New design of estimators using covariance information with uncertain observations in linear discrete-time systems

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摘要

This paper proposes recursive least-squares (RLS) filtering and fixed-point smoothing algorithms with uncertain observations in linear discrete-time stochastic systems. The estimators require the information of the auto-covariance function in the semi-degenerate kernel form, the variance of white observation noise, the observed value and the probability that the signal exists in the observed value. The auto-covariance function of the signal is factorized in terms of the observation vector, the system matrix and the cross-variance function of the state variable, that generates the signal, with the signal. These quantities are obtained from the auto-covariance data of the signal. It is shown that the semi-degenerate kernel is expressed in terms of these quantities.

论文关键词:Wiener–Hopf equation,Linear discrete-time systems,Recursive estimation,Covariance information,Stochastic process

论文评审过程:Available online 7 March 2002.

论文官网地址:https://doi.org/10.1016/S0096-3003(02)00060-7