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Joint distributed parameter and channel estimation in wireless sensor networks via variational inference

机译:无线传感器网络中基于变分推断的联合分布参数和信道估计

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Wireless sensor networks (WSNs) have emerged as a viable candidate for a variety of applications including military surveillance, target tracking, process monitoring, etc. A central problem in WSN is the estimation of a source parameter through a network of distributed sensors. In this work, assuming an orthogonal access channel between the sensors and the fusion center (FC), the problem of joint distributed estimation of a source parameter and channel coefficients is considered. In order to ease the complexity involved in a direct maximization of the joint posterior density, a simpler suboptimal approach is proposed using the theory of variational inference, whereby an auxiliary distribution is obtained yielding minimum Kullback-Liebler (KL) divergence with the true posterior. This results in an iterative estimation algorithm that alternates between updating the channel coefficient vector distribution and the source parameter distribution. The iterative algorithm results in a non-increasing KL divergence at each iteration, and hence, converges in divergence. The algorithm is also particularized for the case when the sensors collect noiseless observations of the source parameter. The performance of the proposed algorithm is evaluated using numerical simulations.
机译:无线传感器网络(WSN)已成为包括军事监视,目标跟踪,过程监视等在内的各种应用的可行候选者。WSN的主要问题是通过分布式传感器网络估算源参数。在这项工作中,假设传感器和融合中心(FC)之间存在正交访问通道,则要考虑源参数和通道系数的联合分布估计问题。为了减轻直接使关节后部密度最大化所涉及的复杂性,使用变分推论提出了一种更简单的次优方法,从而获得了辅助分布,从而产生了具有真实后验的最小Kullback-Liebler(KL)发散。这导致迭代估计算法,该算法在更新信道系数矢量分布和源参数分布之间交替。迭代算法在每次迭代中导致KL散度不增加,因此收敛于散度。对于传感器收集源参数的无噪声观测值的情况,该算法也特别适用。使用数值模拟评估了所提出算法的性能。

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