DIFFER
DIFFER Publication

Estimating Space-Dependent Coefficients for 1D Transport Using Gaussian Processes as State Estimator in the Frequency Domain

Author
Abstract

This letter presents a method to estimate the space-dependent transport coefficients (diffusion, convection, reaction, and source/sink) for a generic scalar transport model, e.g., heat or mass. As the problem is solved in the frequency domain, the complex valued state as a function of the spatial variable is estimated using Gaussian process regression. The resulting probability density function of the state, together with a semi-discretization of the model, and a linear parameterization of the coefficients are used to determine the maximum likelihood solution for these space-dependent coefficients. The proposed method is illustrated by simulations.

Year of Publication
2023
Journal
IEEE Control Systems Letters
Volume
7
Number of Pages
247-252
Date Published
06/2022
DOI
10.1109/LCSYS.2022.3186626
PId
50de0e394684a6246fc7d9fa81290c85
Alternate Journal
IEEE Control Syst. Lett.
Label
OA
Attachment
Journal Article
Download citation