Distributed fusion receding horizon filtering for uncertain linear stochastic systems with time-delay sensors
- Abstract
- A new distributed fusion receding horizon filtering problem is investigated for uncertain linear stochastic systems with time-delay sensors. First, we construct a local receding horizon Kalman filter having time delays (LRHKFTDs) in both the system and measurement models. The key technique is the derivation of recursive error cross-covariance equations between LRHKFTDs in order to compute the optimal matrix fusion weights. It is the first time to present distributed fusion receding horizon filter for linear discrete-time systems with delayed sensors. It has a parallel structure that enables processing of multisensory time-delay measurements, so the calculation burden can be reduced and it is more reliable than the centralized version if some sensors turn faulty. Simulations for a multiple time-delays system show the effectiveness of the proposed filter in comparison with centralized receding horizon filter and non-receding versions. © 2011 The Franklin Institute.
- Author(s)
- Song, Il Young; Shin, Vladimir; Jeon, Moongu
- Issued Date
- 2012-04
- Type
- Article
- DOI
- 10.1016/j.jfranklin.2011.10.022
- URI
- https://scholar.gist.ac.kr/handle/local/15970
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