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Massive MIMO for decentralized estimation over coherent multiple access channels

机译:用于分散估计的巨大MIMO,相干多通道频道

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We consider a decentralized multisensor estimation problem where L sensor nodes observe noisy versions of a possibly correlated random source. The sensors amplify and forward their observations over a fading coherent multiple access channel (MAC) to a fusion center (FC). The FC is equipped with a large array of N antennas, and adopts a minimum mean square error (MMSE) approach for estimating the source. We optimize the amplification factor (or equivalently transmission power) at each sensor node in two different scenarios: 1) with the objective of total power minimization subject to mean square error (MSE) of source estimation constraint, and 2) with the objective of minimizing MSE subject to total power constraint. For this purpose, we apply an asymptotic approximation based on the massive multiple-input-multiple-output (MIMO) favorable propagation condition (when L ? N). We use convex optimization techniques to solve for the optimal sensor power allocation in 1) and 2). In 1), we show that the total power consumption at the sensors decays as 1/N, replicating the power savings obtained in Massive MIMO mobile communications literature. Through numerical studies, we also illustrate the superiority of the proposed optimal power allocation methods over uniform power allocation.
机译:我们考虑一个分散的多传感器估计问题,其中L传感器节点观察可能相关的随机源的噪声版本。传感器通过衰落相干的多通道(MAC)向融合中心(FC)进行扩增和转发它们的观察。 FC配备了大量的N个天线,并采用最小均方误差(MMSE)方法来估计源。我们在两个不同场景中的每个传感器节点处优化放大因子(或等效传输功率):1)通过总功率最小化的目的是源估计约束的均方误差(MSE),以及2)的目的是最小化MSE经过总权力约束。为此目的,我们基于大量多输入 - 多输出(MIMO)有利的传播条件(当L≥N时)应用渐近近似。我们使用凸优化技术来解决1)和2的最佳传感器功率分配。在1)中,我们表明传感器的总功耗衰减为1 / n,复制了大规模MIMO移动通信文献中获得的功率节省。通过数值研究,我们还说明了所提出的最佳功率分配方法在均匀功率分配中的优越性。

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