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Port-Hamiltonian Neural Networks with State Dependent Ports

Sølve Eidnes,Alexander J. Stasik,2 Authors,S. Riemer-Sørensen

2022 · DOI: 10.48550/arXiv.2206.02660
arXiv.org · 4 Citations

TLDR

This work stress-test the hybrid machine learning based on Hamiltonian formulations on both simple mass-spring systems and more complex and realistic systems with several internal and external forces, and demonstrates that port-Hamiltonian neural networks can be extended to larger dimensions with state-dependent ports.

Abstract

Hybrid machine learning based on Hamiltonian formulations has recently been successfully demonstrated for simple mechanical systems. In this work, we stress-test the method on both simple mass-spring systems and more complex and realistic systems with several internal and external forces, including a system with multiple connected tanks. We quantify performance under various conditions and show that imposing different assumptions greatly affect the performance during training presenting advantages and limitations of the method. We demonstrate that port-Hamiltonian neural networks can be extended to larger dimensions with state-dependent ports. We consider learning on systems with known and unknown external forces and show how it can be used to detect deviations in a system and still provide a valid model when the deviations are removed. Finally, we propose a symmetric high-order integrator for improved training on sparse and noisy data.