利用α-μ/α-μ复合分布重新探讨无线通信中阴影效应的对数正态建模

L. Ozelim, U. Dias, P. N. Rathie
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引用次数: 0

摘要

正确建模无线传输中的阴影效应对进行网络质量评估至关重要。从数学的角度来看,使用复合分布可以将快衰落和慢衰落随机现象结合起来。许多统计分布被用来解释快速衰落效应。另一方面,尽管一些研究表明对数正态分布(LNd)作为阴影模型的充分性,但它们也揭示了这种分布呈现出一些分析可追溯性问题。过去的工作包括将瑞利分布和威布尔分布与LNd相结合。由于难以获得所涉及的概率密度函数的封闭形式表达式,其他作者将LNd近似为Gamma分布,创建了Nakagami-m/Gamma和Rayleigh/Gamma复合分布。为了更好地模拟LNd,还考虑了使用逆Gamma和逆Nakagami-m分布的近似。虽然讨论了所有这些备选方案,但如何在复合模型中有效地使用LNd并仍然得到封闭形式的结果仍然是一个悬而未决的问题。我们提出了一种新的理解,即如何通过极限过程将α-μ分布简化为LNd,克服了对数正态衰落过程固有的解析难解性。有趣的是,导出了复合分布的PDF和CDF的新的封闭形式和级数表示。我们建立了计算代码来评估所有由此导出的表达式,并通过所开发的方程模拟实际现场试验结果。代码和模型的准确性是显著的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revisiting the Lognormal Modelling of Shadowing Effects during Wireless Communications by Means of the α-μ/α-μ Composite Distribution
Properly modeling the shadowing effects during wireless transmissions is crucial to perform the network quality assessment. From a mathematical point of view, using composite distributions allows one to combine both fast fading and slow fading stochastic phenomena. Numerous statistical distributions have been used to account for the fast fading effects. On the other hand, even though several studies indicate the adequacy of the Lognormal distributon (LNd) as a shadowing model, they also reveal this distribution renders some analytic tractability issues. Past works include the combination of Rayleigh and Weibull distributions with LNd. Due to the difficulty inherent to obtaining closed form expressions for the probability density functions involved, other authors approximated LNd as a Gamma distribution, creating Nakagami-m/Gamma and Rayleigh/Gamma composite distributions. In order to better mimic the LNd, approximations using the inverse Gamma and the inverse Nakagami-m distributions have also been considered. Although all these alternatives were discussed, it is still an open question how to effectively use the LNd in the compound models and still get closed-form results. We present a novel understanding on how the α-μ distribution can be reduced to a LNd by a limiting procedure, overcoming the analytic intractability inherent to Lognormal fading processes. Interestingly, new closed-form and series representations for the PDF and CDF of the composite distributions are derived. We build computational codes to evaluate all the expression hereby derived as well as model real field trial results by the equations developed. The accuracy of the codes and of the model are remarkable.
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