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首页> 外文期刊>Wireless Communications, IEEE Transactions on >Optimum/sub-optimum detectors for multi-branch dual-hop amplify-and-forward cooperative diversity networks with limited CSI
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Optimum/sub-optimum detectors for multi-branch dual-hop amplify-and-forward cooperative diversity networks with limited CSI

机译:CSI受限的多分支双跳放大转发协作分集网络的最佳/次最佳检测器

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摘要

We study the optimum maximum-likelihood (ML) detection and sub-optimum detection for a multi-branch dualhop cooperative diversity network with limited channel state information (CSI). Compared to the full CSI strategy, the signalling overhead at each relay involved with the limited CSI is reduced by 50%. We derive optimum ML detection with the limited CSI, which involves numerical integral evaluations. We also propose two closed-form sub-optimum detection rules of low complexity. It is shown that the first sub-optimum detection has almost identical performance to the optimum ML detection when Gaussianity in the added noise dominates, and the second sub-optimum detection has almost identical performance to the optimum ML detection when non-Gaussianity dominates. Finally, we propose a hybrid sub-optimum detection and demonstrate that its performance is almost identical to that of the optimum ML detection for general cases.
机译:我们研究了有限信道状态信息(CSI)的多分支双跳合作分集网络的最优最大似然(ML)检测和次最优检测。与完全CSI策略相比,与受限CSI关联的每个中继的信令开销减少了50%。我们通过有限的CSI推导了最佳的ML检测,其中涉及数值积分评估。我们还提出了两个低复杂度的闭式次优检测规则。结果表明,当加性噪声中的高斯性占优势时,第一子最优检测的性能与最优ML检测几乎相同;当非高斯性占优时,第二子最优检测的性能与最优ML检测几乎相同。最后,我们提出了一种混合次优检测方法,并证明了其性能与一般情况下的最佳ML检测性能几乎相同。

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