Event-triggered distributed Bayes filter
The aim of this paper is to devise a strategy that is able to reduce communication bandwidth and, consequently, energy consumption in the context of distributed state estimation over a peer-to-peer sensor network. Specifically, a distributed Bayes filter with event-triggered communication is develop...
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Zusammenfassung: | The aim of this paper is to devise a strategy that is able to reduce
communication bandwidth and, consequently, energy consumption in the context of
distributed state estimation over a peer-to-peer sensor network. Specifically,
a distributed Bayes filter with event-triggered communication is developed by
enforcing each node to transmit its local information to the neighbors only
when the Kullback-Leibler divergence between the current local posterior and
the one predictable from the last transmission exceeds a preset threshold. The
stability of the proposed eventtriggered distributed Bayes filter is proved in
the linear-Gaussian (Kalman filter) case. The performance of the proposed
algorithm is also evaluated through simulation experiments concerning a target
tracking application. |
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DOI: | 10.48550/arxiv.1902.09825 |