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Distributed MIMO Network Optimization Based on Duality and Local Message Passing

机译:基于对偶和本地消息传递的分布式MIMO网络优化

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摘要

In a communication network, it is often impractical for each node to learn the global channel knowledge (network connectivity and channel state information of each link). In this paper, we address distributed rate optimization for Time-Division Duplex (TDD) Multiple-Input Multiple-Output (MIMO) networks when part of the local channel knowledge is learned via message passing between each transmitter and its intended receivers. The distributed optimization algorithm is based on a rate duality and the corresponding input covariance matrix transformation between the forward and reverse links of TDD MIMO networks under the assumption of global channel knowledge. Noting that the key information required by the proposed transformation is the interference-plus-noise covariance matrix, we propose a local covariance matrix transformation such that each node can distributedly optimize its input covariance matrix by only exchanging interference-plus-noise covariance matrix locally. It is observed from the simulation that the proposed algorithm achieves a performance close to the one with global channel knowledge and outperforms the existing distributed algorithms.
机译:在通信网络中,让每个节点学习全局信道知识(每个链路的网络连接和信道状态信息)通常是不切实际的。在本文中,当通过每个发送器与其预期接收器之间的消息传递来学习部分本地信道知识时,我们将解决时分双工(TDD)多输入多输出(MIMO)网络的分布式速率优化问题。在全局信道知识的假设下,分布式优化算法基于速率对偶和TDD MIMO网络的前向和反向链路之间相应的输入协方差矩阵变换。注意到所提出的变换所需的关键信息是干扰加噪声协方差矩阵,我们提出了局部协方差矩阵变换,这样每个节点仅通过局部交换干扰加噪声协方差矩阵就可以分布式地优化其输入协方差矩阵。从仿真中可以看出,该算法的性能接近全球信道知识,并且性能优于现有的分布式算法。

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