English

Simulation of a closed-loop dc-dc converter using a physics-informed neural network-based model

Systems and Control 2025-06-25 v1 Machine Learning Systems and Control

Abstract

The growing reliance on power electronics introduces new challenges requiring detailed time-domain analyses with fast and accurate circuit simulation tools. Currently, commercial time-domain simulation software are mainly relying on physics-based methods to simulate power electronics. Recent work showed that data-driven and physics-informed learning methods can increase simulation speed with limited compromise on accuracy, but many challenges remain before deployment in commercial tools can be possible. In this paper, we propose a physics-informed bidirectional long-short term memory neural network (BiLSTM-PINN) model to simulate the time-domain response of a closed-loop dc-dc boost converter for various operating points, parameters, and perturbations. A physics-informed fully-connected neural network (FCNN) and a BiLSTM are also trained to establish a comparison. The three methods are then compared using step-response tests to assess their performance and limitations in terms of accuracy. The results show that the BiLSTM-PINN and BiLSTM models outperform the FCNN model by more than 9 and 4.5 times, respectively, in terms of median RMSE. Their standard deviation values are more than 2.6 and 1.7 smaller than the FCNN's, making them also more consistent. Those results illustrate that the proposed BiLSTM-PINN is a potential alternative to other physics-based or data-driven methods for power electronics simulations.

Keywords

Cite

@article{arxiv.2506.19178,
  title  = {Simulation of a closed-loop dc-dc converter using a physics-informed neural network-based model},
  author = {Marc-Antoine Coulombe and Maxime Berger and Antoine Lesage-Landry},
  journal= {arXiv preprint arXiv:2506.19178},
  year   = {2025}
}

Comments

8 pages, 6 figures, Paper submitted to the International Conference on Power Systems Transients (IPST2025) in Guadalajara, Mexico, June 8-12, 2025

R2 v1 2026-07-01T03:30:29.611Z