The concept of Hybrid Twin (HT) has recently received a growing interest thanks to the availability of powerful machine learning techniques. This twin concept combines physics-based models within a model-order reduction framework-to obtain real-time feedback rates-and data science. Thus, the main idea of the HT is to develop on-the-fly data-driven models to correct possible deviations between measurements and physics-based model predictions. This paper is focused on the computation of stable, fast and accurate corrections in the Hybrid Twin framework. Furthermore, regarding the delicate and important problem of stability, a new approach is proposed, introducing several sub-variants and guaranteeing a low computational cost as well as the achievement of a stable time-integration.
@article{arxiv.2106.03464,
title = {Learning stable reduced-order models for hybrid twins},
author = {Abel Sancarlos and Morgan Cameron and Jean-Marc Le Peuvedic and Juliette Groulier and Jean-Louis Duval and Elias Cueto and Francisco Chinesta},
journal= {arXiv preprint arXiv:2106.03464},
year = {2023}
}