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Distributed estimation in sensor networks with imperfect model information: An adaptive learning-based approach

机译:具有不完善模型信息的传感器网络中的分布式估计:一种基于自适应学习的方法

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The paper considers the problem of distributed estimation of an unknown deterministic scalar parameter (the target signal) in wireless sensor networks (WSNs), in which each sensor receives a single snapshot of the field. The observation or sensing mode is only partially known at the corresponding nodes, perhaps, due to their limited sensing capabilities or other unpredictable physical factors. Specifically, it is assumed that the observation process at a node switches stochastically between two modes, with mode one corresponding to the desired signal plus noise observation mode (a valid observation), and mode two corresponding to pure noise with no signal information (an invalid observation). With no prior information on the local sensing modes (valid or invalid), the paper introduces a learning-based distributed estimation procedure, the mixed detection-estimation (MDE) algorithm, based on closed-loop interactions between the iterative distributed mode learning and estimation. The online learning (or sensing mode detection) step re-assesses the validity of the local observations at each iteration, thus refining the ongoing estimation update process. The convergence of the MDE algorithm is established analytically. Simulation studies show that, in the high signal-to-noise ratio (SNR) regime, the MDE estimation error converges to that of an ideal (centralized) estimator with perfect information about the node sensing modes. This is in contrast with the estimation performance of a naive average consensus based distributed estimator (with no mode learning), whose estimation error blows up with an increasing SNR.
机译:本文考虑了无线传感器网络(WSN)中未知确定性标量参数(目标信号)的分布式估计问题,其中每个传感器都接收该字段的单个快照。可能由于其有限的感测能力或其他不可预测的物理因素,在相应的节点仅部分了解观测或感测模式。具体而言,假设节点处的观察过程在两种模式之间随机切换,其中一种模式对应于所需信号加噪声观察模式(有效观察),而第二种模式对应于无信号信息的纯噪声(无效观察)。在没有关于局部感应模式(有效或无效)的先验信息的情况下,本文基于迭代分布式模式学习与估计之间的闭环交互作用,引入了一种基于学习的分布式估计程序,即混合检测估计(MDE)算法。 。在线学习(或感测模式检测)步骤在每次迭代时重新评估局部观测的有效性,从而完善了进行中的估计更新过程。通过分析确定了MDE算法的收敛性。仿真研究表明,在高信噪比(SNR)的情况下,MDE估计误差会收敛到理想(集中)估计器的误差,该估计器具有关于节点感应模式的完美信息。这与基于天真的平均共识的分布式估计器(不进行模式学习)的估计性能相反,后者的估计误差随着SNR的提高而增大。

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