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Journal of System Simulation

Abstract

Abstract: The modeling problem of Wiener errors-in-variables systems was investigated where measurements of the system input and output were corrupted by the additive white Gauss noise. After the provided reformulation of the errors-in-variables system, a two-stage algorithm was developed to estimate the unknown parameters with the first stage employing the total least-squares algorithm, followed by a singular value decomposition in the second stage. The asymptotic maximum likelihood estimation property under the PE condition was strictly proven that with data length tends to infinite, and the proposed total least-squares solution provided an asymptotic maximum likelihood estimate for the nonlinear system parameter vector. The simulation result shows the effectiveness of the proposed algorithm in solving the nonlinear system modeling problem.

First Page

1670

Revised Date

2015-06-29

Last Page

1679

CLC

TP13

Recommended Citation

Wang Ziyun, Ji Zhicheng. Total Least-Squares Algorithm for Wiener Errors-in-Variables System Modeling[J]. Journal of System Simulation, 2015, 27(8): 1670-1679.

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