A Novel Highly Accurate Log Skew Normal Approximation Method to Lognormal Sum Distributions

Zhijin Wu, Xue Li, R. Husnay, V. Chakravarthy, Bin Wang, Zhiqiang Wu
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引用次数: 22

Abstract

Sums of lognormal random variables occur in many important problems in wireless communications. However, the lognormal sum distribution is known to have no close-form and is difficult to compute numerically. Several approximation methods have already been proposed to approximate the lognormal sum distribution. However, these approximation methods all have their drawbacks: some widely used approximation methods are not very accurate at the lower region, some other approximation methods require the CDF curve from Monte Carlo simulation first. In this paper, we propose a novel approximation method, namely the Log Skew Normal (LSN) approximation, to model and approximate the sum of M lognormal distributed random variables. The proposed LSN approximation method has very high accuracy in most of the region, especially in the lower region. Furthermore, this approximation method does not require the CDF curve from Monte Carlo simulation first. The closed-form probability density function (PDF) of the resulting LSN random variable is presented and its parameters are derived from those of the M individual lognormal random variables by using an moment matching technique. Simulation results on the cumulative distribution function (CDF) of sum of M lognormal random variables in different conditions are used as reference curves to compare various approximation techniques. LSN approximation is found to provide better accuracy over a wide CDF range over other approximation methods.
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对数正态和分布的一种高精度对数偏态逼近方法
对数正态随机变量和在无线通信中的许多重要问题中都有应用。然而,已知对数正态和分布没有紧密形式,并且难以进行数值计算。已经提出了几种近似方法来近似对数正态和分布。然而,这些近似方法都有它们的缺点:一些广泛使用的近似方法在下区域不是很精确,另一些近似方法需要先从蒙特卡罗模拟得到CDF曲线。本文提出了一种新的近似方法,即对数偏态正态(LSN)近似,用于对M个对数正态分布随机变量的和进行建模和近似。所提出的LSN近似方法在大部分区域,特别是在较低区域具有很高的精度。此外,这种近似方法不需要先从蒙特卡罗模拟CDF曲线。给出了LSN随机变量的闭式概率密度函数(PDF),并利用矩匹配技术从M个对数正态随机变量的参数中导出了其参数。以不同条件下M个对数正态随机变量和的累积分布函数(CDF)的仿真结果作为参考曲线,比较各种近似方法。发现LSN近似在较宽的CDF范围内比其他近似方法提供更好的精度。
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