基于非正交自动对焦中继的认知网络最优功率分配

Mahmoud Elsaadany
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引用次数: 7

摘要

底层认知网络作为解决无线频谱拥塞的一种可行的解决方案正在得到推广。利用一些节点作为中继,这种网络的吞吐量通过协作增益得到提高。在本文中,我们通过优化非正交放大转发中继的功率分配来解决底层认知网络吞吐量最大化的问题。为了在主网络中保持稳定的通信,所有认知节点的活动所造成的干扰都被控制在一定的限度以下。将最优功率分配问题转化为二次约束问题(QCQP)。认知网络的最大吞吐量推导为信道依赖矩阵的特征解,相应的信噪比(SNR)被证明是该矩阵的主导特征值。该功率分配方案比等功率分配方案和机会中继选择方案的吞吐量有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal power allocation in cognitive networks using non-orthogonal AF relays
Underlay cognitive networks are being promoted as an implementable solution for the congestion in the wireless spectrum. With some nodes employed as relays, the throughput of such networks is enhanced through cooperative gains. In this paper, we address the problem of maximizing the throughput of an underlay cognitive network through optimal power allocation of non-orthogonal amplify-and-forward relays. In order to maintain stable communication at the primary network, the interference due to the activities of all the cognitive nodes is kept below a limit. The optimal power allocation problem is formulated and then transformed to a quadratically constrained quadratic problem (QCQP). The maximum throughput of the cognitive network is derived as an eigen-solution of a channel-dependent matrix and the corresponding signal-to-noise ratio (SNR) is shown to be the dominant eigenvalue of this matrix. The proposed power allocation achieves significant throughput improvement over equal power allocation scheme and opportunistic relay selection scheme.
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