DeepAI AI Chat
Log In Sign Up

Hamiltonian Neural Networks with Automatic Symmetry Detection

01/19/2023
by   Eva Dierkes, et al.
github
Universität Bremen
0

Recently, Hamiltonian neural networks (HNN) have been introduced to incorporate prior physical knowledge when learning the dynamical equations of Hamiltonian systems. Hereby, the symplectic system structure is preserved despite the data-driven modeling approach. However, preserving symmetries requires additional attention. In this research, we enhance the HNN with a Lie algebra framework to detect and embed symmetries in the neural network. This approach allows to simultaneously learn the symmetry group action and the total energy of the system. As illustrating examples, a pendulum on a cart and a two-body problem from astrodynamics are considered.

READ FULL TEXT

page 7

page 8

page 9

09/03/2023

Separable Hamiltonian Neural Networks

The modelling of dynamical systems from discrete observations is a chall...
01/04/2023

Machine Fault Classification using Hamiltonian Neural Networks

A new approach is introduced to classify faults in rotating machinery ba...
09/30/2019

Equivariant Hamiltonian Flows

This paper introduces equivariant hamiltonian flows, a method for learni...
01/05/2023

Structure-preserving identification of port-Hamiltonian systems – a sensitivity-based approach

We present a gradient-based calibration algorithm to identify a port-Ham...
09/30/2022

Data-driven discovery of non-Newtonian astronomy via learning non-Euclidean Hamiltonian

Incorporating the Hamiltonian structure of physical dynamics into deep l...
04/29/2021

Improving Simulations with Symmetry Control Neural Networks

The dynamics of physical systems is often constrained to lower dimension...
12/01/2022

Compositional Learning of Dynamical System Models Using Port-Hamiltonian Neural Networks

Many dynamical systems – from robots interacting with their surroundings...

Code Repositories