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Self-tuning measurement fusion Kalman predictors and their convergence analysis

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  • ChenJian Ran
  • ZiLi Deng

Abstract

For multisensor systems with unknown parameters and noise variances, three self-tuning measurement fusion Kalman predictors based on the information matrix equation are presented by substituting the online estimators of unknown parameters and noise variances into the optimal measurement fusion steady-state Kalman predictors. By the dynamic variance error system analysis method, the convergence of the self-tuning information matrix equation is proved. Further, it is proved by the dynamic error system analysis method that the proposed self-tuning measurement fusion Kalman predictors converge to the optimal measurement fusion steady-state Kalman predictors in a realisation, so they have asymptotical global optimality. Compared with the centralised measurement fusion Kalman predictors based on the Riccati equation, they can significantly reduce the computational burden. A simulation example applied to signal processing shows their effectiveness.

Suggested Citation

  • ChenJian Ran & ZiLi Deng, 2011. "Self-tuning measurement fusion Kalman predictors and their convergence analysis," International Journal of Systems Science, Taylor & Francis Journals, vol. 42(10), pages 1697-1708.
  • Handle: RePEc:taf:tsysxx:v:42:y:2011:i:10:p:1697-1708
    DOI: 10.1080/00207721003646223
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