Many applications in computational physics involve approximating problems with microstructure, characterized by multiple spatial scales in their data. However, these numerical solutions are often computationally expensive due to the need to capture fine details at small scales. As a result, simulating such phenomena becomes unaffordable for many-query applications, such as parametrized systems with multiple scale-dependent features. Traditional projection based reduced order models (ROMs) fail to resolve these issues, even for second-order elliptic PDEs commonly found in engineering applications. To address this, we propose an alternative nonintrusive strategy to build a ROM, that combines classical proper orthogonal decomposition (POD) wit...
We propose a non-intrusive deep learning-based reduced order model (DL-ROM) capable of capturing the...
This thesis presents two nonlinear model reduction methods for systems of equations. One model utili...
In upscaling methods, closures for nonlinear problems present a well-known challenge. While a number...
Many applications in computational physics involve approximating problems with microstructure, chara...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
A physics-informed machine learning framework is developed for the reduced-order modeling of paramet...
A reduced basis method based on a physics-informed machine learning framework is developed for effic...
We propose a non-intrusive deep learning-based reduced order model (DL-ROM) capable of capturing the...
We propose a non-intrusive deep learning-based reduced order model (DL-ROM) capable of capturing the...
We propose a non-intrusive deep learning-based reduced order model (DL-ROM) capable of capturing the...
We propose a non-intrusive deep learning-based reduced order model (DL-ROM) capable of capturing the...
This thesis presents two nonlinear model reduction methods for systems of equations. One model utili...
In upscaling methods, closures for nonlinear problems present a well-known challenge. While a number...
Many applications in computational physics involve approximating problems with microstructure, chara...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
A physics-informed machine learning framework is developed for the reduced-order modeling of paramet...
A reduced basis method based on a physics-informed machine learning framework is developed for effic...
We propose a non-intrusive deep learning-based reduced order model (DL-ROM) capable of capturing the...
We propose a non-intrusive deep learning-based reduced order model (DL-ROM) capable of capturing the...
We propose a non-intrusive deep learning-based reduced order model (DL-ROM) capable of capturing the...
We propose a non-intrusive deep learning-based reduced order model (DL-ROM) capable of capturing the...
This thesis presents two nonlinear model reduction methods for systems of equations. One model utili...
In upscaling methods, closures for nonlinear problems present a well-known challenge. While a number...