Approximating log-normally distributed secondary service time by hyper-exponential distribution for the analytical performance evaluation of cognitive radio networks

F. A. Cruz-Pérez, Jose Serrano-Chavez, S. L. Castellanos-Lopez, G. Hernández-Valdez
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引用次数: 4

Abstract

In this paper, hyper-exponential distribution is proposed to approximate log-normally distributed secondary service time in a cognitive radio network (CRN). Hyper-exponential distributions of different orders (i.e., number of phases) are considered. Both moment matching and expectation maximization algorithm are employed and evaluated to determine the parameters of the hyper-exponential distributions that provides the best fit to the corresponding log-normal ones. A general teletraffic analysis is developed for the performance evaluation of the CRN considering an arbitrary order of the hyper-exponential distribution. The performance of the CRN is evaluated in terms of the new call blocking and forced termination probabilities of secondary users. Numerical results are obtained for both different ratios (acceleration factor) of the mean service times of PUs and SUs and different values of the number of phases of the hyper-exponential distribution. Numerical results show that, except for small values of the acceleration factor, the values of the different performance metrics obtained considering an n-th order hyper-exponential distribution become closer to those obtained by discrete event computer simulation (where the log-normal distribution is used to model the secondary service time) as n increases. For small values of the acceleration factor, the different performance metrics are insensitive to the probability distribution beyond the mean of the secondary service time.
用超指数分布逼近对数正态分布的二次服务时间用于认知无线网络的分析性能评价
在认知无线网络(CRN)中,利用超指数分布来近似对数正态分布的辅助服务时间。考虑了不同阶数(即相数)的超指数分布。采用矩匹配和期望最大化算法,并对其进行了评估,以确定与相应对数正态分布最拟合的超指数分布参数。在考虑任意阶超指数分布的情况下,对CRN的性能评价提出了一种通用的话务分析方法。根据新的呼叫阻塞概率和辅助用户的强制终止概率对CRN的性能进行了评估。得到了pu和su平均服务时间的不同比值(加速因子)和超指数分布的不同相数的数值结果。数值结果表明,随着n的增加,考虑n阶超指数分布的不同性能指标的值除加速度因子值较小外,越来越接近离散事件计算机模拟的结果(其中使用对数正态分布来模拟二次维修时间)。当加速度因子值较小时,不同的性能指标对二次服务时间平均值以外的概率分布不敏感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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