CR用户的量化信息实现了硬决策和软决策组合之间的权衡。本文提出了一种既能保证最大检测概率又能抑制虚警概率的局部信息量化优化方案。最优方案是基于能量检测和局部量化阈值的迭代搜索。此外,Smith-Waterman算法(SWA)是一种广泛应用于生物信息学的字符串匹配算法,用于比较所有CR用户的报告并计算每个CR用户的相似度指数。计算了相似度指标的稳健均值和稳健标准差,并确定了阈值。相似度指数低于该阈值的CR用户将被排除在全局决策组合之外,其报告将被丢弃。利用改进的决策组合规则,将其余用户的局部决策组合起来,形成全局决策。并与其他量化方案进行了比较。仿真结果表明,采用量化阈值的最优方案优于其他方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal quantization and efficient cooperative spectrum sensing in cognitive radio networks
Hard decision combination is bandwidth-efficient but unreliable while soft-decision combination provides reliability but at the cost of much bandwidth consumption. Reporting quantized information from CR users achieves a trade-off between hard and soft decision combination. In this paper optimal quantization scheme which quantizes the local information in a way that ensures maximum probability of detection while restraining probability of false alarm is proposed. The optimal scheme is based on energy detection and search iteratively for local quantization thresholds. Moreover Smith-Waterman algorithm (SWA), a string matching algorithm widely used in bioinformatics for aligning biological sequences, is used for comparing reports of all CR users to each other and computing similarity index for each CR user. Robust mean and robust standard deviation are calculated of the similarity indexes and a threshold is found. CR users who have similarity index below this threshold are excluded from global decision combination and their reports are discarded. The local decisions of rest of users are combined using modified rules of decision combination to take a global decision. The optimal quantization scheme is compared with other schemes. Simulation results show that the optimal scheme with quantization thresholds performs better than the other schemes.
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