Orthogonal Projection-Based Regularization for Efficient Model Augmentation

Abstract

Deep-learning-based nonlinear system identification has shown the ability to produce reliable and highly accurate models in practice. However, these black-box models lack physical interpretability, and a considerable part of the learning effort is often spent on capturing already expected/known behavior of the system, that can be accurately described by first-principles laws of physics. A potential solution is to directly integrate such prior physical knowledge into the model structure, combining the strengths of physics-based modeling and deep-learning-based identification. The most common approach is to use an additive model augmentation structure, where the physics-based and the machine-learning (ML) components are connected in parallel, i.e., additively. However, such models are overparametrized, training them is challenging, potentially causing the physics-based part to lose interpretability. To overcome this challenge, this paper proposes an orthogonal projection-based regularization technique to enhance parameter learning and even model accuracy in learning-based augmentation of nonlinear baseline models.

Cite

Text

Györök et al. "Orthogonal Projection-Based Regularization for Efficient Model Augmentation." Proceedings of the 7th Annual Learning for Dynamics \& Control Conference, 2025.

Markdown

[Györök et al. "Orthogonal Projection-Based Regularization for Efficient Model Augmentation." Proceedings of the 7th Annual Learning for Dynamics \& Control Conference, 2025.](https://mlanthology.org/l4dc/2025/gyorok2025l4dc-orthogonal/)

BibTeX

@inproceedings{gyorok2025l4dc-orthogonal,
  title     = {{Orthogonal Projection-Based Regularization for Efficient Model Augmentation}},
  author    = {Györök, Bendeguz Mate and Hoekstra, Jan H. and Kon, Johan and Peni, Tamas and Schoukens, Maarten and Toth, Roland},
  booktitle = {Proceedings of the 7th Annual Learning for Dynamics \& Control Conference},
  year      = {2025},
  pages     = {166-178},
  volume    = {283},
  url       = {https://mlanthology.org/l4dc/2025/gyorok2025l4dc-orthogonal/}
}