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Learning-Based Distributed Detection-Estimation in Sensor Networks With Unknown Sensor Defects

机译:传感器缺陷未知的传感器网络中基于学习的分布式检测估计

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摘要

The problem of distributed estimation of an unknown deterministic scalar parameter (the target signal) in a wireless sensor network is considered, where each sensor receives a single snapshot of the field. It is assumed that the observation at each node randomly falls into one of two modes: a valid or an invalid observation mode. Specifically, mode one corresponds to the desired signal plus noise observation mode (valid), and mode two corresponds to the pure noise mode (invalid) due to node defect or damage. With no prior information on such local sensing modes, a learning-based distributed procedure is introduced, called the mixed detection-estimation (MDE) algorithm, based on iterative closed-loop interactions between mode learning (detection) and target estimation. The online learning step reassesses 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. Asymptotic analysis shows that, in the high signal-to-noise ratio regime, the MDE estimation error converges to that of an ideal (centralized) estimator with perfect information about the node sensing modes.
机译:考虑了无线传感器网络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。假设每个节点的观察随机地属于以下两种模式之一:有效或无效观察模式。具体地,由于节点缺陷或损坏,模式一对应于期望信号加噪声观察模式(有效),模式二对应于纯噪声模式(无效)。在没有关于这种局部感测模式的先验信息的情况下,基于模式学习(检测)和目标估计之间的迭代闭环交互作用,引入了一种基于学习的分布式过程,称为混合检测估计(MDE)算法。在线学习步骤在每次迭代时都会重新评估局部观测的有效性,从而完善正在进行的估算更新过程。通过分析确定了MDE算法的收敛性。渐近分析表明,在高信噪比条件下,MDE估计误差收敛至理想(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。

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