An Optimal Adaptive Kalman Filter

被引:9
作者
Yuanxi Yang
Weiguang Gao
机构
[1] Xi’an Research Institute of Surveying and Mapping,
来源
Journal of Geodesy | 2006年 / 80卷
关键词
Optimal adaptive filtering; Optimal adaptive factor; Predicted residual vector; Predicted state vector; Estimated covariance matrix; Navigation;
D O I
暂无
中图分类号
学科分类号
摘要
In a robustly adaptive Kalman filter, the key problem is to construct an adaptive factor to balance the contributions of the kinematic model information and the measurements on the state vector estimates, and the corresponding learning statistic for identifying the kinematic model biases. What we pursue in this paper are some optimal adaptive factors under the particular conditions that the state vector can or cannot be estimated by measurements. Two optimal adaptive factors are derived, one of which is deduced by requiring that the estimated covariance matrix of the predicted residual vector equals the corresponding theoretical one. The other is obtained by requiring that the estimated covariance matrix of the predicted state vector equals its theoretical one. The two related optimal adaptive factors are given. These are analyzed and compared in theory and in an actual example. This shows, through the actual computations, that the filtering results obtained by optimal adaptive factors are superior to those obtained by adaptive factors based on experience.
引用
收藏
页码:177 / 183
页数:6
相关论文
共 25 条
[1]  
Hekimoğlu S(2003)Effectiveness of robust methods in heterogeneous linear models J Geod 76 706-713
[2]  
Berber M(1998)Robust Kalman filter for rank deficient observation models J Geod 72 436-441
[3]  
Koch KR(1977)Robust Bayesian estimation for the linear model and robustifying the Kalman filter IEEE Trans Automat Control AC-22 361-371
[4]  
Yang Y(1999)Adaptive Kalman filtering for INS/GPS J Geod 73 193-203
[5]  
Masreliez CJ(1989)A comparison of GPS kinematic models for determination of position and velocity along a trajectory Manuscripta geodaetica 14 345-353
[6]  
Martin RD(1990)Quality control in navigation systems IEEE Aerosp Electron Syst Mag 5 35-41
[7]  
Mohamed AH(1983)An adaptive robustifying approach to Kalman filtering Automatica 19 279-288
[8]  
Schwarz K-P(2000)Improved sage adaptive filtering Sci Surv Mapp 25 22-25
[9]  
Schwarz KP(1991)Robust Bayesian estimation Bull Géodésique 65 145-150
[10]  
Cannon ME(1997)Robust Kalman filter for dynamic systems J Zhengzhou Inst Surv Mapp 14 79-84