The optimality for the distributed Kalman filtering fusion with feedback

A rigorous performance analysis is dedicated to the distributed Kalman filtering fusion with feedback for distributed recursive state estimators of dynamic systems. It is shown that the Kalman filtering track fusion formula with feedback is, like the track fusion without feedback, exactly equivalent to the corresponding centralized Kalman filtering formula. Moreover, the so-called P matrices in the feedback Kalman filtering at both local trackers and fusion center are still the covariance matrices of tracking errors. Although the feedback here cannot improve the performance at the fusion center, the feedback does reduce the covariance of each local tracking error. The above results can be extended to a hybrid track fusion with feedback received by a part of the local trackers.

[1]  Yaakov Bar-Shalom,et al.  Multitarget-Multisensor Tracking , 1995 .

[2]  Lennart Ljung,et al.  System Identification: Theory for the User , 1987 .

[3]  R. Lobbia,et al.  Data fusion of decentralized local tracker outputs , 1994 .

[4]  Kuo-Chu Chang,et al.  Tracking Multiple Air Tragets with Distributed Acoustic Sensors , 1987, 1987 American Control Conference.

[5]  Chee-Yee Chong,et al.  Distributed Tracking in Distributed Sensor Networks , 1986 .

[6]  Ali T. Alouani,et al.  On optimal synchronous and asynchronous track fusion , 1998 .

[7]  Yaakov Bar-Shalom,et al.  Multitarget-multisensor tracking: Advanced applications , 1989 .

[8]  S. Grime,et al.  Communication in Decentralized Data-Fusion Systems , 1992 .

[9]  Sumit Roy,et al.  Decentralized structures for parallel Kalman filtering , 1988 .

[10]  Yunmin Zhu,et al.  Unified optimal linear estimation fusion. I. Unified models and fusion rules , 2000, Proceedings of the Third International Conference on Information Fusion.

[11]  Keshu Zhang,et al.  Best Linear Unbiased Estimation Fusion with Constraints , 2003 .

[12]  Yunmin Zhu,et al.  Efficient recursive state estimator for dynamic systems without knowledge of noise covariances , 1999 .

[13]  S. Haykin,et al.  Adaptive Filter Theory , 1986 .

[14]  Yakov Bar-Shalom,et al.  Multitarget-Multisensor Tracking: Principles and Techniques , 1995 .

[15]  Keshu Zhang,et al.  Track fusion of distributed EFRLS state estimators , 2000, Proceedings of the Third International Conference on Information Fusion.

[16]  H.F. Durrant-Whyte,et al.  General decentralized Kalman filters , 1994, Proceedings of 1994 American Control Conference - ACC '94.

[17]  Hugh F. Durrant-Whyte,et al.  New approach to simultaneous localization and dynamic map building , 1996, Defense, Security, and Sensing.