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A Gauss-Seidel approach to precoding design for joint transmission of distributed correlated sources

机译:分布式相关源联合传输的高斯-赛德尔预编码设计方法

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We consider the problem of transmitting multiple spatially distributed correlated sources to a common destination (e.g. a fusion center or an access point) in wireless sensor networks (WSNs). The correlated data from multiple sensors are jointly transmitted to the destination via orthogonal channels. We assume that the channel between each sensor and the receiver is multiple-input multiple-output (MIMO), with each sensor and the receiver equipped with multiple transmit/receive antennas. In this framework, we study the problem of joint design of linear precoders for all sensors by assuming the knowledge of the instantaneous channel state information (CSI), with the objective of maximizing the mutual information between the sources and the destination. We propose a Gauss-Seidel iterative approach which successively optimizes the precoding matrix associated with each sensor, while fixing the other precoding matrices. Numerical results show that the proposed algorithm that takes into account the spatial correlations across sensors can achieve higher capacity than conventional methods that neglect the spatial correlations.
机译:我们考虑了在无线传感器网络(WSN)中将多个空间分布的相关源传输到公共目的地(例如,融合中心或接入点)的问题。来自多个传感器的相关数据通过正交通道共同传输到目的地。我们假设每个传感器和接收器之间的信道是多输入多输出(MIMO),并且每个传感器和接收器都配备有多个发射/接收天线。在此框架中,我们通过假设瞬时信道状态信息(CSI)的知识来研究所有传感器的线性预编码器的联合设计问题,目的是最大化源和目标之间的互信息。我们提出了一种Gauss-Seidel迭代方法,该方法可以连续优化与每个传感器关联的预编码矩阵,同时固定其他预编码矩阵。数值结果表明,与忽略空间相关性的传统方法相比,该算法考虑了传感器之间的空间相关性,可以实现更高的容量。

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