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Optimal relay functionality for SNR maximization in memoryless relay networks

机译:在无记忆中继网络中实现SNR最大化的最佳中继功能

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We explore the SNR-optimal relay functionality in a mernoryless relay network, i.e. a network where, during each channel use, the signal transmitted by a relay depends only on the last received symbol at that relay. We develop a generalized notion of SNR for the class of memoryless relay functions. The solution to the generalized SNR optimization problem leads to the novel concept of minimum mean squared uncorrelated error (MMSUE) estimation. For the elemental case of a single relay, we show that MMSUE estimate is a scaled version of the MMSE estimate. This scheme, that we call estimate and forward (EF), performs better than the best of amplify and forward (AF) and demodulate and forward (DF) in both parallel and serial relay networks. We determine that AF is near-optimal at low transmit power in a parallel network, while DF is near-optimal at high transmit power in a serial network. For hybrid networks that contain both serial and parallel elements, the advantage of EF over the best of AF and DF is found to be significant. Error probabilities are provided to substantiate the performance gain obtained through SNR optimality. We also show that, for Gaussian inputs, AF, DF and EF are identical
机译:我们探索了无记忆中继网络中的SNR最佳中继功能,即在每个信道使用期间,中继器传输的信号仅取决于该中继器最后接收到的符号的网络。我们为无记忆中继功能的类别开发了SNR的广义概念。广义SNR优化问题的解决方案带来了最小均方不相关误差(MMSUE)估计的新颖概念。对于单个中继的基本情况,我们表明MMSUE估计是MMSE估计的缩放版本。在并行和串行中继网络中,我们称这种方案为估计转发(EF),其性能优于放大转发(AF)和解调转发(DF)的最佳效果。我们确定在并行网络中,AF在低发射功率下接近最佳,而DF在串行网络中在高发射功率下接近最佳。对于既包含串行元素又包含并行元素的混合网络,发现EF优于AF和DF的优势。提供了误差概率,以证实通过SNR最优性获得的性能增益。我们还表明,对于高斯输入,AF,DF和EF相同

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