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New sigma point filtering algorithms for nonlinear stochastic systems with correlated noises 被引量:2

New sigma point filtering algorithms for nonlinear stochastic systems with correlated noises
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摘要 New sigma point filtering algorithms,including the unscented Kalman filter(UKF) and the divided difference filter(DDF),are designed to solve the nonlinear filtering problem under the condition of correlated noises.Based on the minimum mean square error estimation theory,the nonlinear optimal predictive and correction recursive formulas under the hypothesis that the input noise is correlated with the measurement noise are derived and can be described in a unified framework.Then,UKF and DDF with correlated noises are proposed on the basis of approximation of the posterior mean and covariance in the unified framework by using unscented transformation and second order Stirling's interpolation.The proposed UKF and DDF with correlated noises break through the limitation that input noise and measurement noise must be assumed to be uncorrelated in standard UKF and DDF.Two simulation examples show the effectiveness and feasibility of new algorithms for dealing with nonlinear filtering issue with correlated noises. New sigma point filtering algorithms, including the unscented Kalman filter (UKF) and the divided difference filter (DDF), are designed to solve the nonlinear filtering problem under the condition of correlated noises. Based on the minimum mean square error estimation theory, the nonlinear optimal predictive and correction recursive formulas under the hypothesis that the input noise is correlated with the measurement noise are derived and can be described in a unified framework. Then, UKF and DDF with correlated noises are proposed on the basis of approximation of the posterior mean and covariance in the unified framework by using unscented transformation and second order Stirling's interpolation. The proposed UKF and DDF with correlated noises break through the limitation that input noise and measurement noise must be assumed to be uneorrelated in standard UKF and DDF. Two simulation examples show the effectiveness and feasibility of new algorithms for dealing with nonlinear filtering issue with correlated noises.
机构地区 College of Automation
出处 《Journal of Central South University》 SCIE EI CAS 2012年第4期1010-1020,共11页 中南大学学报(英文版)
基金 Projects(61135001, 61075029, 61074155) supported by the National Natural Science Foundation of China Project(20110491690) supported by the Postdocteral Science Foundation of China
关键词 非线性随机系统 SIGMA 关联噪声 噪声算法 滤波算法 无迹卡尔曼滤波 非线性滤波 最小均方误差 nonlinear system correlated noise sigma point unscented Kalman filter divided difference filter
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  • 1HO Y C,LEE R C K. A bayesian approach to problems in stochastic estimation and control[J].IEEE Transactions on Automatic Control,1964,(04):333-339.
  • 2SORENSON H W. On the development of practical nonlinear filters[J].Informaiton Sciences,1974,(02):253-270.
  • 3GOBBO D D,NAPOLITANO M,FAMOURI P. INNOCENTI M.Experimental application of extended Kalman filtering for sensor validation[J].IEEE Transactions on Control Systems Technology,2001,(02):376-380.
  • 4JULIER S,UHLMANN J,DURRANT-WHYTE H F. A new method for the nonlinear transformation of means and covariances in filters and estimators[J].IEEE Transactions on Automatic Control,2000,(03):477-482.doi:10.1109/9.847726.
  • 5N(φ)RQAARD M,POULSEN N K,RAVN O. New developments in state estimation for nonlinear systems[J].Automatica,2000,(11):1627-1638.
  • 6ARULAMPALAM M S,MASKELL S,GORDON N,CLAPP T. A tutorial on particle filters for online nonlinear/non-Gaussian Bayesian Tracking[J].IEEE Transactions on Signal Processing,2000,(02):174-188.
  • 7BOUTAYEB M,AUBRY D. A strong tracking extended Kalman observer for nonlinear discrete-time systems[J].IEEE Transactions on Automatic Control,1999,(08):1550-1556.
  • 8van der MERWE R,WAN E A. Sigma-point kalman filters for probabilistic inference in dynamic state-space models[EB/OL].http://www.cse.ogi.edu/~rudmerwe/#research/,2004.
  • 9JULIER S J,UHLMANN J K. Unscented filtering and nonlinear estimation[A].Washington:IEEE Press,2004.401-422.
  • 10N(φ)RQAARD M,POULSEN N K,RAVN O. Advances in derivative-free state estimation for nonlinear systems[D].Lyngby,Copenhagen:Department of Mathematical Modelling,Technical University of Denmark,2000.

同被引文献27

  • 1WOODMAN 0 J. An introduction to inertial navigation[R]. University of Cambridge, Computer Laboratory, Tech. Rep. UCAMCL-TR-696.2007.
  • 2SAVAGE P G. A unified mathematical framework for strapdown algorithm design[J]. Journal of Guidance, Control, and Dynamics. 2006,29(2): 237-249.
  • 3ZHANG Lun-dong, LlAN Jun-xiang, WU Mei-ping, HU Xiao-ping. An improved computation scheme of strapdown inertial navigation system using rotation technique[J]. Journal of Central South University. 2012,19(5): 1258-1266.
  • 4YANG Jie, WU Wen-qi, WU Yuan-xin, LlAN Jun-xiang. An iterative calibration method for nonlinear coefficients of marine triaxial accelerometers[J]. Journal of Central South University. 2013, 20(11): 3103-3115.
  • 5TANG Yong-gang, WU Yuan-xin, WU Mei-ping, WU Wen-qi, HU Xiao-ping, SHEN Lin-cheng. INS/GPS integration: Global observability analysis[J]. IEEE Transactions on Vehicular Technology, 2009, 58(3): 1129-1142.
  • 6CHANG Guo-bin. Robust kalman filtering based on mahalanobis distance as outlier judging criterion[J]. Journal of Geodesy, 2014, 88(4): 391-40l.
  • 7CHANG Guo-bin. Loosely coupled INS/GPS integration with constonlt lever arm using marginal unscented Kalman filter[J]. Journal of Navigation, 2014, 67(3): 419-436.
  • 8van der MERWE R. Sigma-point Kalman filters for probabilistic inference in dynamic state-space models[D]. Portland: Oregon Health & Science University, 2004.
  • 9mLlER S, UHLMANN J, DURRANT-WHYTE H. A new method for the nonlinear transformation of means and covariances in filters and estimators[J]. IEEE Transactions on Automatic Control, 2000, 45(3): 477-482.
  • 10ITO K, XIONG K. Gaussian filters for nonlinear fitering problems[J]. IEEE Transactions on Automatic Control, 2000, 45(5): 910-927.

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