Neural DAEs: Constrained neural networks

11/25/2022
by   Tue Boesen, et al.
0

In this article we investigate the effect of explicitly adding auxiliary trajectory information to neural networks for dynamical systems. We draw inspiration from the field of differential-algebraic equations and differential equations on manifolds and implement similar methods in residual neural networks. We discuss constraints through stabilization as well as projection methods, and show when to use which method based on experiments involving simulations of multi-body pendulums and molecular dynamics scenarios. Several of our methods are easy to implement in existing code and have limited impact on training performance while giving significant boosts in terms of inference.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/19/2019

Polynomial Neural Networks and Taylor maps for Dynamical Systems Simulation and Learning

The connection of Taylor maps and polynomial neural networks (PNN) to so...
research
07/27/2018

On the overfly algorithm in deep learning of neural networks

In this paper we investigate the supervised backpropagation training of ...
research
06/16/2023

Stabilized Neural Differential Equations for Learning Constrained Dynamics

Many successful methods to learn dynamical systems from data have recent...
research
04/22/2020

Constrained Neural Ordinary Differential Equations with Stability Guarantees

Differential equations are frequently used in engineering domains, such ...
research
02/06/2020

Uncovering differential equations from data with hidden variables

Finding a set of differential equations to model dynamical systems is a ...
research
02/09/2023

Gentlest ascent dynamics on manifolds defined by adaptively sampled point-clouds

Finding saddle points of dynamical systems is an important problem in pr...
research
12/06/2021

A hybrid projection algorithm for stochastic differential equations on manifolds

Stochastic differential equations projected onto manifolds occur widely ...

Please sign up or login with your details

Forgot password? Click here to reset