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Channel capacity maximization in MIMO-SDMA based cognitive networks

机译:基于MIMO-SDMA的认知网络中的信道容量最大化

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This paper proposes an adaptive multi-user Multiple Input Multiple Output (MIMO)-Space Division Multiplexing Access (SDMA) technique for uplink access in broadband wireless cognitive networks with multiple primary users (PUs) and secondary users (SUs) sharing the same spectrum. The proposed algorithm uses gradient search of the channel capacity to seek, iteratively, the optimal transmit weight vectors that maximize the MIMO channel capacity for each cognitive user, while controlling the interference levels to the PUs. Simulation results show that the capacity of cognitive MIMO systems using the proposed adaptive MIMO-SDMA algorithm is substantially higher than the one based on conventional approaches such as eigen-beamforming. On the other hand, it is shown that stronger interference power constraint has a considerable impact on the channel capacity.
机译:本文提出了一种自适应多用户多输入多输出(MIMO)-空分多路复用访问(SDMA)技术,用于宽带无线认知网络中具有多个主用户(PU)和次用户(SU)共享同一频谱的上行链路访问。所提出的算法使用信道容量的梯度搜索来迭代地寻找最佳发射权重向量,该向量在控制对PU的干扰电平的同时,最大化每个认知用户的MIMO信道容量。仿真结果表明,使用所提出的自适应MIMO-SDMA算法的认知MIMO系统的容量明显高于基于传统方法(如特征波束形成)的认知MIMO系统。另一方面,表明较强的干扰功率约束对信道容量有相当大的影响。

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