DocumentCode :
72515
Title :
Measure of Nonlinearity for Estimation
Author :
Yu Liu ; Li, X. Rong
Author_Institution :
Dept. of Electr. Eng., Univ. of New Orleans, New Orleans, LA, USA
Volume :
63
Issue :
9
fYear :
2015
fDate :
1-May-15
Firstpage :
2377
Lastpage :
2388
Abstract :
Nonlinearity, among other factors, is often the root cause of difficulties in nonlinear problems. It is important to quantify a problem´s degree of nonlinearity to decide a proper solution. For example, a full-blown nonlinear filter is needed in general if the estimation problem is highly nonlinear, but a quasi-linear filter (e.g., an extended Kalman filter) is sufficient for a weakly nonlinear case. This paper first surveys various measures of nonlinearity (MoNs) for different applications. For nonlinear estimation, we conclude that these MoNs are not suitable and a better measure is needed. In view of this, we propose a general MoN for estimation. It measures the mean-square closeness between a point and a subspace in a functional space. Properties and computation of this measure are studied. Numerical examples of static models for parameter estimation and dynamic models for process estimation are given to illustrate our measure.
Keywords :
mean square error methods; parameter estimation; MoN; dynamic models; extended Kalman filter; full-blown nonlinear filter; functional space; mean-square closeness; measures of nonlinearity; nonlinear estimation; nonlinear problems; parameter estimation; problem nonlinearity degree; process estimation; quasilinear filter; static models; Computational modeling; Estimation; Linear approximation; Linear systems; Noise measurement; Vectors; Measure of nonlinearity; distance; nonlinear estimation; nonlinear filtering;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2015.2405495
Filename :
7045599
Link To Document :
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