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.Comment: 21 pages, Con...
The goal of this paper is to determine the laws of observed trajectories assuming that there is a me...
Hamiltonian simulation is a promising application for quantum computers to achieve a quantum advanta...
Technical ReportThe process of model learning can be considered in two stages: model selection and p...
Recently, there has been an increasing interest in modelling and computation of physical systems wit...
Hybrid machine learning based on Hamiltonian formulations has recently been successfully demonstrate...
In this article we study the possibilities of recovering the structure of port-Hamiltonian systems s...
Machine learning methods are widely used in the natural sciences to model and predict physical syste...
The reduction of Hamiltonian systems aims to build smaller reduced models, valid over a certain rang...
Recent advancements in deep learning for physics have focused on discovering shared representations ...
The process of machine learning can be considered in two stages: model selection and parameter estim...
Network modelling of unconstrained energy conserving physical systems leads to an intrinsic generali...
We develop data-driven methods incorporating geometric and topological information to learn parsimon...
This paper empirically studies commonly observed training difficulties of Physics-Informed Neural Ne...
It has been successfully demonstrated that synchronisation of physical prior, like conservation laws...
Engineering desired Hamiltonian in quantum many-body systems is essential for applications such as q...
The goal of this paper is to determine the laws of observed trajectories assuming that there is a me...
Hamiltonian simulation is a promising application for quantum computers to achieve a quantum advanta...
Technical ReportThe process of model learning can be considered in two stages: model selection and p...
Recently, there has been an increasing interest in modelling and computation of physical systems wit...
Hybrid machine learning based on Hamiltonian formulations has recently been successfully demonstrate...
In this article we study the possibilities of recovering the structure of port-Hamiltonian systems s...
Machine learning methods are widely used in the natural sciences to model and predict physical syste...
The reduction of Hamiltonian systems aims to build smaller reduced models, valid over a certain rang...
Recent advancements in deep learning for physics have focused on discovering shared representations ...
The process of machine learning can be considered in two stages: model selection and parameter estim...
Network modelling of unconstrained energy conserving physical systems leads to an intrinsic generali...
We develop data-driven methods incorporating geometric and topological information to learn parsimon...
This paper empirically studies commonly observed training difficulties of Physics-Informed Neural Ne...
It has been successfully demonstrated that synchronisation of physical prior, like conservation laws...
Engineering desired Hamiltonian in quantum many-body systems is essential for applications such as q...
The goal of this paper is to determine the laws of observed trajectories assuming that there is a me...
Hamiltonian simulation is a promising application for quantum computers to achieve a quantum advanta...
Technical ReportThe process of model learning can be considered in two stages: model selection and p...