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Stochastic Event-triggered Variational Bayesian Filtering (2206.06784v1)
Published 14 Jun 2022 in eess.SP, cs.SY, and eess.SY
Abstract: This paper proposes an event-triggered variational Bayesian filter for remote state estimation with unknown and time-varying noise covariances. After presetting multiple nominal process noise covariances and an initial measurement noise covariance, a variational Bayesian method and a fixed-point iteration method are utilized to jointly estimate the posterior state vector and the unknown noise covariances under a stochastic event-triggered mechanism. The proposed algorithm ensures low communication loads and excellent estimation performances for a wide range of unknown noise covariances. Finally, the performance of the proposed algorithm is demonstrated by tracking simulations of a vehicle.
- Xiaoxu Lv (1 paper)
- Peihu Duan (14 papers)
- Zhisheng Duan (39 papers)
- Guanrong Chen (135 papers)
- Ling Shi (120 papers)