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Frequency domain sample maximum likelihood estimation for spatially dependent parameter estimation in PDEs

Author
Abstract

The identification of the spatially dependent parameters in Partial Differential Equations (PDEs) is important in both physics and control problems. A methodology is presented to identify spatially dependent parameters from spatio-temporal measurements. Local non-rational transfer functions are derived based on three local measurements allowing for a local estimate of the parameters. A sample Maximum Likelihood Estimator (SMLE) in the frequency domain is used, because it takes noise properties into account and allows for high accuracy consistent parameter estimation. Confidence bounds on the parameters are estimated based on the noise properties of the measurements. This method is successfully applied to the simulations of a finite difference model of a parabolic PDE with piecewise constant parameters.

Year of Publication
2014
Journal
Automatica
Volume
50
Issue
8
Number of Pages
2113 - 2119
DOI
10.1016/j.automatica.2014.05.027
PId
a568d0fbf8f77705b839f4c1369a76f2
Alternate Journal
Automatica
Label
OA
Attachment
Journal Article
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