Learning Low-Dimensional Quadratic-Embeddings of High-Fidelity Nonlinear Dynamics using Deep Learning

11/25/2021
by   Pawan Goyal, et al.
0

Learning dynamical models from data plays a vital role in engineering design, optimization, and predictions. Building models describing dynamics of complex processes (e.g., weather dynamics, or reactive flows) using empirical knowledge or first principles are onerous or infeasible. Moreover, these models are high-dimensional but spatially correlated. It is, however, observed that the dynamics of high-fidelity models often evolve in low-dimensional manifolds. Furthermore, it is also known that for sufficiently smooth vector fields defining the nonlinear dynamics, a quadratic model can describe it accurately in an appropriate coordinate system, conferring to the McCormick relaxation idea in nonconvex optimization. Here, we aim at finding a low-dimensional embedding of high-fidelity dynamical data, ensuring a simple quadratic model to explain its dynamics. To that aim, this work leverages deep learning to identify low-dimensional quadratic embeddings for high-fidelity dynamical systems. Precisely, we identify the embedding of data using an autoencoder to have the desired property of the embedding. We also embed a Runge-Kutta method to avoid the time-derivative computations, which is often a challenge. We illustrate the ability of the approach by a couple of examples, arising in describing flow dynamics and the oscillatory tubular reactor model.

READ FULL TEXT

page 1

page 7

page 8

page 9

research
05/30/2022

Multi-fidelity robust controller design with gradient sampling

Robust controllers that stabilize dynamical systems even under disturban...
research
11/23/2017

Variational Encoding of Complex Dynamics

Often the analysis of time-dependent chemical and biophysical systems pr...
research
11/01/2022

Generalized Quadratic-Embeddings for Nonlinear Dynamics using Deep Learning

The engineering design process (e.g., control and forecasting) relies on...
research
11/24/2021

Deep learning-based reduced order models for the real-time simulation of the nonlinear dynamics of microstructures

We propose a non-intrusive Deep Learning-based Reduced Order Model (DL-R...
research
12/27/2017

Deep learning for universal linear embeddings of nonlinear dynamics

Identifying coordinate transformations that make strongly nonlinear dyna...
research
04/28/2023

Parametric model order reduction for a wildland fire model via the shifted POD based deep learning method

Parametric model order reduction techniques often struggle to accurately...
research
03/29/2022

Multifidelity Orbit Uncertainty Propagation using Taylor Polynomials

A new multifidelity method is developed for nonlinear orbit uncertainty ...

Please sign up or login with your details

Forgot password? Click here to reset