认知无线网络中Sigmoid功率控制博弈算法的加速改进

Y. Al-Gumaei, K. Noordin, Ali Mohammed Mansoor, K. Dimyati
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引用次数: 2

摘要

在认知无线电网络中,每个认知无线电CR信号对共享同一频谱的其他用户代表一个干扰源。认知设备的干扰量应低于干扰温度和电池电量,这是需要有效的功率控制算法的关键问题。这些算法旨在达到两个目标:实现服务质量(QoS)和增加系统容量。CRN中的功率控制问题显然适合作为一个非合作博弈来表述,其中CRN选择在信干扰比(SIR)误差和功率使用之间取得平衡。我们利用基于s型函数的静态纳什博弈公式,反常地考虑了功率控制问题。该对策的解得到一个非线性代数s型方程组。本文提出了一种基于牛顿迭代的分布式功率控制对策来解决收敛速度慢的问题。在一个小型实用的认知无线电系统上进行了仿真,验证了改进算法的有效性。结果表明,基于牛顿迭代的开发算法与传统不动点算法相比,迭代次数最多可减少58%。
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Acceleration Improvement of a Sigmoid Power Control Game Algorithm in Cognitive Radio Networks
In cognitive radio networks, each cognitive radio CR's signal represent a source of interference to other users that sharing the same spectrum. Amount of interference that should be below the interference temperature and battery power of cognitive devices are the critical issues that require an efficient power control algorithms. These algorithms aimed to attain two objectives: achieve the quality of service (QoS) and increase the system capacity. The power control problem in CRN is obviously suitable to formulation as a non-cooperative game in which CRs choose to the balance between signal-to interference ratio (SIR) error and power usage. We considered perversely the problem of power control by using the static Nash game formulation based on a sigmoid function. The solution obtained from proposed game led to a system of nonlinear algebraic sigmoid equations. In this paper, we present the distributed power control game using Newton iterations to solve the slow of convergence problem. The effectiveness result of the new improved algorithm is demonstrated in simulation on a small and pragmatic cognitive radio system. The results indicates that the new development algorithm based on Newton iteration can reduce the number of iterations up to 58% comparing with traditional fixed point algorithm.
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