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Distributed Energy Efficiency Optimization for Multi-User Cognitive Radio Networks Over MIMO Interference Channels: A Non-Cooperative Game Approach

机译:用于MIMO干扰通道的多用户认知无线电网络的分布式能效优化:非合作游戏方法

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摘要

Energy efficiency (EE) optimization is investigated for a multi-user cognitive radio network (CRN) over multiple-input-multiple-output (MIMO) interference channels (ICs). To reduce the system overhead due to information exchange among the secondary CR uses (SUs), the EE optimization problem is formulated as a non-cooperative game, where each SU transmitter competes against the other SU pairs by optimizing its transmit covariance matrix. Specifically, each multi-antenna SU maximizes locally its energy efficiency in terms of the number of bits transmitted per unit energy consumption, subject to the per-SU transmit power constraint and the primary user (PU) perceived total interference constraint. It is proved that the formulated non-cooperative game admits at least one Nash equilibrium (NE), and the sufficient condition for a unique NE is derived subsequently. Primal decomposition is employed in the local EE optimization problem to relax the coupling PU perceived interference constraint such that fully distributed operation is allowed. A distributed iterative EE optimization algorithm (DIEEOA) is then proposed to obtain the unique NE, which is shown to converge to the global optimum. Linear precoding techniques are employed to mitigate the impacts of multi-user interference and imperfect channel state information (CSI). Through numerical simulations, effectiveness of the proposed scheme is validated and the system setting parameters' impacts on the performance are studied.
机译:在多输入多输出(MIMO)干扰通道(IC)上对多用户认知无线电网络(CRN)进行了能量效率(EE)优化。为了减少由于次要CR的信息交换(SUS)之间的信息交换而减少系统开销,EE优化问题被制定为非协作游戏,其中每个SU发射机通过优化其发送协方差矩阵来竞争其他SU对。具体地,每个多天线SU根据每单位能量消耗传输的比特数来最大化本地的能量效率,其受到每个SU发射功率约束和主用户(PU)感知总干扰约束。事实证明,配制的非合作游戏允许至少一种腹部均衡(NE),随后衍生出独特NE的充分条件。原始分解在本地EE优化问题中采用,以放宽耦合PU感知的干扰约束,使得允许完全分布的操作。然后提出了一种分布式迭代EE优化算法(DieEoA)以获得唯一NE,其被示出为汇聚到全局最优。采用线性预编码技术来减轻多用户干扰和不完美信道状态信息(CSI)的影响。通过数值模拟,验证了所提出的方案的有效性,并研究了系统设置参数对性能的影响。

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