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An approximate statistical analysis of wireless channel over α-μ shadowed fading channel

机译:α-μ阴影衰落通道的无线通道近似统计分析

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摘要

In this work, we have comprehensively investigated the impact of non-linearity (alpha - mu) and shadowing (inverse gamma) collectively over the wireless channel. To this effect, an approximate closed-form probability density function (PDF) expression is derived over alpha - mu/inverse gamma fading channel by employing Gauss-Laguerre quadrature polynomial. The accuracy of the proposed approximate solution is validated through the Kullback-Leibler divergence test. Subsequently, the proposed solution is utilized in the development of various fundamental statistics like commutative distribution function (CDF), moment generating function (MGF) and nth moment. This contribution also includes the derivation of coding gain and diversity gain to study average symbol error probability (SEP) with MRC and EGC diversity. It is observed that diversity gain is independent of shadowing and as the channel condition improves, the coding gain decreases. Finally, the closed-form solutions of spectral efficiency under different adaptive transmission policies are also developed specifically, optimal power and rate adaptation (OPRA) and effective capacity along with simpler low- and high-power expressions. Monte-Carlo simulations are utilized to validate the proposed analytical and numerical results.
机译:在这项工作中,我们全面地研究了非线性(alpha-mu)和阴影(逆伽马)的影响,在无线信道上统称。为此,通过采用高斯Laguerre正交多项式,通过α - mu /逆伽马衰落信道来源近似闭合概率密度函数(PDF)表达。通过Kullback-Leibler发散测试验证所提出的近似解决方案的准确性。随后,所提出的解决方案用于开发各种基本统计等换向分布函数(CDF),时刻产生函数(MGF)和第n矩。此贡献还包括使用MRC和EGC多样性研究平均符号误差概率(SEP)的编码增益和分集增益的推导。观察到,多样性增益与阴影无关,并且随着信道条件改善,编码增益减小。最后,在不同的自适应传输策略下的频谱效率的闭合形式解决方案也明确地开发了最佳的功率和速率适应(OPRA)和有效容量以及更简单的低功率表达式。利用Monte-Carlo模拟来验证所提出的分析和数值结果。

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