Learning Hamiltonians of constrained mechanical systems

01/31/2022
by   Elena Celledoni, et al.
3

Recently, there has been an increasing interest in modelling and computation of physical systems with neural networks. Hamiltonian systems are an elegant and compact formalism in classical mechanics, where the dynamics is fully determined by one scalar function, the Hamiltonian. The solution trajectories are often constrained to evolve on a submanifold of a linear vector space. In this work, we propose new approaches for the accurate approximation of the Hamiltonian function of constrained mechanical systems given sample data information of their solutions. We focus on the importance of the preservation of the constraints in the learning strategy by using both explicit Lie group integrators and other classical schemes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/11/2019

Learning Symmetries of Classical Integrable Systems

The solution of problems in physics is often facilitated by a change of ...
research
02/22/2021

Universal Approximation Properties of Neural Networks for Energy-Based Physical Systems

In Hamiltonian mechanics and the Landau theory, many physical phenomena ...
research
09/30/2019

Hamiltonian Generative Networks

The Hamiltonian formalism plays a central role in classical and quantum ...
research
03/03/2023

Learning Energy Conserving Dynamics Efficiently with Hamiltonian Gaussian Processes

Hamiltonian mechanics is one of the cornerstones of natural sciences. Re...
research
06/22/2021

Symplectic Learning for Hamiltonian Neural Networks

Machine learning methods are widely used in the natural sciences to mode...
research
02/23/2021

Identifying Physical Law of Hamiltonian Systems via Meta-Learning

Hamiltonian mechanics is an effective tool to represent many physical pr...
research
04/29/2021

Improving Simulations with Symmetry Control Neural Networks

The dynamics of physical systems is often constrained to lower dimension...

Please sign up or login with your details

Forgot password? Click here to reset