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Asymptotic Analysis of Interference in Cognitive Radio Networks

机译:认知无线电网络中干扰的渐近分析

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The aggregate interference distribution in cognitive radio networks is studied in a rigorous analytical way using the popular Poisson point process model. While a number of results are available for this model of regular (non-cognitive) networks, cognitive ones present an extra level of difficulties for the analysis, mainly due to the exclusion region around the primary receiver, which are typically addressed via various ad-hoc approximations (e.g. based on the interference cumulants) or via the large-deviation analysis. Unlike the previous studies, we do not use here ad-hoc approximations but rather obtain the asymptotic interference distribution in a systematic and rigorous way, which also has a guaranteed level of accuracy at the distribution tail. This is in contrast to the large deviation analysis, which provides only the (exponential) order of scaling but not the outage probability itself. Unlike the cumulant-based analysis, our approach provides a guaranteed level of accuracy at the distribution tail. Additionally, our analysis provides a number of novel insights. In particular, we demonstrate that there is a critical transition point below which the outage probability decays only polynomially but above which it decays super-exponentially. This provides a solid analytical foundation to the earlier empirical observations in the literature and also reveals what are the typical ways outage events occur in different regimes. The analysis is further extended to include interference cancelation and fading (from a broad class of distributions). The outage probability is shown to scale down exponentially in the number of canceled nearest interferers in the below-critical region and does not change significantly in the above-critical one. The proposed asymptotic expressions are shown to be accurate in the non-asymptotic regimes.
机译:使用流行的泊松点过程模型,以严格的分析方式研究了认知无线电网络中的总干扰分布。尽管对于常规(非认知)网络模型可以得到许多结果,但认知网络的分析难度更大,这主要是由于主要接收者周围的排斥区域,通常通过各种广告解决。近似(例如,基于干扰累积量)或通过大偏差分析。与先前的研究不同,我们在这里不使用即席近似,而是以系统且严格的方式获得渐近干扰分布,这也保证了分布尾部的准确性。这与大偏差分析相反,后者仅提供缩放的(指数)顺序,而不提供中断概率本身。与基于累积量的分析不同,我们的方法可确保分布尾部的准确性。此外,我们的分析提供了许多新颖的见解。特别是,我们证明了存在一个临界过渡点,在该临界点以下,中断概率仅按多项式衰减,但在该临界点以上,其超指数衰减。这为文献中较早的经验观察提供了坚实的分析基础,并且还揭示了中断事件在不同状态下发生的典型方式是什么。该分析进一步扩展到包括干扰消除和衰落(来自广泛的分布类别)。中断概率显示出,在低于临界范围的区域中,已消除的最近干扰源的数量呈指数比例减小,而在高于临界范围的区域中,中断概率没有明显变化。所提出的渐近表达式在非渐近状态下被证明是准确的。

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