Multiscale elliptic equations with scale separation are often approximated by the corresponding homogenized equations with slowly varying homogenized coefficients (the G-limit). The traditional homogenization techniques typically rely on the periodicity of the multiscale coefficients, thus finding the G-limits often requires sophisticated techniques in more general settings even when multiscale coefficient is known, if possible. Alternatively, we propose a simple approach to estimate the G-limits from (noisy-free or noisy) multiscale solution data, either from the existing forward multiscale solvers or sensor measurements. By casting this problem into an inverse problem, our approach adopts physics-informed neural networks (PINNs) algorithm...
Solving high-dimensional partial differential equations is a recurrent challenge in economics, scien...
The present work addresses a solution algorithm for homogenization problems based on an artificial n...
In this dissertation, we present multiscale analytical solutions, in the weak sense, to the generali...
The data-driven discovery of partial differential equations (PDEs) consistent with spatiotemporal da...
The data-driven discovery of partial differential equations (PDEs) consistent with spatiotemporal da...
We consider standard physics informed neural network solution methods for elliptic partial different...
A new numerical method based on numerical homogenization and model order reduction is introduced for...
The application of multiscale methods that are based on computational homogenization, such as the we...
In this thesis, we investigate the combination of Multigrid methods and Neural Networks, starting fr...
A new strategy based on numerical homogenization and Bayesian techniques for solvingmultiscale inver...
<p>The mathematical description of natural and technical processes often leads to parametrized probl...
Many applications in computational physics involve approximating problems with microstructure, chara...
We consider the Bayesian inverse homogenization problem of recovering the locally periodic two scale...
Abstract. In this paper we construct a numerical homogenization technique for nonlinear elliptic equ...
International audienceWe introduce a new method for obtaining quantitative results in stochastic hom...
Solving high-dimensional partial differential equations is a recurrent challenge in economics, scien...
The present work addresses a solution algorithm for homogenization problems based on an artificial n...
In this dissertation, we present multiscale analytical solutions, in the weak sense, to the generali...
The data-driven discovery of partial differential equations (PDEs) consistent with spatiotemporal da...
The data-driven discovery of partial differential equations (PDEs) consistent with spatiotemporal da...
We consider standard physics informed neural network solution methods for elliptic partial different...
A new numerical method based on numerical homogenization and model order reduction is introduced for...
The application of multiscale methods that are based on computational homogenization, such as the we...
In this thesis, we investigate the combination of Multigrid methods and Neural Networks, starting fr...
A new strategy based on numerical homogenization and Bayesian techniques for solvingmultiscale inver...
<p>The mathematical description of natural and technical processes often leads to parametrized probl...
Many applications in computational physics involve approximating problems with microstructure, chara...
We consider the Bayesian inverse homogenization problem of recovering the locally periodic two scale...
Abstract. In this paper we construct a numerical homogenization technique for nonlinear elliptic equ...
International audienceWe introduce a new method for obtaining quantitative results in stochastic hom...
Solving high-dimensional partial differential equations is a recurrent challenge in economics, scien...
The present work addresses a solution algorithm for homogenization problems based on an artificial n...
In this dissertation, we present multiscale analytical solutions, in the weak sense, to the generali...