Title :
Identification of Linear Time-Invariant Systems From Multiple Experiments
Author :
Markovsky, Ivan ; Pintelon, Rik
Author_Institution :
Electr. Eng. Dept., Vrije Univ. Brussel, Brussels, Belgium
Abstract :
A standard assumption for consistent estimation in the errors-in-variables setting is persistency of excitation of the noise-free input signal. We relax this assumption by considering data from multiple experiments. Consistency is obtained asymptotically as the number of experiments tends to infinity. The main theoretical and algorithmic difficulties are related to the growing number of to-be-estimated initial conditions. The method proposed in the paper is based on analytic elimination of the initial conditions and optimization over the remaining parameters. The resulting estimator is consistent; however, achieving asymptotically efficiency is an open problem.
Keywords :
linear systems; parameter estimation; analytic elimination; asymptotic efficiency; consistent estimator; error-in-variable estimation; linear time-invariant system identification; multiple experiments; noise-free input signal excitation; to-be-estimated initial conditions; Data models; Maximum likelihood estimation; Numerical models; Optimization; Time measurement; Trajectory; Consistency; maximum likelihood system identification; structured low-rank approximation; sum-of-damped exponentials modeling;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2015.2428218