Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a latent space. This reduced order representation offers a modular data-driven modeling approach for nonlinear dynamical systems when integrated with a time series predictive model. In this Letter, we put forth a nonlinear proper orthogonal decomposition (POD) framework, which is an end-to-end Galerkin-free model combining autoencoders with long short-term memory networks for dynamics. By eliminating the projection error due to the truncation of Galerkin models, a key enabler of the proposed nonintrusive approach is the kinematic construction of a nonlinear mapping between the full-rank expansion of the POD coefficients and the latent space wh...
A new method is presented to generate reduced order models (ROMs) in Fluid Dynamics problems. The me...
This work investigates nonlinear dimensionality reduction as a means of improving the accuracy and s...
Deep learning-based reduced order models (DL-ROMs) have been recently proposed to overcome common li...
Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a...
Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a...
Generating a digital twin of any complex system requires modeling and computational approaches that ...
Recent developments in diagnostic and computing technologies offer to leverage numerous forms of non...
We present methodologies for reduced order modeling of convection dominated flows. Accordingly, thre...
We design a physics-aware auto-encoder to specifically reduce the dimensionality of solutions arisin...
This article presents two new non-intrusive reduced order models based upon proper orthogonal decomp...
A reduced order model of a turbulent channel flow is composed from a direct numerical simulation dat...
We present a Reduced Order Model (ROM) which exploits recent developments in Physics Informed Neural...
In this article, an improved reduced order modelling approach, based on the proper orthogonal decomp...
Natural convection in porous media is a highly nonlinear multiphysical problem relevant to many engi...
This article presents two new non-intrusive reduced order models based upon proper orthogonal decomp...
A new method is presented to generate reduced order models (ROMs) in Fluid Dynamics problems. The me...
This work investigates nonlinear dimensionality reduction as a means of improving the accuracy and s...
Deep learning-based reduced order models (DL-ROMs) have been recently proposed to overcome common li...
Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a...
Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a...
Generating a digital twin of any complex system requires modeling and computational approaches that ...
Recent developments in diagnostic and computing technologies offer to leverage numerous forms of non...
We present methodologies for reduced order modeling of convection dominated flows. Accordingly, thre...
We design a physics-aware auto-encoder to specifically reduce the dimensionality of solutions arisin...
This article presents two new non-intrusive reduced order models based upon proper orthogonal decomp...
A reduced order model of a turbulent channel flow is composed from a direct numerical simulation dat...
We present a Reduced Order Model (ROM) which exploits recent developments in Physics Informed Neural...
In this article, an improved reduced order modelling approach, based on the proper orthogonal decomp...
Natural convection in porous media is a highly nonlinear multiphysical problem relevant to many engi...
This article presents two new non-intrusive reduced order models based upon proper orthogonal decomp...
A new method is presented to generate reduced order models (ROMs) in Fluid Dynamics problems. The me...
This work investigates nonlinear dimensionality reduction as a means of improving the accuracy and s...
Deep learning-based reduced order models (DL-ROMs) have been recently proposed to overcome common li...