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Distributed sparse signal estimation in sensor networks using H-consensus filtering

机译:H -共识滤波在传感器网络中的分布式稀疏信号估计

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摘要

This paper is concerned with the sparse signal recovery problem in sensor networks, and the main purpose is to design a filter for each sensor node to estimate a sparse signal sequence using the measurements distributed over the whole network. A so-called ℓ-regularized H filter is established at first by introducing a pseudo-measurement equation, and the necessary and sufficient condition for existence of this filter is derived by means of Krein space Kalman filtering. By embedding a high-pass consensus filter into ℓ-regularized H filter in information form, a distributed filtering algorithm is developed, which ensures that all node filters can reach a consensus on the estimates of sparse signals asymptotically and satisfy the prescribed H performance constraint. Finally, a numerical example is provided to demonstrate effectiveness and applicability of the proposed method.
机译:本文关注传感器网络中的稀疏信号恢复问题,其主要目的是为每个传感器节点设计一个滤波器,以使用分布在整个网络中的测量值来估计稀疏信号序列。首先通过引入伪测量方程建立所谓的ℓ正则化H滤波器,然后借助Kerin空间Kalman滤波得出存在该滤波器的充要条件。通过将高通共识滤波器以信息形式嵌入到ℓ正则化H滤波器中,开发了一种分布式滤波算法,该算法确保所有节点滤波器都能渐近地对稀疏信号的估计达成共识并满足规定的H性能约束。最后,通过数值算例验证了所提方法的有效性和适用性。

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