Resilient filtering for time-varying stochastic coupling networks under the event-triggering scheduling

The resilient filtering problem is considered for a class of time-varying networks with stochastic coupling strengths. An event-triggered strategy is adopted to save the network resources by scheduling the signal transmission from the sensors to the filters based on certain prescribed rules. Moreove...

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Bibliographic Details
Published inInternational journal of general systems Vol. 47; no. 5; pp. 491 - 505
Main Authors Wang, Fan, Liang, Jinling, Dobaie, Abdullah M.
Format Journal Article
LanguageEnglish
Published Abingdon Taylor & Francis LLC 04.07.2018
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Summary:The resilient filtering problem is considered for a class of time-varying networks with stochastic coupling strengths. An event-triggered strategy is adopted to save the network resources by scheduling the signal transmission from the sensors to the filters based on certain prescribed rules. Moreover, the filter parameters to be designed are subject to gain perturbations. The primary aim of the addressed problem is to determine a resilient filter that ensures an acceptable filtering performance for the considered network with event-triggering scheduling. To handle such an issue, an upper bound on the estimation error variance is established for each node according to the stochastic analysis. Subsequently, the resilient filter is designed by locally minimizing the derived upper bound at each iteration. Moreover, rigorous analysis shows the monotonicity of the minimal upper bound regarding the triggering threshold. Finally, a simulation example is presented to show effectiveness of the established filter scheme.
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content type line 14
ISSN:0308-1079
1563-5104
DOI:10.1080/03081079.2018.1455193