Latent Dynamics Networks (LDNets): learning the intrinsic dynamics of spatio-temporal processes

04/28/2023
by   Francesco Regazzoni, et al.
0

Predicting the evolution of systems that exhibit spatio-temporal dynamics in response to external stimuli is a key enabling technology fostering scientific innovation. Traditional equations-based approaches leverage first principles to yield predictions through the numerical approximation of high-dimensional systems of differential equations, thus calling for large-scale parallel computing platforms and requiring large computational costs. Data-driven approaches, instead, enable the description of systems evolution in low-dimensional latent spaces, by leveraging dimensionality reduction and deep learning algorithms. We propose a novel architecture, named Latent Dynamics Network (LDNet), which is able to discover low-dimensional intrinsic dynamics of possibly non-Markovian dynamical systems, thus predicting the time evolution of space-dependent fields in response to external inputs. Unlike popular approaches, in which the latent representation of the solution manifold is learned by means of auto-encoders that map a high-dimensional discretization of the system state into itself, LDNets automatically discover a low-dimensional manifold while learning the latent dynamics, without ever operating in the high-dimensional space. Furthermore, LDNets are meshless algorithms that do not reconstruct the output on a predetermined grid of points, but rather at any point of the domain, thus enabling weight-sharing across query-points. These features make LDNets lightweight and easy-to-train, with excellent accuracy and generalization properties, even in time-extrapolation regimes. We validate our method on several test cases and we show that, for a challenging highly-nonlinear problem, LDNets outperform state-of-the-art methods in terms of accuracy (normalized error 5 times smaller), by employing a dramatically smaller number of trainable parameters (more than 10 times fewer).

READ FULL TEXT

page 11

page 12

page 14

page 18

page 19

page 21

page 23

research
06/28/2023

Emulating the dynamics of complex systems using autoregressive models on manifolds (mNARX)

In this study, we propose a novel surrogate modelling approach to effici...
research
01/13/2022

Data-Driven Modeling and Prediction of Non-Linearizable Dynamics via Spectral Submanifolds

We develop a methodology to construct low-dimensional predictive models ...
research
08/12/2021

Charts and atlases for nonlinear data-driven models of dynamics on manifolds

We introduce a method for learning minimal-dimensional dynamical models ...
research
10/29/2022

Data-driven low-dimensional dynamic model of Kolmogorov flow

Reduced order models (ROMs) that capture flow dynamics are of interest f...
research
04/07/2022

Neural Implicit Flow: a mesh-agnostic dimensionality reduction paradigm of spatio-temporal data

High-dimensional spatio-temporal dynamics can often be encoded in a low-...
research
10/18/2021

Neural-network learning of SPOD latent dynamics

We aim to reconstruct the latent space dynamics of high dimensional syst...
research
06/10/2021

Simulation of viscoelastic Cosserat rods based on the geometrically exact dynamics of special Euclidean strands

We propose a method for the description and simulation of the nonlinear ...

Please sign up or login with your details

Forgot password? Click here to reset