LaSDI: Parametric Latent Space Dynamics Identification

03/04/2022
by   William Fries, et al.
0

Enabling fast and accurate physical simulations with data has become an important area of computational physics to aid in inverse problems, design-optimization, uncertainty quantification, and other various decision-making applications. This paper presents a data-driven framework for parametric latent space dynamics identification procedure that enables fast and accurate simulations. The parametric model is achieved by building a set of local latent space model and designing an interaction among them. An individual local latent space dynamics model achieves accurate solution in a trust region. By letting the set of trust region to cover the whole parameter space, our model shows an increase in accuracy with an increase in training data. We introduce two different types of interaction mechanisms, i.e., point-wise and region-based approach. Both linear and nonlinear data compression techniques are used. We illustrate the framework of Latent Space Dynamics Identification (LaSDI) enable a fast and accurate solution process on various partial differential equations, i.e., Burgers' equations, radial advection problem, and nonlinear heat conduction problem, achieving O(100)x speed-up and O(1)% relative error with respect to the corresponding full order models.

READ FULL TEXT

page 3

page 17

page 19

page 20

page 21

page 22

page 23

page 26

research
04/26/2022

gLaSDI: Parametric Physics-informed Greedy Latent Space Dynamics Identification

A parametric adaptive physics-informed greedy Latent Space Dynamics Iden...
research
08/10/2023

GPLaSDI: Gaussian Process-based Interpretable Latent Space Dynamics Identification through Deep Autoencoder

Numerically solving partial differential equations (PDEs) can be challen...
research
11/24/2022

Certified data-driven physics-informed greedy auto-encoder simulator

A parametric adaptive greedy Latent Space Dynamics Identification (gLaSD...
research
02/09/2022

Dimensionally Consistent Learning with Buckingham Pi

In the absence of governing equations, dimensional analysis is a robust ...
research
08/29/2019

Computational approaches for parametric imaging of dynamic PET data

Parametric imaging of nuclear medicine data exploits dynamic functional ...
research
09/30/2022

Φ-DVAE: Learning Physically Interpretable Representations with Nonlinear Filtering

Incorporating unstructured data into physical models is a challenging pr...
research
04/01/2021

Latent Space Data Assimilation by using Deep Learning

Performing Data Assimilation (DA) at a low cost is of prime concern in E...

Please sign up or login with your details

Forgot password? Click here to reset