A Channel Statistic Based Power Allocation in a Butterfly Wireless Network with Network Coding

Ao Zhan, Chen He, Ling-ge Jiang
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引用次数: 8

Abstract

An amplified-and-forward network coded protocol (ANCP) is proved to achieve excellent network performance [6]. In this paper, we first drive the closed-form expression of the system outage probability in the high SNR regime, based on ANCP protocol in a classical butterfly wireless network. However the complex expression is a bottleneck of developing power allocation. Then we approximate the expression with a simplified version and propose power allocation strategies with a closed form, only requiring statistical channel state information (CSI). Finally, it is shown that the closed-form expression almost overlap the curve of the system outage probability by Monte Carlo simulation in the high SNR regime and the simplified version is very close to the simulation curve. Moreover, it is validated that the proposed power allocation strategies achieve a large signal-noise ratio (SNR) gain over the system without power allocation strategies.
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基于信道统计的网络编码蝴蝶无线网络功率分配
一种放大转发网络编码协议(ANCP)被证明具有优异的网络性能[6]。本文首先推导了基于ANCP协议的经典蝶形无线网络高信噪比下系统中断概率的封闭表达式。然而,复杂的表达式是电力分配发展的瓶颈。然后我们用一个简化的近似表达式,提出一个封闭形式的功率分配策略,只需要统计信道状态信息(CSI)。最后,通过蒙特卡罗仿真表明,在高信噪比条件下,封闭形式的表达式与系统中断概率曲线几乎重合,简化形式的表达式与仿真曲线非常接近。此外,验证了所提出的功率分配策略比没有功率分配策略的系统获得更大的信噪比增益。
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