Physics-Informed Learning Using Hamiltonian Neural Networks with Output
Error Noise Models
- URL: http://arxiv.org/abs/2305.01338v1
- Date: Tue, 2 May 2023 11:34:53 GMT
- Title: Physics-Informed Learning Using Hamiltonian Neural Networks with Output
Error Noise Models
- Authors: Sarvin Moradi, Nick Jaensson, Roland T\'oth, Maarten Schoukens
- Abstract summary: Hamiltonian Neural Networks (HNNs) implement Hamiltonian theory in deep learning.
This paper introduces an Output Error Hamiltonian Neural Network (OE-HNN) modeling approach to address the modeling of physical systems.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: In order to make data-driven models of physical systems interpretable and
reliable, it is essential to include prior physical knowledge in the modeling
framework. Hamiltonian Neural Networks (HNNs) implement Hamiltonian theory in
deep learning and form a comprehensive framework for modeling autonomous
energy-conservative systems. Despite being suitable to estimate a wide range of
physical system behavior from data, classical HNNs are restricted to systems
without inputs and require noiseless state measurements and information on the
derivative of the state to be available. To address these challenges, this
paper introduces an Output Error Hamiltonian Neural Network (OE-HNN) modeling
approach to address the modeling of physical systems with inputs and noisy
state measurements. Furthermore, it does not require the state derivatives to
be known. Instead, the OE-HNN utilizes an ODE-solver embedded in the training
process, which enables the OE-HNN to learn the dynamics from noisy state
measurements. In addition, extending HNNs based on the generalized Hamiltonian
theory enables to include external inputs into the framework which are
important for engineering applications. We demonstrate via simulation examples
that the proposed OE-HNNs results in superior modeling performance compared to
classical HNNs.
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