A Luenberger observer for reaction-diffusion models with front position data
COLLIN, Annabelle
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
Modélisation Mathématique pour l'Oncologie [MONC]
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
Modélisation Mathématique pour l'Oncologie [MONC]
CHAPELLE, Dominique
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
MOIREAU, Philippe
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
COLLIN, Annabelle
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
Modélisation Mathématique pour l'Oncologie [MONC]
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
Modélisation Mathématique pour l'Oncologie [MONC]
CHAPELLE, Dominique
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
MOIREAU, Philippe
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
< Reduce
Mathematical and Mechanical Modeling with Data Interaction in Simulations for Medicine [M3DISIM]
Language
en
Article de revue
This item was published in
Journal of Computational Physics. 2015-08-13, vol. 300, p. 20
Elsevier
English Abstract
We propose a Luenberger observer for reaction-diffusion models with propagating front features, and for data associated with the location of the front over time. Such models are considered in various application fields, ...Read more >
We propose a Luenberger observer for reaction-diffusion models with propagating front features, and for data associated with the location of the front over time. Such models are considered in various application fields, such as electrophysiology, wild-land fire propagation and tumor growth modeling. Drawing our inspiration from image processing methods, we start by proposing an observer for the eikonal-curvature equation that can be derived from the reaction-diffusion model by an asymptotic expansion. We then carry over this observer to the underlying reaction-diffusion equation by an "inverse asymptotic analysis", and we show that the associated correction in the dynamics has a stabilizing effect for the linearized estimation error. We also discuss the extension to joint state-parameter estimation by using the earlier-proposed ROUKF strategy. We then illustrate and assess our proposed observer method with test problems pertaining to electrophysiology modeling, including with a realistic model of cardiac atria. Our numerical trials show that state estimation is directly very effective with the proposed Luenberger observer, while specific strategies are needed to accurately perform parameter estimation – as is usual with Kalman filtering used in a nonlinear setting – and we demonstrate two such successful strategies.Read less <
English Keywords
Data assimilation
Reaction-diffusion model
Front propagation
Eikonal equation
Cardiac electrophysiology
Image processing
Origin
Hal imported