Physics-enhanced Neural Networks in the Small Data Regime

11/19/2021
by   Jonas Eichelsdörfer, et al.
0

Identifying the dynamics of physical systems requires a machine learning model that can assimilate observational data, but also incorporate the laws of physics. Neural Networks based on physical principles such as the Hamiltonian or Lagrangian NNs have recently shown promising results in generating extrapolative predictions and accurately representing the system's dynamics. We show that by additionally considering the actual energy level as a regularization term during training and thus using physical information as inductive bias, the results can be further improved. Especially in the case where only small amounts of data are available, these improvements can significantly enhance the predictive capability. We apply the proposed regularization term to a Hamiltonian Neural Network (HNN) and Constrained Hamiltonian Neural Network (CHHN) for a single and double pendulum, generate predictions under unseen initial conditions and report significant gains in predictive accuracy.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/03/2022

Port-metriplectic neural networks: thermodynamics-informed machine learning of complex physical systems

We develop inductive biases for the machine learning of complex physical...
research
02/25/2021

Adaptable Hamiltonian neural networks

The rapid growth of research in exploiting machine learning to predict c...
research
08/22/2022

Constants of motion network

The beauty of physics is that there is usually a conserved quantity in a...
research
06/24/2022

ModLaNets: Learning Generalisable Dynamics via Modularity and Physical Inductive Bias

Deep learning models are able to approximate one specific dynamical syst...
research
05/09/2023

Pseudo-Hamiltonian system identification

Identifying the underlying dynamics of physical systems can be challengi...
research
01/28/2022

On feedforward control using physics-guided neural networks: Training cost regularization and optimized initialization

Performance of model-based feedforward controllers is typically limited ...
research
05/24/2020

Physics-based polynomial neural networks for one-short learning of dynamical systems from one or a few samples

This paper discusses an approach for incorporating prior physical knowle...

Please sign up or login with your details

Forgot password? Click here to reset