In this paper we develop reduced-order models (ROMs) for dynamic, parameter-dependent, linear and nonlinear partial differential equations using proper orthogonal decomposition (POD). The main challenges are to accurately and efficiently approximate the POD bases for new parameter values and, in the case of nonlinear problems, to efficiently handle the nonlinear terms. We use a Bayesian nonlinear regression approach to learn the snapshots of the solutions and the nonlinearities for new parameter values. Computational efficiency is ensured by using manifold learning to perform the emulation in a low-dimensional space. The accuracy of the method is demonstrated on a linear and a nonlinear example, with comparisons to a global basis approac...
We develop a non-intrusive reduced basis (RB) method for parametrized steady-state partial different...
Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a...
This is the peer reviewed version of the following article: Diez, P. [et al.]. Nonlinear dimensional...
Deep learning-based reduced order models (DL-ROMs) have been recently proposed to overcome common li...
We provide an introduction to proper orthogonal decomposition (POD) model order reduction with focus...
This work formulates a new approach to reduced modeling of parameterized, time-dependent partial dif...
There is a great importance for faithful reduced order models (ROMs) that are valid over a range of ...
We propose a new technique for obtaining reduced order models for nonlinear dynamical systems. Speci...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
A novel parameterized non-intrusive reduced order model (P-NIROM) based on proper orthogonal decompo...
In classical adjoint based optimal control of unsteady dynamical systems, requirements of CPU ti...
For a nonlinear dynamical system that depends on parameters, the paper introduces a novel tensorial ...
Considerable progress in computing technology in the past decades did not alleviate difficulty inher...
A novel parameterized non-intrusive reduced order model (P -NIROM) based on proper orthogonal decomp...
Developing reduced-order models for nonlinear parabolic partial differential equation (PDE) systems ...
We develop a non-intrusive reduced basis (RB) method for parametrized steady-state partial different...
Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a...
This is the peer reviewed version of the following article: Diez, P. [et al.]. Nonlinear dimensional...
Deep learning-based reduced order models (DL-ROMs) have been recently proposed to overcome common li...
We provide an introduction to proper orthogonal decomposition (POD) model order reduction with focus...
This work formulates a new approach to reduced modeling of parameterized, time-dependent partial dif...
There is a great importance for faithful reduced order models (ROMs) that are valid over a range of ...
We propose a new technique for obtaining reduced order models for nonlinear dynamical systems. Speci...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
A novel parameterized non-intrusive reduced order model (P-NIROM) based on proper orthogonal decompo...
In classical adjoint based optimal control of unsteady dynamical systems, requirements of CPU ti...
For a nonlinear dynamical system that depends on parameters, the paper introduces a novel tensorial ...
Considerable progress in computing technology in the past decades did not alleviate difficulty inher...
A novel parameterized non-intrusive reduced order model (P -NIROM) based on proper orthogonal decomp...
Developing reduced-order models for nonlinear parabolic partial differential equation (PDE) systems ...
We develop a non-intrusive reduced basis (RB) method for parametrized steady-state partial different...
Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a...
This is the peer reviewed version of the following article: Diez, P. [et al.]. Nonlinear dimensional...