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On the Use of High-Order Moment Matching to Approximate the Generalized-k Distribution by a Gamma Distribution

机译:关于使用高阶矩匹配通过Gamma分布逼近广义k分布

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Composite fading takes place in several communication channels due to the random variations of the local average power of the received multipath-faded signal. The generalized-K (gamma-gamma) probability density function (PDF) has been proposed recently to model composite fading in wireless channels. However, further derivations using the generalized-K PDF have shown to be quite involved due to the computational and analytical difficulties associated with the arising special functions. In this paper, the approximation of the generalized-K PDF by a gamma PDF using the moment matching method is explored. As expected, matching positive and negative moments leads to a better approximation in the upper and lower tail regions, respectively. However, due to arising limitations for small values of the multipath fading and shadowing parameters, and the higher level of accuracy sought, the use of an adjustable form for the expressions of the approximating gamma PDF parameters, obtained by matching the first two positive moments, is devised. The optimal values of the adjustment factor for different integer and non-integer values of the fading and shadowing parameters are given. The introduced approximation may simplify performance analysis in distributed antenna systems (DASs), network MIMO, multihop relay networks, radar, and sonar systems.
机译:由于接收到的多径衰落信号的局部平均功率的随机变化,复合衰落在几个通信通道中进行。最近已经提出了广义-K(伽马及常规)概率密度函数(PDF)以在无线通道中建模复合衰落。然而,由于与产生的特殊功能相关的计算和分析困难,使用广义-K PDF的进一步推导已经非常涉及。本文探讨了使用当机匹配方法伽马PDF通过伽马PDF近似的近似。正如预期的那样,匹配正极和负片,分别导致上下尾部和下尾部的更好近似。然而,由于多径衰落和遮蔽参数的小值的局限性,并且所寻求的更高的精度级别,通过匹配前两个正时刻获得的近似伽马PDF参数的表达式的使用。设计了。给出了不同整数的调整因子的最佳值和衰落和阴影参数的非整数值。引入的近似可以简化分布式天线系统(DASS),网络MIMO,多跳转网络,雷达和声纳系统中的性能分析。

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