Least-squares finite impulse response fixed-lag smoother and filter in linear discrete-time stochastic systems

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摘要

This paper proposes the least-squares (LS) finite impulse response (FIR) fixed-lag smoother and filter in linear discrete-time wide-sense stationary stochastic systems. The FIR fixed-lag smoothing estimate is given as a linear convolution sum of the impulse response function and the observed values. It is assumed that the signal is observed with additional white noise, which is uncorrelated with the signal process. By solving the simultaneous linear equations transformed from the Wiener–Hopf equation, the optimal impulse response function is obtained. The necessary information of the LS FIR fixed-lag smoothing algorithm is the auto-covariance function of the signal process and the variance of the observation noise process. In particular, this paper proposes the Levinson–Durbin algorithm, which needs less amount of arithmetic operations than the Gauss–Jordan elimination method in the inverse of the Toeplitz matrix, for the optimal impulse response function. From the numerical simulation example, the proposed LS FIR fixed-lag smoother and filter are superior in estimation accuracy to the RLS Wiener FIR estimators.

论文关键词:LS FIR fixed-lag smoother,RLS Wiener FIR fixed-lag smoother,Covariance information,Wiener–Hopf equation,Autoregressive model,Levinson–Durbin algorithm

论文评审过程:Received 15 November 2017, Revised 26 March 2018, Accepted 30 March 2018, Available online 18 May 2018, Version of Record 18 May 2018.

论文官网地址:https://doi.org/10.1016/j.amc.2018.03.121