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ADAPTIVE MULTIPLE MODEL FILTER USING IMM AND STF
作者姓名:LIANG Yan  PAN Quan
作者单位:Dept. of Automatic Control, Northwestern Polytechnic University, Xi′an 710072, China,Dept. of Automatic Control, Tsinghua University, Beijing 100084, China
基金项目:中国科学院资助项目,69772031,
摘    要:Consider a discrete- time stochastic hybridsystem  x( k 1 ) =f( k, ( k) ,x( k) ,m( k 1 ) ) ζ( k,m( k 1 ) ) q( k) ( 1 )  z( k 1 ) =h( k 1 ,x( k 1 ) ,m( k 1 ) ) v( k 1 ,m( k 1 ) ) ( 2 )where state x∈ Rn;measurement z∈ Rm;input∈ Rp;modeling noise q( k)∈ Rqis a zero- mean,Gaussian white noise with covariance Q( k) ;measurement noise v( k 1 )∈ Rm is also a zero-mean,Gaussian white noise with covariance R( k 1 ) ;q( k) and v( k) are statistically indepen-dent. Th…

关 键 词:tracking  maneuvering  targets  interacting  multiple  model  adaptive  filtering  Kalman  filtering  strong  tracking  filter

ADAPTIVE MULTIPLE MODEL FILTER USING IMM AND STF
LIANG Yan,PAN Quan.ADAPTIVE MULTIPLE MODEL FILTER USING IMM AND STF[J].Chinese Journal of Aeronautics,2000,13(3):167-171.
Authors:LIANG Yan  PAN Quan  ZHOU Dong-hua  ZHANG Hong-cai
Abstract:In fault identification, the Strong Tracking Filter (STF) has strong ability to track the change of some parameters by whitening filtering innovation. In this paper, the authors give out a modified STF by searching the fading factor based on the Least-Squared Estimation. In hybrid estimation, the well-known Interacting Multiple Model (IMM) Technique can model the change of the system modes. So one can design a new adaptive filter - SIMM. In this filter, our modified STF is a parameter-adaptive part and IMM is a mode-adaptive part. The benefit of the new filter is that the number of models can be reduced considerably. The simulations show that SIMM greatly improves accuracy of velocity and acceleration compared with the standard IMM to track the maneuvering target when 2 model-conditional estimators are used in both filters. And the computation burden of SIMM increases only 6% compared with IMM.
Keywords:tracking maneuvering targets  interacting multiple model  adaptive filtering  Kalman filtering  strong tracking filter
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