Litcius/Paper detail

Event-Triggered Reduced-Order Filtering for Continuous Semi-Markov Jump Systems With Imperfect Measurements

Huiyan Zhang, Hao Sun, Xuan Qiu, Rongni Yang, Shuoyu Wang, Ramesh K. Agarwal

2024IEEE Transactions on Cybernetics12 citationsDOI

Abstract

This article conducts the issue of event-triggered reduced-order filtering for continuous-time semi-Markov jump systems with imperfect measurements as well as randomly occurring uncertainties (ROUs). Specifically, the sojourn-time-dependent transition probability matrix (TPM) is presumed to be polytopic and a quantizer is introduced to quantize output signals aiming to reflect the reality. Both ROUs and sensor failures are generated by individual random variables belonging to be mutually independent Bernoulli-distributed white sequences. First, sufficient conditions for the existence of the event-triggered reduced-order filter are obtained by utilizing the dissipativity-based technique to ensure the asymptotical stability with a strictly dissipative performance of the filtering error system. The time-varying TPM is then fractionalized, which enhances the results as stated. Furthermore, the required reduced-order filter parameters are obtained by introducing slack symmetric matrix as well as cone complementarity linearization algorithm. The effectiveness of the suggested event-triggered reduced-order filter design method is shown through simulation results.

Topics & Concepts

ImperfectJumpEvent (particle physics)Markov chainOrder (exchange)Control theory (sociology)Computer scienceMathematicsStatistical physicsStatisticsArtificial intelligenceEconomicsPhysicsFinanceQuantum mechanicsPhilosophyControl (management)LinguisticsFault Detection and Control SystemsDistributed Sensor Networks and Detection AlgorithmsTarget Tracking and Data Fusion in Sensor Networks