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Distributed consensus-based estimation considering network induced delays and dropouts. (English) Zbl 1271.93150

Summary: This paper’s aim is to present a novel distributed estimation technique for linear time-invariant systems with network-induced delays and packet dropouts. The methodology is based on local Luenberger-like observers in combination with consensus strategies. Only neighbors are allowed to communicate and the observer design contemplates the possibility of sharing only a subset of the estimates. The design problem is solved via linear matrix inequalities and an asymptotic stability proof is provided.

MSC:

93E10 Estimation and detection in stochastic control theory
93A14 Decentralized systems
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References:

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